LGAIOct 7, 2025

Quantifying the Accuracy-Interpretability Trade-Off in Concept-Based Sidechannel Models

arXiv:2510.05670v23 citationsh-index: 3
Originality Incremental advance
AI Analysis

This addresses the problem of balancing accuracy and interpretability in interpretable machine learning models, offering a principled approach for developers, though it is incremental as it builds on existing CSM frameworks.

The paper tackles the trade-off between accuracy and interpretability in Concept Sidechannel Models (CSMs) by introducing a metric and regularization technique to quantify and control sidechannel reliance, showing that SIS regularization improves interpretability and intervenability in state-of-the-art CSMs.

Concept Bottleneck Models (CBNMs) are deep learning models that provide interpretability by enforcing a bottleneck layer where predictions are based exclusively on human-understandable concepts. However, this constraint also restricts information flow and often results in reduced predictive accuracy. Concept Sidechannel Models (CSMs) address this limitation by introducing a sidechannel that bypasses the bottleneck and carry additional task-relevant information. While this improves accuracy, it simultaneously compromises interpretability, as predictions may rely on uninterpretable representations transmitted through sidechannels. Currently, there exists no principled technique to control this fundamental trade-off. In this paper, we close this gap. First, we present a unified probabilistic concept sidechannel meta-model that subsumes existing CSMs as special cases. Building on this framework, we introduce the Sidechannel Independence Score (SIS), a metric that quantifies a CSM's reliance on its sidechannel by contrasting predictions made with and without sidechannel information. We propose SIS regularization, which explicitly penalizes sidechannel reliance to improve interpretability. Finally, we analyze how the expressivity of the predictor and the reliance of the sidechannel jointly shape interpretability, revealing inherent trade-offs across different CSM architectures. Empirical results show that state-of-the-art CSMs, when trained solely for accuracy, exhibit low representation interpretability, and that SIS regularization substantially improves their interpretability, intervenability, and the quality of learned interpretable task predictors. Our work provides both theoretical and practical tools for developing CSMs that balance accuracy and interpretability in a principled manner.

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