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Statistical Mechanics of Support Vector Regression

2024-12-06Code Available0· sign in to hype

Abdulkadir Canatar, SueYeon Chung

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Abstract

A key problem in deep learning and computational neuroscience is relating the geometrical properties of neural representations to task performance. Here, we consider this problem for continuous decoding tasks where neural variability may affect task precision. Using methods from statistical mechanics, we study the average-case learning curves for -insensitive Support Vector Regression (-SVR) and discuss its capacity as a measure of linear decodability. Our analysis reveals a phase transition in the training error at a critical load, capturing the interplay between the tolerance parameter and neural variability. We uncover a double-descent phenomenon in the generalization error, showing that acts as a regularizer, both suppressing and shifting these peaks. Theoretical predictions are validated both on toy models and deep neural networks, extending the theory of Support Vector Machines to continuous tasks with inherent neural variability.

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