1. Introduction
Social media, as a tool to facilitate communication mechanisms, closely connects individuals through content sharing [1]. In today’s digital society, social media and online platforms play a significant role in influencing consumers [2], with their rise gradually changing consumer shopping decision-making patterns. Consumers increasingly use social media, especially to gather information for decision-making. In this context, influencers have gradually entered the public eye. Ki and Kim (2019) define influencers as “individuals who have established credibility with a large social media audience due to their knowledge and expertise on a specific topic, thereby significantly influencing their followers and peer consumers’ decisions” [3]. Hudders et al. (2021) further explain “Influencers are social media users who, by creating and disseminating online content across various social media platforms, have gained fame online and accumulated a large following. Generally, digital influencers distinguish themselves from ordinary social media users through their extensive reach and influence” [4]. Consumers often follow the advice of influencers and trust their recommendations on products. Influencers are increasingly seen as powerful tools for communication with consumers [5,6]. Compared to celebrities, influencers have established closer connections with their followers and developed more trustworthy and credible relationships [7]. This transformative interaction model has made consumers more reliant on influencers’ opinions, thus having a more direct and profound impact on shopping and lifestyle decisions.
Consequently, influencer marketing has become increasingly popular as a key component of companies’ digital marketing strategies, as evidenced by the global market growth of influencer marketing [8]. Influencer marketing platforms, known for their user-generated content recommendation mechanisms [9,10], have gained considerable attention. When influencers share personal experiences, product evaluations, and usage scenarios, they directly or indirectly shape consumers’ perceptions of various goods, attracting them to make purchases. Essentially, influencers receive compensation for posting content related to products, services, or brands. Owing to their large follower base, influencers can significantly influence potential consumers’ purchasing decisions by disseminating their views on company or brand products and services. Consumers are very likely to follow the purchasing advice of influencers they admire [11].
Health and wellness constitute a significant domain within influencer marketing [12], and following the COVID-19 pandemic there has been an increasing focus on healthy living [13] and sustainable eating practices. This shift has led to an exploration of light meals. Light meals represent a dining form characterized by simplicity, moderation, and a balanced diet, primarily consisting of low-fat, low-sugar, low-salt, and high-fiber foods, which are more natural and sustainable for the environment [14]. The concept of light meals originated in Europe, with the aim of allowing consumers to intake nutrients without burden, promoting healthier diets, and advocating for a positive and proactive attitude and lifestyle. In meeting individual health needs, the concept of light meals is also closely linked with the philosophy of sustainable food.
In recent years, an increasing number of scholars have been studying the influence of influencer marketing platforms on consumer intentions and behaviors. Research shows that factors such as influencer credibility, consistency between the influencer and promoted products, media richness, and parasocial interaction significantly affect consumer behavior [15,16]. Soltani et al. (2021) pointed out that influencer marketing platforms influence food tourists’ behavioral intentions by affecting people’s attitudes towards local foods and food destination images, ultimately shaping food consumption intentions and behaviors [17]. Zheng et al. (2024) indicated that influencer marketing platforms influence food consumption intentions and behaviors through influencers’ intimate self-disclosures, perceived altruistic motives, follower attitudes, information involvement, and product knowledge [18]. However, the existing literature has not yet explored the factors influencing light food consumption intentions and behaviors on influencer marketing platforms. Therefore, this study surveyed consumers in Suzhou to fill this gap.
In contemporary society, the increasing awareness of health and sustainable development has made light meals one of the most sought-after dietary trends. According to the “Light Food Consumption Big Data Report” by Meituan Delivery in China, the size of the domestic light food market exceeded RMB 100 billion in 2022, accounting for about 10% of the total catering revenue within five years. Against the backdrop of the rising popularity of light meals, influencer marketing platforms have emerged as a significant sales channel. Hence, investigating whether influencer marketing platforms can drive consumer purchasing intentions towards light meals is crucial. It not only offers recommendations for current brand and market strategies but also promotes the joint development of healthy eating and sustainable lifestyles in the digital era. At the same time, sustainable development is closely related to regional development, with the key being to balance economic, social, and environmental needs to ensure the quality of life and well-being now and in the future [19]. Knowledge, natural capital, and culture are particularly important in economic development, especially innovation and nature. Therefore, the transition between different stages of economic development is influenced by various factors and is crucial for sustainable economic development [20]. This study takes Suzhou as an example, exploring the connection between influencer marketing platforms and the consumption intentions and behaviors towards light food. Based on this, the main objective of this study is to explore the impact of influencer marketing platforms on consumers’ purchasing intentions and behaviors towards light meals, with the aim of fostering the collective advancement of healthy eating and sustainable lifestyles in the digital age and providing effective recommendations for market strategies.
The remaining parts of this paper are organized as follows: First, we describe the theoretical background of the study and propose the research hypotheses. Second, we present our research methods and model. Third, we conduct an empirical analysis of the data. Finally, we discuss the research findings and the significance of our study.
2. Theoretical Background and Research Hypotheses
2.1. Light Meals
The Food and Agriculture Organization of the United Nations states “Sustainable diets are diets with low environmental impacts which contribute to food and nutrition security and to healthy life for present and future generations. Sustainable diets are protective and respectful of biodiversity and ecosystems, culturally acceptable, accessible, economically fair and affordable; nutritionally adequate, safe and healthy; while optimizing natural and human resources” [21].
