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arxiv: 2211.03656 · v1 · pith:E6UTZ64Lnew · submitted 2022-11-07 · 💻 cs.LG · cs.CR

Towards learning to explain with concept bottleneck models: mitigating information leakage

classification 💻 cs.LG cs.CR
keywords conceptinformationbottleneckconceptslabelsmodelmodelspredicted
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Concept bottleneck models perform classification by first predicting which of a list of human provided concepts are true about a datapoint. Then a downstream model uses these predicted concept labels to predict the target label. The predicted concepts act as a rationale for the target prediction. Model trust issues emerge in this paradigm when soft concept labels are used: it has previously been observed that extra information about the data distribution leaks into the concept predictions. In this work we show how Monte-Carlo Dropout can be used to attain soft concept predictions that do not contain leaked information.

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  1. If Concept Bottlenecks are the Question, are Foundation Models the Answer?

    cs.LG 2025-04 unverdicted novelty 5.0

    Empirical tests of VLM-CBMs show VLM supervision differs from expert annotations depending on task and that concept accuracy correlates weakly with quality metrics.