The content introduces the information bottleneck (IB) problem, which aims to extract a low-dimensional statistic T from an observation X that retains sufficient information about a correlated variable Y. Conventional approaches to solving the IB problem rely on heuristic tuning of hyperparameters, offering no guarantees that the learned features satisfy the information-theoretic constraints.
The paper proposes a new methodology called IB-MHT (Information Bottleneck via Multiple Hypothesis Testing) that wraps around existing IB solvers to provide statistical guarantees on the IB constraints. The key steps are:
The proposed IB-MHT approach is demonstrated on both the classical IB problem formulation and the deterministic IB problem. The results show that IB-MHT can satisfy the IB constraint with high probability, while achieving comparable or better performance on the objective I(X;T) compared to conventional IB solvers.
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by Amirmohammad... lúc arxiv.org 09-12-2024
https://arxiv.org/pdf/2409.07325.pdfYêu cầu sâu hơn