The concept of light meals originated in 17th century Europe, initially referring to sandwiches and salads served with coffee at coffee-shop tea times. This concept has evolved to today’s definition of light meals as fresh, appropriately portioned, low-calorie, high-fiber, and nutritionally rich foods. This evolution reflects a shift in consumer pursuit from flavor, aroma, and appearance towards a focus on low-calorie, sustainable, healthy eating principles. The core concept of light meals emphasizes low-fat, low-sugar, low-salt foods that are high in fiber, aiming to provide nutrition while easing bodily burdens, making the diet healthier. Light meals, in meeting individual health needs, are closely linked with the concept of sustainable food, emphasizing respect for the environment and sustainable development. By advocating for healthy eating and active lifestyles, light meals not only meet the physical needs of individuals but also promote social awareness and recognition of sustainable food practices.
Light meals emphasize low calories, low fat, and high fiber, focusing on maintaining a healthy diet and moderate control of calorie intake. This concept aligns with the core values of health and environment found in the principles of sustainable food [22]. Compared to other kind of meals, light meals are mostly composed of vegetables, fruits, whole grains, etc., reducing the consumption of high-carbon-footprint meats and processed foods [23,24]. The production of vegetables and fruits often requires less fertilizer and pesticides, reducing pollution to water sources and soil. The production of whole grains also helps maintain soil health and biodiversity, reducing the risks of land degradation and ecosystem damage. Research by Ernstoff A and others focusing on school meals shows that a low-carbon menu can reduce greenhouse gas emissions while maintaining sufficient nutrition, demonstrating the feasibility of choosing sustainable food on a large scale [25]. Moreover, the production of plant-based foods usually requires less land and water resources, reducing pressure on natural resources, helping to preserve the integrity of ecosystems and biodiversity [26]. This resource-efficient production approach is one of the significant contributions of light meals to sustainability and environmental protection. Compared to animal husbandry and meat production, plant-based food production can more efficiently utilize land and water, reducing the need for land reclamation, deforestation, and excessive water resource use. This not only helps slow down ecosystem degradation but also protects and restores biodiversity, maintaining ecological balance. By choosing light meals, we are actually practicing an environmentally friendly lifestyle in our daily diet, making a positive contribution to creating a more sustainable future. Socially, supporting the light meals industry can improve working conditions for farmers and other practitioners, promote the development of community economies, and enhance community welfare. Therefore, choosing light meals not only benefits environmental protection but also helps achieve the goals of social sustainable development.
Moreover, the concept of light meals stresses dietary balance and choices beneficial to the body, encouraging consumers to consider their health and prefer foods that are both healthy and eco-friendly [27]. In terms of ingredient selection, light meals prioritize natural, fresh, and seasonal ingredients to maintain food quality and nutritional value. Compared to general food choices, the ingredients for light meals reduce dependence on chemical agricultural products, making them more natural and helping to decrease negative environmental impacts [14], thereby achieving more sustainable food production. This aligns with the sustainable food movement’s pursuit of using organically grown, pesticide-free, and fertilizer-free ingredients produced using environmentally friendly methods. Additionally, light meals emphasize the balanced distribution of ingredients to maintain a balanced diet, helping to reduce food waste [28] and avoid overconsumption of food resources. This is consistent with the principles of sustainable food, which stress the efficient use of resources during production and consumption. By allocating ingredients wisely, waste can be reduced, lessening the pressure on natural resources from food production, and achieving a more sustainable food supply chain.
2.2. Theory of Planned Behavior (TPB)
In the field of studying consumer purchasing behavior, the Theory of Planned Behavior (TPB) is widely used to explain the determinants of individual behavior. This theory posits that an individual’s behavior is influenced by their beliefs, attitudes, subjective norms, and perceived behavioral control. Specifically, an individual’s beliefs guide their attitudes and subjective norms, while perceived behavioral control influences whether they can perform a specific behavior. With the proliferation of the internet and social media, influencer marketing platforms, as an emerging form of marketing, have an increasingly significant impact on consumer purchasing behavior [29]. Therefore, this study will use the TPB as the theoretical framework to explore the relationship between consumers’ attitudes towards influencer marketing platforms, their purchase intentions, and their purchasing behaviors, as well as any potential mediating effects.
2.3. Hypotheses
2.3.1. Influencer Marketing Platform Intervention and Purchase Intention
Influencer marketing platforms, with their recommendation mechanisms based on user-generated content, receive considerable attention [9,10]. Through influencers sharing their personal experiences, product evaluations, and usage scenarios, they directly or indirectly shape consumers’ views on various goods, attracting them to make purchases. Under the framework of the Theory of Planned Behavior, an individual’s behavior is influenced by their beliefs and attitudes [30]. For consumers, if they believe that influencer marketing platforms can provide useful product information and recommendations, as well as positive evaluations of the products, then they are likely to have a positive attitude towards the platform and exhibit a higher intention to purchase. For example, consumers tend to prioritize products recommended by their favorite YouTubers, with the level of self-disclosure, similarity, and attractiveness of YouTube users positively affecting viewers’ parasocial interactions, brand attitudes, and loyalty to YouTubers [31]. Similarly, perceived social media marketing activities (SMMAs) have a positive impact on brand trust, brand experience, and brand love, which, in turn, positively affects purchase intentions [32]. Influencers’ actions also positively influence people’s attitudes towards influencers, which then positively affects their purchase intentions [33]. Moreover, influenced by media richness and media naturalness, the hyper-social interaction between influencers and consumers strongly promotes purchase intentions [34]. Therefore, this study proposes the following hypothesis:
Influencer marketing platform intervention has a positive effect on purchase intention.
