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In the digital transformation of public services, reliable and secure data handling has become central to effective E-government operations. This study introduces a symmetry-driven neural network architecture tailored for secure, scalable, and energy-efficient data processing. The model integrates weight-sharing and symmetrical configurations to enhance efficiency and resilience. Experimental validation on three E-government datasets (95,000–230,000 records) demonstrates that the proposed model improves processing speed by up to 40% and enhances adversarial robustness by maintaining accuracy reductions below 2.5% under attack scenarios. Compared with baseline neural networks, the architecture achieves higher accuracy (up to 95.1%), security (up to 98% attack prevention), and efficiency (processing up to 1600 records/sec). These results confirm the model’s applicability for large-scale, real-time E-government systems, providing a practical path for sustainable and secure digital public administration.
Details
; Quiam Fatima 1 ; Al-Zoubi Ala’ M. 1 ; Muder, Almiani 2
1 Faculty of Science and IT, Al-Zaytoonah University of Jordan, Amman 11733, Jordan; [email protected] (F.Q.); [email protected] (A.M.A.-Z.)
2 Department of MIS, GUST Engineering and Applied Innovation Research Center (GEAR), Gulf University of Science & Technology, Hawally 32093, Kuwait; [email protected]