Dissertation Defense: Lianghui Peng, Yale University

Event time: 
Thursday, April 17, 2025 - 1:00pm to 2:00pm
Location: 
Sloane Physics Laboratory (), Room 57 See map
217 Prospect Street
New Haven, CT 06511
Event description: 

Title: Adaptation of learning dynamics and feature representations via the neural kernel

Abstract: The ability to learn from experience is essential for both biological and artificial agents. In complex environments where experience is sparse relative to the multitude of features, agents must efficiently generalize by focusing on features relevant for the task. The generalization strategy, known as inductive bias, shapes the dynamics of learning. We introduce a neural kernel framework to characterize inductive biases of humans and artificial neural networks in category learning, linking neural representations with learning behavior. Our kernel models captured the learning trajectories of human subjects across two experiments, and elucidated the learning strategies of neural networks through feature modes. We developed methods for fitting kernels to behavioral data, revealing the adaptation of inductive bias in human subjects. We also implemented a neural network model with feature-based gain modulation, capable of adapting representations and inductive bias. In summary, we established a novel perspective for understanding learning and generalization in relation to neural representations, providing testable predictions for future neural and behavioral experiments.

Committee: John Murray (advisor), Damon Clark, Ilker Yildirim, and Thierry Emonet