2.3.2. Purchase Intention and Purchase Behavior
The relationship between purchase intention and purchase behavior has been explored in multiple studies. According to the Theory of Planned Behavior, an individual’s purchasing behavior is directly influenced by their purchase intention [35,36]. If consumers exhibit a high purchase intention, meaning they have a positive intention to buy a specific product or service, they are more likely to actually engage in the purchasing behavior. Kamalanon, Vishal, and others have found that green purchase intentions have a positive impact on green purchase behaviors, with attitudes towards green products being the strongest precursor to purchase intentions [36,37]. Imiru’s research in the context of Ethiopia indicates that green purchase intentions play a mediating role between antecedents of green purchase intentions and green purchase behaviors [38]. Additionally, the literature suggests that the relationship between purchase intentions and purchase behaviors is influenced by various factors, such as emotions, cultural factors, value consciousness, and social sustainability. Emotions play a role in strengthening the relationship between the intention to purchase and actual purchase behaviors [39]. Therefore, this study proposes the following hypothesis:
Purchase intention has a positive impact on purchase behavior.
2.3.3. Influencer Marketing Platform Intervention and Purchase Behavior
The relationship between influencer marketing platform intervention and purchase behavior exists to an extent. According to the Theory of Planned Behavior, an individual’s purchasing behavior is influenced by their beliefs and attitudes. In the context of influencer marketing platforms, if consumers have positive beliefs and attitudes towards the platform, meaning they consider the product information and recommendations provided by the platform to be valuable and have a positive evaluation of the products, then they are more likely to engage in purchasing behavior through that platform [30]. Studies show that influencer advertisements on influencer marketing platforms can increase consumers’ impulse to make purchases, with attitudes towards influencer ads playing a key role in driving this impulse [40]. Influencers in influencer marketing platforms influence consumer engagement behaviors, such as content engagement and creation, thereby affecting the likelihood of consumer purchases [41]. Influencers using social media platforms to interact with consumers and build relationships can shape purchase intentions, with hyper-social interaction being a strong driver of purchase intentions [34]. Therefore, this study proposes the following hypothesis:
Influencer marketing platform intervention has a positive impact on purchase behavior.
2.3.4. Influencer Marketing Platform Intervention, Purchase Intention, and Purchase Behavior
According to the mediating model of the Theory of Planned Behavior, an individual’s purchasing behavior may be mediated by their purchase intentions [42]. In the context of influencer marketing platforms, if consumers hold positive beliefs and attitudes towards the platform, this will enhance their purchase intentions. The enhancement of purchase intentions will, in turn, further encourage them to engage in actual purchasing behavior. In the shopping process, influencer marketing platforms act as a medium, directly affecting the consumer’s purchase decision chain [43]. First, through influencers’ promotional activities on influencer marketing platforms, product information is widely disseminated, thereby triggering consumers’ purchase intentions. Second, this purchase intention is converted into actual purchase behavior. Consumers are often more inclined to complete shopping transactions on relevant platforms after being recommended by influencers. Therefore, purchase intention plays a key mediating role throughout the purchase process, linking influencer marketing activities and purchase behavior, directly shaping the consumer’s shopping experience. This mediating effect highlights the importance of purchase intention in the influencer marketing process, providing important clues for a deeper understanding of consumer behavior and the impact of social media marketing. Therefore, this study proposes the following hypothesis:
Purchase intention has a mediating effect between influencer marketing platform intervention and purchase behavior.
Based on the above hypotheses, the following theoretical framework was constructed (see Figure 1):
3. Methods
3.1. Sample and Data Collection
Suzhou City, located at the core of the Yangtze River Delta region [44], is the largest economic center of Jiangsu Province, as a national scenic tourist city with prominent industries. As a national high-tech industrial base, it is expected to showcase the unique development trends of the light meals industry in terms of technology and innovation. Suzhou City has always focused on sustainable development in various aspects. Its enterprises actively pursue green and low-carbon transformation in production and business activities, consistent with the concept of green and low-carbon development [45]. At the same time, Suzhou City actively advocates for sustainable living concepts, and citizens have gradually focused on health and sustainable development, promoting attention and demand for sustainable food. Overall, the emerging light meals industry has significant development potential in Suzhou City, making the survey of its permanent residents representative for analysis.
The survey targeted residents of Suzhou City, employing a three-stage sampling method to ensure the randomness of the sampled population. Administrative districts were selected using the PPS sampling method from all districts in Suzhou City, from which communities and streets were further selected, and permanent residents were finally sampled using systematic sampling. The final questionnaire was measured on a 5-point Likert scale, ranging from “very unwilling” (1) to “very willing” (5). In the formal survey, 859 questionnaires were distributed; 654 valid questionnaires were collected, with a total recovery rate of 76.14%. The data from the formal survey passed reliability, validity, and chi-squared tests, confirming the survey results as credible.
The profile of the study sample is summarized in Table 1. The age of those who have used influencer marketing platforms mainly ranged from 18 to 35 years, and they were predominantly female. The user group mainly consisted of students, ordinary employees, and business managers, with an average monthly income of RMB 4000–6000. The duration spent browsing influencer marketing platforms was generally within 1 h. The distribution of permanent residences was relatively even, with the most people living in Gusu District, Pingjiang Road.
3.2. Model Construction and Measurement
This study uses Structural Equation Modeling (SEM) to analyze data, aiming to delve into the impact of influencer marketing platforms on light meal consumption intentions and behaviors. SEM is widely used in social commerce research as it can effectively analyze the path relationships among complex variables, identify the intrinsic structural relationships between variables, and verify the validity of model hypotheses [46,47,48]. By considering the complex relationships among multiple latent influencing factors, SEM can simultaneously take into account various factors. By measuring latent variables, it captures concepts that are not observable, providing a more comprehensive analysis.
