LinBridge: A Learnable Framework for Interpreting Nonlinear Neural Encoding Models
Xiaohui Gao, Yue Cheng, Peiyang Li, Yijie Niu, Yifan Ren, Yiheng Liu,, Haiyang Sun, Zhuoyi Li, Weiwei Xing, Xintao Hu

TL;DR
LinBridge is a novel, learnable framework that interprets nonlinear neural encoding models by decomposing them into linear and nonlinear components using Jacobian analysis, validated on visual brain data.
Contribution
It introduces a flexible, self-supervised method to interpret complex nonlinear neural encoding models through Jacobian analysis, advancing understanding of hierarchical brain responses.
Findings
Linear inherent component accurately reflects complex mappings.
Sample-selective bias reveals variability in nonlinearity across visual hierarchy.
Framework effectively interprets nonlinear models in neural encoding.
Abstract
Neural encoding of artificial neural networks (ANNs) links their computational representations to brain responses, offering insights into how the brain processes information. Current studies mostly use linear encoding models for clarity, even though brain responses are often nonlinear. This has sparked interest in developing nonlinear encoding models that are still interpretable. To address this problem, we propose LinBridge, a learnable and flexible framework based on Jacobian analysis for interpreting nonlinear encoding models. LinBridge posits that the nonlinear mapping between ANN representations and neural responses can be factorized into a linear inherent component that approximates the complex nonlinear relationship, and a mapping bias that captures sample-selective nonlinearity. The Jacobian matrix, which reflects output change rates relative to input, enables the analysis of…
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Taxonomy
TopicsNeural Networks and Applications
