Counterfactual Explanations Using Optimization With Constraint Learning

Open Access
Authors
Publication date 12-2022
Book title OPT2022
Book subtitle Optimization for Machine Learning. Accepted papers
Event 14th International Workshop on Optimization for Machine Learning
Number of pages 19
Publisher OPT-ML
Organisations
  • Faculty of Economics and Business (FEB) - Amsterdam Business School Research Institute (ABS-RI)
Abstract
To increase the adoption of counterfactual explanations in practice, several criteria that these should adhere to have been put forward in the literature. We propose counterfactual explanations using optimization with constraint learning (CE-OCL), a generic and flexible approach that addresses all these criteria and allows room for further extensions. Specifically, we discuss how we can leverage an optimization with constraint learning framework for the generation of counterfactual explanations, and how components of this framework readily map to the criteria. We also propose two novel modeling approaches to address data manifold closeness and diversity, which are two key criteria for practical counterfactual explanations. We test CE-OCL on several datasets and present our results in a case study. Compared against the current state-of-the-art methods, CE-OCL allows for more flexibility and has an overall superior performance in terms of several evaluation metrics proposed in related work.
Document type Conference contribution
Language English
Published at https://doi.org/10.48550/arXiv.2209.10997
Published at https://opt-ml.org/oldopt/papers/2022/paper30.pdf
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paper30 (Final published version)
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