Latent variables are those that cannot be directly observed. In this study, it is posited that before engaging in purchasing behavior, consumers are first attracted by influencer marketing platforms, which include characteristics of the platform itself, marketing content features, and personal attributes of the influencers. This paper categorizes these aspects under “influencer marketing platform intervention”, which further affects residents’ purchase intentions for the “planted” light meal ideas, leading ultimately to a decision on whether to engage in purchasing behavior based on the residents’ self-judgment and cognition.
Drawing from theory and combined with the issues involved in the questionnaire, this study selects influencer marketing platform intervention, purchase intention, and purchase behavior as latent variables. The corresponding measurable variables and related questions are presented in Table 2. Among them, the influencer marketing platform intervention scale adapts questions on influencer personal characteristics and platform characteristics from the questionnaires of Shafiq R (2011) [49] and Hussain S (2021) [50], the purchase intention scale is partially adapted from Chun C (2018) [51], and the purchase behavior scale adapts the 6 items of Humaira A (2016) [52].
3.3. Model Settings
Based on the hypotheses formulated and the variables defined in this study, the AMOS 24 software (IBM, Armonk, NY, USA) was utilized. Following the conventions of Structural Equation Modeling (SEM) path diagrams, a causal relationship path diagram of the model was constructed as follows (see Figure 2):
4. Results
The statistical results indicate that, among the sample, 65.14% of users who use influencer marketing platforms are women, showing that women use these platforms more than men. This may be because women are more active in socializing and consuming and are more interested in topics related to influencers, such as fashion, beauty, and fitness. In terms of age distribution, the main users of influencer marketing platforms are young people, likely because they are more familiar with and open to new social media and digital platforms. They have stronger social needs and a desire to explore, and they tend to interact with and share content and communities of interest on influencer marketing platforms. Regarding usage time, there are many users who browse for less than one hour per day, which may reflect users’ fragmented usage habits of influencer marketing platforms. In subsequent discussions, we will consider how to improve the efficiency of influencer marketing platforms so that influencers can attract consumers’ attention more quickly. In terms of the distribution of permanent residents, the sample is evenly distributed, with the majority being from Pingjiang Road in Gusu District, accounting for 13.15%. This may be due to Pingjiang Road being located in the center of Suzhou, serving as a historical and cultural district and a gathering place for influencers, attracting more young people or internet users.
4.1. Model Validation
4.1.1. Correlation Analysis
To enhance the robustness of the model, a correlation analysis was conducted among the variables. The Pearson correlation coefficient was chosen for this analysis, considering its effective capacity to measure linear relationships between interval variables.
As shown in Table 3, the computation revealed a correlation coefficient of 0.557 between purchase behavior and influencer marketing platform intervention, with a significance level of 0.01. This indicates a significant positive correlation between purchase behavior and influencer marketing platform intervention. The correlation coefficient between purchase behavior and purchase intention was 0.618, also showing a significance level of 0.01, which suggests a significant positive correlation between purchase behavior and purchase intention. Furthermore, the correlation coefficient between influencer marketing platform intervention and purchase intention was 0.510, with a significance level of 0.01, indicating a significant positive correlation between influencer marketing platform intervention and purchase intention.
We found that although consumers express lower purchase intentions, they exhibit higher actual purchasing behaviors, which differs from the conclusions of previous studies. However, this result is consistent with the studies of Tufail et al. (2022) and Chen et al. (2022). Tufail et al. (2022) indicated that consumers’ actual purchasing behavior of suboptimal food was higher despite expressing lower intentions due to factors like quality concerns and unappealing appearance, as per the Behavioral Reasoning Theory [53]. Chen et al. (2022) found that consumers exhibited higher actual purchasing behavior when influenced by search advertising, despite expressing lower intentions to buy due to factors like SMS advertising fatigue [54]. We believe that actual purchasing behavior may be driven by the attractiveness, nutritional value, taste, or quality of light meal products, which prompt their decision to buy. The lower purchase intentions may be influenced by other factors, such as price, brand perception, shopping experience, or overall awareness and attitudes towards light meal products. Additionally, external factors such as shopping environment, promotional activities, or social influence might also affect consumers’ purchase intentions. This discrepancy between purchasing behavior and purchase intentions provides valuable insights for marketing strategies in the light meals market, emphasizing the importance of understanding consumers’ true needs and motivations.
4.1.2. Improper Estimates
From the data presented in the Table 4, it is evident that the standardized factor loadings for each question exceed 0.5, and the residuals are all positive and significant. This demonstrates compliance with the estimation criteria. The Composite Reliability (CR) values are all above 0.7, and the Average Variance Extracted (AVE) values exceed 0.5, meeting the criteria for convergent validity. The moderate fit is within an acceptable range, demonstrating combined reliability and convergent validity.
During the model validation process, the examination of improper estimates indicated that the model did not exhibit any violations, thereby affirming the structural equation model’s rationality. This demonstrates the consistency of the proposed model in theoretical construction, providing a reliable foundation for subsequent exploration of causal relationships.
This study tested the reliability and validity of the questionnaire items during the data verification stage. The results indicate good reliability and validity for the items in the questionnaire (KMO value = 0.957), making them suitable for factor analysis. Consequently, we conducted Confirmatory Factor Analysis (CFA). It is evident that the CMIN/DF is 1.945, and the GFI, AGFI, NFI, TLI, IFI, and CFI all exceed the standard of 0.9. The RMSEA is 0.046, which is less than 0.08. The majority of the fit indices meet the general standards for SEM research. Therefore, it can be concluded that this structural model has a good fit and possesses satisfactory adaptability. Please see the details of the test results in Table 5.
