AI RESEARCH
Explaining Neural Networks in Preference Learning: a Post-hoc Inductive Logic Programming Approach
arXiv CS.LG
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ArXi:2604.06838v1 Announce Type: cross In this paper, we propose using Learning from Answer Sets to approximate black-box models, such as Neural Networks (NN), in the specific case of learning user preferences. We specifically explore the use of ILASP (Inductive Learning of Answer Set Programs) to approximate preference learning systems through weak constraints. We have created a dataset on user preferences over a set of recipes, which is used to train the NNs that we aim to approximate with ILASP. Our experiments investigate ILASP both as a global and a local approximator of the NNs.