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Abstract

This thesis explores how sparsity, the idea that only a small fraction of neurons are active at any time, is a common thread connecting biological brains and artificial intelligence. By combining theory, experiments, and real-world applications, we show how sparsity is a key ingredient underlying core cognitive abilities like attention, memory, and learning.

We start by uncovering a surprising link between the "attention" mechanism powering recent artificial intelligence (AI) breakthroughs and a classic theory of human memory called Sparse Distributed Memory (SDM). This suggests that brains and AI may leverage similar computational tricks.

Taking inspiration from the brain's cerebellum, we then use SDM to improve an AI's ability to learn continuously without forgetting previous knowledge. This showcases sparsity's ability to enable more flexible learning.

We also find that simply adding noise during training pushes AI to use sparse representations, causing it to develop more brain-like properties. This provides clues about why sparsity emerges in the brain while offering an easy way to encourage it in AI.

Finally, we use sparsity to peek inside the black box of large language models like ChatGPT and Claude. By pulling apart the tangled web of information these models use to think, we make progress towards more transparent and controllable AI.

Together, these findings paint sparsity as a unifying principle for intelligent systems, be they made of biological neurons or silicon chips. By connecting the dots between neuroscience and AI, this thesis advances our understanding of intelligence while charting a course towards more capable and interpretable AI systems.

Details

1010268
Business indexing term
Title
Sparse Representations in Artificial and Biological Neural Networks
Author
Number of pages
199
Publication year
2025
Degree date
2025
School code
0084
Source
DAI-B 86/12(E), Dissertation Abstracts International
ISBN
9798280715219
Committee member
Ba, Demba; Eddy, Sean; Gershman, Sam
University/institution
Harvard University
Department
Systems Biology
University location
United States -- Massachusetts
Degree
Ph.D.
Source type
Dissertation or Thesis
Language
English
Document type
Dissertation/Thesis
Dissertation/thesis number
32041580
ProQuest document ID
3216755033
Document URL
https://www.proquest.com/dissertations-theses/sparse-representations-artificial-biological/docview/3216755033/se-2?accountid=208611
Copyright
Database copyright ProQuest LLC; ProQuest does not claim copyright in the individual underlying works.
Database
ProQuest One Academic