4.2. Hypothesis Testing
In this section, we will test our hypotheses, examining both the direct and indirect effects of influencer marketing platform interventions on consumer purchase intentions and behavior.
4.2.1. Assessment of the Structural Model
Our analysis produced the model shown in Figure 3, which indicates that all key independent variables have measurable effects on their respective dependent variables. This suggests that the model has a certain degree of credibility, which can be seen from the more detailed analysis in the following sections.
4.2.2. The Relationship between Influencer Marketing Platform Interventions and Purchase Intentions
In Table 6, we can see that influencer marketing platform intervention has a significant positive effect on purchase intention (β = 0.581, p < 0.001); thus, H1 is supported. This means that, through the promotion and intervention of influencer marketing platforms, consumers are more willing to purchase light meal products. This trend may stem from the influence and fan base of influencers on social media, as well as their personal recommendations and insights about the products, enhancing consumers’ trust and interest in light meal products. This finding provides empirical support for the role of social media in promoting the purchase intention of sustainable foods, and it also offers businesses effective marketing strategies through the use of influencer marketing platforms.
4.2.3. The Relationship between Purchase Intention and Purchasing Behavior
Purchase intention has a significant positive effect on purchase behavior (β = 0.510, p < 0.001), confirming H2. This demonstrates that consumers are more likely to convert their positive purchase intentions into actual purchasing behaviors when they express a strong intention to purchase. This provides empirical support for the significance of purchase intention in the purchasing decision process, while also emphasizing the effectiveness of influencer marketing platforms in driving purchasing behavior. In the modern consumer environment, consumers often realize their consumption goals through actual purchasing behavior after expressing their purchase intentions. Therefore, understanding and guiding consumers’ purchase intentions is a crucial part of successful marketing for businesses. Furthermore, the validation of H2 also emphasizes the effectiveness of influencer marketing platforms in driving purchasing behavior. Through the recommendations and introductions by influencers, consumers not only express their purchase intentions but are also more inclined to convert these intentions into actual purchasing behaviors. As opinion leaders on social media, influencers’ promotional influence and trustworthiness can facilitate consumers’ purchasing decisions. Therefore, utilizing influencer marketing platforms can more effectively guide consumers to realize their purchase intentions, thereby promoting the occurrence of purchasing behaviors.
4.2.4. The Relationship between Influencer Marketing Platform Interventions and Purchasing Behavior
Influencer marketing platform intervention has a significant positive effect on purchase behavior (β = 0.306, p < 0.001), supporting H3. As a new type of marketing channel, influencer marketing platforms can effectively guide consumer purchasing behavior through the influence and fan base of influencers. After consumers encounter product information and recommendations from influencers on social media, they not only express a positive purchase intention but are also more likely to complete the purchase. This indicates that under the influence of influencer marketing platforms, consumers are more likely to translate their positive purchase intentions into actual buying behaviors, offering empirical evidence of influencer marketing’s effectiveness in promoting sales of light meal products, and highlighting the importance of purchase intention in the decision-making process.
4.2.5. The Relationship among Influencer Marketing Platform Interventions, Purchase Intention, and Purchasing Behavior
From the bootstrap mediation effect test shown in the Table 7, the direct effect of influencer marketing platform intervention on purchase behavior via purchase intention is 0.306, with a 95% confidence interval not including 0, indicating that the direct effect is significant. The indirect effect is 0.302, with a 95% confidence interval not including 0, indicating that the indirect effect is significant. The mediation proportion is 49.7%, supporting H4. This highlights the important role of purchase intention in explaining the mechanism by which influencer marketing affects purchasing behavior, further emphasizing the criticality of purchase intention in this relationship. This validation not only provides a deeper understanding of the impact of purchase intention on purchasing behavior but also underscores the significant role of influencer marketing platforms in guiding consumers to form purchase intentions and, ultimately, realize purchasing behavior.
5. Conclusions
In contemporary society, as awareness of health and sustainable development continues to rise, light meals have emerged as a highly sought-after dietary trend. Against this backdrop, influencer marketing platforms have increasingly become important drivers in shaping consumer perceptions. This study aims to delve into the effect of influencer marketing platforms on consumers’ purchase intentions towards light meals.
The results here confirm that the intervention of influencer marketing platforms has a significant positive impact on both the purchase intention and purchasing behavior towards light meals. This breakthrough reveals the role of influencer marketing platforms as actual guides leading consumers towards more sustainable food choices. Consumers show a preference for light meal products that align with the concept of sustainable development in their shopping decisions, highlighting the significant role of influencer marketing platforms in stimulating purchase intentions for light meals. This provides novel insights into the influence mechanism of influencer marketing platforms in promoting consumers’ choices of sustainable foods.
Furthermore, we found that the formation of purchasing intentions is influenced not only by influencer marketing platforms but also by the authenticity, professionalism, and personalized recommendations of the platforms’ content. Through survey research, it was found that most consumers generally believe in the significant impact of influencers, emphasizing their notable role in stimulating purchase intentions, which aligns with the results of earlier studies [55,56,57]. The professionalism, authenticity, and popularity of influencers have a crucial impact on consumer shopping decisions, making consumers more trusting and inclined to purchase light meal products promoted by influencers. In addition, the platform offers consumers genuine shopping experiences and firsthand product feedback through features such as user reviews and product ratings. This enhances consumers’ confidence in light meal products and solidifies their purchasing decisions. Moreover, the direct interaction and close relationship between influencers and consumers emotionally engage consumers with influencer recommendations, thereby boosting their interest and intention to purchase light meal products.
