Poster
in
Workshop: Socially Responsible Machine Learning
Towards learning to explain with concept bottleneck models: mitigating information leakage
Joshua Lockhart · Nicolas Marchesotti · Daniele Magazzeni · Manuela Veloso
Abstract:
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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