Induction of Non-monotonic Logic Programs To Explain Statistical Learning Models
We present a fast and scalable algorithm to induce non-monotonic logic programs from statistical learning models. We reduce the problem of search for best clauses to instances of the High-Utility Itemset Mining (HUIM) problem. In the HUIM problem, feature values and their importance are treated as t...
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| Vydané v: | Electronic proceedings in theoretical computer science Ročník 306; číslo Proc. ICLP 2019; s. 379 - 388 |
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| Hlavný autor: | |
| Médium: | Journal Article |
| Jazyk: | English |
| Vydavateľské údaje: |
Open Publishing Association
19.09.2019
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| ISSN: | 2075-2180, 2075-2180 |
| On-line prístup: | Získať plný text |
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| Shrnutí: | We present a fast and scalable algorithm to induce non-monotonic logic programs from statistical learning models. We reduce the problem of search for best clauses to instances of the High-Utility Itemset Mining (HUIM) problem. In the HUIM problem, feature values and their importance are treated as transactions and utilities respectively. We make use of TreeExplainer, a fast and scalable implementation of the Explainable AI tool SHAP, to extract locally important features and their weights from ensemble tree models. Our experiments with UCI standard benchmarks suggest a significant improvement in terms of classification evaluation metrics and running time of the training algorithm compared to ALEPH, a state-of-the-art Inductive Logic Programming (ILP) system. |
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| ISSN: | 2075-2180 2075-2180 |
| DOI: | 10.4204/EPTCS.306.51 |