Finally, the focus on influencer marketing platforms plays a pivotal role in consumers’ shopping behaviors. Factors such as the platform’s personalization and precise recommendations, layout style and user interface, and the ecosystem and atmosphere make consumers feel comfortable and pleased, thereby boosting their confidence in shopping. The comprehensive, authentic, and clear presentation of light meal marketing content, along with the provision of professional and targeted services, further stimulates consumers’ interest and intention to purchase.
Overall, this study delves into the key role of influencer marketing platforms in promoting consumers’ light meal shopping behaviors, highlighting the positive impact of sustainable development on light meal shopping intentions and the importance of influencers in guiding and influencing consumer shopping behaviors.
6. Discussion
6.1. Research Contributions
Although numerous studies have widely discussed the theoretical models and hypotheses using purchase intention as a mediator between attitudes and behaviors, this study demonstrates significant originality in several aspects. Firstly, it focuses on the light meals sector, a relatively new and rapidly evolving market that has received little attention in prior research. Secondly, by conducting a large-scale field survey in Suzhou, this study provides empirical data that reflect the actual behaviors and attitudes of consumers in a specific region of China, adding geographical and cultural dimensions to the research. Lastly, this research explores the role of influencers in promoting sustainable development concepts and the integration process within the light meals industry, offering new strategic recommendations for marketing practices. This not only enriches the application scope of purchase intention theories but also provides practical guidance for marketing strategies in the light meals market, which has rarely been addressed in previous studies. Through these original contributions, this paper not only fills gaps in the existing literature but also provides new theoretical and empirical foundations for future research.
6.2. Practical and Social Implications
This study plays a crucial role in profoundly revealing the connections between influencers, platforms, and consumers. Influencers should focus on building trust and credibility and providing informational value in their content to facilitate consumer knowledge acquisition, positive attitudes, and behavioral change [58,59]. For influencers, there is a need to more deeply integrate the concepts of a healthy lifestyle and sustainable food. By sharing more lifestyle displays and light meal recipes, influencers can further solidify their image and closely associate themselves with the concepts of health and sustainable food. Influencers focusing on sustainability can emphasize the adoption of sustainable foods in daily life to guide their followers to more actively engage with this idea. Additionally, actively participating in social media activities, such as giveaways, challenges, and user-generated content, is also an effective way to inspire fans to actively participate and share their real-life experiences of health and sustainable living.
For platforms, first, leveraging the influence of social media and influencers to combine the concept of sustainable development with the light meals industry can not only increase the exposure of light meal products but also promote the spread of sustainable food concepts. By enhancing health awareness, information support may trigger online health information seeking, thereby encouraging people to adopt healthier lifestyles [60]. Second, platforms can encourage more diverse content about light meals and sustainable living to support influencer creativity, meeting the needs of different consumers. Providing professional information on health and sustainable diets can help consumers better understand the advantages of products and the concepts behind them. Through creating engaging interactive social media activities, platforms can attract user participation and strengthen the market dissemination of light meals and sustainable food. This view is consistent with previous research in the field of social media by William et al. [61] and Qiao [62].
For consumers, engaging more actively with social media to share their purchase experiences and healthy lifestyles, interacting with others, and forming communities are beneficial. Consumer engagement in social media brand communities can enhance participation and promote the sharing of purchasing experiences, healthy lifestyles, and interaction, ultimately fostering a solid relationship between consumers and brands [63]. Actively seeking information about light meals and sustainable living can lead to a more comprehensive understanding of products and concepts. When shopping, there is a tendency to choose light meal products that align with eco-friendly principles to support the market development of sustainable food. This finding is consistent with previous research showing that consumers actively participate in social media discussions about natural foods, reflecting people’s attitudes and beliefs. They share experiences and healthy lifestyles, form communities, and influence food marketing and public policy [64]. Such consumer decisions can encourage brands and businesses to pay more attention to the production of sustainable and healthy foods.
Furthermore, this study provides support for local policy development and sustainable management. By deeply exploring the impacts of influencer marketing platforms on the intentions and behavior towards the consumption of light meals, we can not only understand the driving factors behind consumer shopping behavior but also offer targeted policy recommendations and management plans to local governments and administrative departments. Given the positive influence on the intention to consume light meals, the government can increase efforts to promote healthy eating, enhance consumer awareness and acceptance of light meal products, and promote sustainable development and healthy lifestyles. At the same time, recognizing the importance of influencer marketing platforms in guiding and influencing consumer shopping behavior, the government can establish corresponding platform regulatory measures to protect consumer rights and ensure the proper functioning of the market [65,66].
6.3. Limitations and Future Research
Despite its contributions, this study still has some limitations, opening pathways for future research. First, data collection was limited to 654 consumers in Suzhou, China, and consumers from different countries and regions may have different preferences and behavior patterns. Therefore, future research should conduct sample surveys in a broader geographical scope to more comprehensively understand the impacts of influencer marketing platforms on consumers with different cultural and regional backgrounds. Second, although the research on influencer marketing platforms is innovative, the self-developed scale may have some shortcomings. We hope that future studies will apply it in different scenarios to verify its effectiveness. Lastly, this study primarily conducted quantitative empirical tests. In future research, qualitative empirical tests could be introduced to more comprehensively understand the impact of influencer marketing platforms on consumer decision-making through in-depth interviews, observations, and content analysis.
Overall research design, Z.Q.; writing—original draft preparation, Z.Q., Y.C., Y.Y., and Y.H.; writing—review and editing, Y.Y. and Z.Q. All authors have read and agreed to the published version of the manuscript.
Ethical approval is not required for this study.
Informed consent was obtained from all subjects involved in the study.
Data supporting the study are available upon reasonable request from the corresponding author.
