Interpretable machine learning Optimization-based explanations and human-centered evaluation

Open Access
Authors
Supervisors
Cosupervisors
Award date 06-03-2026
ISBN
  • 9789465371559
Number of pages 222
Organisations
  • Faculty of Economics and Business (FEB) - Amsterdam Business School Research Institute (ABS-RI)
  • Faculty of Economics and Business (FEB)
Abstract
This thesis investigates interpretability of machine learning models from a holistic standpoint by combining optimization-based XAI methods with evaluation grounded in user studies. We propose optimization-based methods to generate rule sets for binary and multi-class classification as well as to generate (robust) counterfactual explanations for common machine learning models. In addition, we discuss the implications of XAI in practical settings like healthcare and conduct user studies with potential end users and domain experts. In doing so, we approach the field of interpretable machine learning from a distinctive angle and incorporate insights from the social sciences in research and development of XAI methods.
Document type PhD thesis
Language English
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