We thank the academic editor and four anonymous reviewers for their contributions to improving the manuscript. Our gratitude is extended to each of the parties listed above.
The authors declare no conflicts of interest.
Footnotes
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Descriptive statistics.
Construct | Features | Amount | Percentage |
---|---|---|---|
Gender | Men | 228 | 34.86% |
Women | 426 | 65.14% | |
Age | Under the age of 18 | 30 | 4.59% |
18–25 years old | 348 | 53.21% | |
26–35 years old | 168 | 25.69% | |
36–45 years old | 93 | 14.22% | |
46–55 years old | 13 | 1.99% | |
Above the age of 56 | 2 | 0.31% | |
Occupation | Students | 244 | 37.31% |
Business managers | 83 | 12.69% | |
General staff | 121 | 18.50% | |
Professionals | 40 | 6.12% | |
Government/agency cadres/civil servants | 59 | 9.02% | |
Freelancers | 25 | 3.82% | |
Ordinary workers | 30 | 4.59% | |
Self-employed/contractors | 19 | 2.91% | |
Commercial service workers | 15 | 2.29% | |
Other | 18 | 2.75% | |
Average monthly income | Under RMB 2000 | 159 | 24.31% |
RMB 2001–4000 | 173 | 26.45% | |
RMB 4001–6000 | 197 | 30.12% | |
RMB 6001–8000 | 87 | 13.30% | |
Above RMB 8000 | 38 | 5.81% | |
The length of time consumers browse on the influencer marketing platform | Less than 30 min | 204 | 31.19% |
30 min–1 h | 264 | 40.37% | |
1 h–2 h | 119 | 18.20% | |
2 h–4 h | 41 | 6.27% | |
More than 4 h | 26 | 3.98% | |
Place of residence | Industrial Park, Louwei Street | 77 | 11.77% |
Gusu District, Pingjiang Road | 86 | 13.15% | |
Kunshan City, Bacheng Town | 71 | 10.86% | |
Kunshan City, Yushan Town | 51 | 7.80% | |
Kunshan City, Zhangpu Town | 69 | 10.55% | |
Wuzhong District, Guoxiang Street | 59 | 9.02% | |
Wuzhong District, Jinting Town | 65 | 9.94% | |
Wuzhong District, Luzhi Town | 68 | 10.40% | |
Zhangjiagang City, Hucheng Street | 46 | 7.03% | |
Zhangjiagang City, Yangshe Town | 62 | 9.48% |
Latent variables’ and observable variables’ settings.
Latent Variables | Secondary Variables | Observable Variables | Observable Variable Description |
---|---|---|---|
Influencer marketing platform intervention | Platform | P1_1 | The platform’s personalization and precise recommendations attract me to use it. |
P1_2 | The layout style and user interface of the platform make me feel comfortable. | ||
P1_3 | I like the ecosystem and atmosphere of the platform. | ||
P1_4 | The light meal marketing content is comprehensive, true and clear, which gains my trust. | ||
P1_5 | The light meal marketing content can provide me with professional and targeted services. | ||
Marketing content features | P1_6 | The diversity of presentation in light meal marketing content stimulates my interest. | |
P1_7 | Influencers have a good understanding of light meals. | ||
P1_8 | Influencers have purchased and consumed many light meal categories. | ||
Influencers’ personal attributes | P1_9 | Influencers’ comments on light meal products are trustworthy. | |
P1_10 | The popularity of the influencer increases my trust. | ||
P1_11 | Influencers actively respond to consumer topics and answer various product questions. | ||
Purchase intentions | I1 | Actively responding and participating in topics or live broadcasts initiated by influencers. | |
I2 | Interacting with other influencers on the platform. | ||
I3 | I believe in the recommendations of the influencer marketing platform and try to purchase the “planted” light meals. | ||
I4 | Repurchasing light meals that I have “harvested” from the platform. | ||
I5 | Sharing experiences of “planted”/“harvested” on the platform with people around me. | ||
Purchase behavior | B1 | After being “planted” by the platform, I search for related information about light meal products on relevant websites. | |
B2 | After being “planted” by the platform, I inquire about the product information from people who have purchased the light meal product. | ||
B3 | I am considering ordering light meal products recommended by influencers on the platform. | ||
B4 | I am very willing to browse the light meal products recommended by the influencer marketing platform to help me make purchasing decisions. | ||
B5 | The recommendations of the influencer marketing platform play an important role in my purchase of light meal products. | ||
B6 | I plan to frequently purchase light meal products on the influencer marketing platform in the future. | ||
B7 | I share the usage experience of the light meal product on the “planted” platform. | ||
B8 | I share the usage experience of the light meal product with people around me. |
Pearson correlation coefficient.
Average | Standard Deviation | Influencer Marketing Platform Intervention | Purchase Intention | Purchase Behavior | |
---|---|---|---|---|---|
Influencer marketing platform intervention | 3.771 | 0.715 | 1 | ||
Purchase intention | 3.651 | 0.792 | 0.510 *** | 1 | |
Purchase behavior | 3.726 | 0.725 | 0.557 *** | 0.618 *** | 1 |
Note: *** p < 0.001.
Parameter estimates between latent variables and observable variables.
Estimate | S.E. | C.R. | P | Factor Loading | CR | AVE | |||
---|---|---|---|---|---|---|---|---|---|
P1_1 | <--- | Influencer marketing platform intervention | 1.000 | 0.695 | 0.932 | 0.556 | |||
P1_2 | <--- | Influencer marketing platform intervention | 1.214 | 0.072 | 16.823 | *** | 0.844 | ||
P1_3 | <--- | Influencer marketing platform intervention | 0.988 | 0.071 | 13.910 | *** | 0.691 | ||
P1_4 | <--- | Influencer marketing platform intervention | 1.085 | 0.074 | 14.641 | *** | 0.727 | ||
P1_5 | <--- | Influencer marketing platform intervention | 1.057 | 0.071 | 14.836 | *** | 0.737 | ||
P1_6 | <--- | Influencer marketing platform intervention | 1.047 | 0.070 | 14.854 | *** | 0.739 | ||
P1_7 | <--- | Influencer marketing platform intervention | 1.085 | 0.074 | 14.565 | *** | 0.725 | ||
P1_8 | <--- | Influencer marketing platform intervention | 1.123 | 0.073 | 15.434 | *** | 0.766 | ||
P1_9 | <--- | Influencer marketing platform intervention | 1.179 | 0.076 | 15.557 | *** | 0.776 | ||
P1_10 | <--- | Influencer marketing platform intervention | 1.086 | 0.071 | 15.377 | *** | 0.766 | ||
P1_11 | <--- | Influencer marketing platform intervention | 1.027 | 0.070 | 14.622 | *** | 0.727 | ||
I1 | <--- | Purchase intention | 1.000 | 0.786 | 0.861 | 0.554 | |||
I2 | <--- | Purchase intention | 0.867 | 0.060 | 14.525 | *** | 0.682 | ||
I3 | <--- | Purchase intention | 0.795 | 0.049 | 16.369 | *** | 0.756 | ||
I4 | <--- | Purchase intention | 1.075 | 0.063 | 17.117 | *** | 0.789 | ||
I5 | <--- | Purchase intention | 0.782 | 0.052 | 15.092 | *** | 0.702 | ||
B1 | <--- | Purchase behavior | 1.000 | 0.689 | 0.904 | 0.540 | |||
B2 | <--- | Purchase behavior | 1.188 | 0.079 | 14.995 | *** | 0.769 | ||
B3 | <--- | Purchase behavior | 1.276 | 0.089 | 14.416 | *** | 0.747 | ||
B4 | <--- | Purchase behavior | 1.137 | 0.078 | 14.580 | *** | 0.743 | ||
B5 | <--- | Purchase behavior | 1.043 | 0.072 | 14.438 | *** | 0.736 | ||
B6 | <--- | Purchase behavior | 1.222 | 0.085 | 14.335 | *** | 0.732 | ||
B7 | <--- | Purchase behavior | 1.351 | 0.093 | 14.461 | *** | 0.743 | ||
B8 | <--- | Purchase behavior | 1.065 | 0.076 | 13.937 | *** | 0.718 |
Note: *** p < 0.001.
Structural equation model fit.
Fit Indices | Acceptable Range | Measurements | Match |
---|---|---|---|
CMIN | 484.316 | ||
DF | 249 | ||
CMIN/DF | <5 | 1.945 | Yes |
GFI | >0.9 | 0.928 | Yes |
AGFI | >0.9 | 0.913 | Yes |
RMSEA | <0.08 | 0.046 | No |
IFI | >0.9 | 0.962 | Yes |
NFI | >0.9 | 0.925 | Yes |
TLI(NNFI) | >0.9 | 0.958 | Yes |
CFI | >0.9 | 0.962 | Yes |
SRMR | <0.05 | 0.047 | Yes |
Path coefficients.
Estimate | S.E. | C.R. | P | Standardized Coefficient | |||
---|---|---|---|---|---|---|---|
Purchase intention | <--- | Influencer marketing platform intervention | 0.740 | 0.073 | 10.087 | *** | 0.581 |
Purchase behavior | <--- | Purchase intention | 0.380 | 0.044 | 8.617 | *** | 0.520 |
Purchase behavior | <--- | Influencer marketing platform intervention | 0.285 | 0.050 | 5.662 | *** | 0.306 |
Note: *** p < 0.001.
Bootstrap mediation effect analysis for the impact of influencer marketing platform intervention on purchase behavior through purchase intention.
Path | Effect | SE | Bias Corrected (95%) | Percentile Method (95%) | Effect | ||||
---|---|---|---|---|---|---|---|---|---|
LLCI | ULCI | P | LLCI | ULCI | P | ||||
Direct effect | 0.306 | 0.053 | 0.198 | 0.412 | 0.001 | 0.198 | 0.412 | 0.001 | 50.3% |
Indirect effect | 0.302 | 0.038 | 0.235 | 0.385 | 0.001 | 0.230 | 0.379 | 0.001 | 49.7% |
Total effect | 0.608 | 0.040 | 0.531 | 0.687 | 0.001 | 0.530 | 0.685 | 0.001 |
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Abstract
Given the heightened awareness of health and sustainable development in contemporary society, light meals have become a popular dietary choice with considerable momentum. This study focuses on the role of influencer marketing platforms in promoting consumer purchasing intentions towards light meals. By conducting a sample survey of 654 consumers in Suzhou City and employing Structural Equation Modeling (SEM) for empirical analysis, the findings indicate that the intervention of influencer marketing platforms has a significant positive impact on both the purchase intention and purchasing behavior towards light meals, and that purchase intention has a mediating effect between influencer marketing platform intervention and purchase behavior. This research further reveals that while influencers share more lifestyle displays and light meal recipes, marketing platforms should strengthen the integration of sustainable development concepts with the light meals industry to enhance product exposure and promote the spread of ideas. In addition, consumers can reinforce this trend by actively participating in social media, sharing purchasing experiences, and proactively seeking information about light meals and sustainable living, thus achieving a beneficial mutual promotion.
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1 School of Business, Jiangsu University of Science and Technology, Zhenjiang 215600, China;