Induction of Interpretable Possibilistic Logic Theories from Relational Data

May 19, 2017 Β· Declared Dead Β· πŸ› International Joint Conference on Artificial Intelligence

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Authors Ondrej Kuzelka, Jesse Davis, Steven Schockaert arXiv ID 1705.07095 Category cs.AI: Artificial Intelligence Citations 15 Venue International Joint Conference on Artificial Intelligence Last Checked 3 months ago
Abstract
The field of Statistical Relational Learning (SRL) is concerned with learning probabilistic models from relational data. Learned SRL models are typically represented using some kind of weighted logical formulas, which make them considerably more interpretable than those obtained by e.g. neural networks. In practice, however, these models are often still difficult to interpret correctly, as they can contain many formulas that interact in non-trivial ways and weights do not always have an intuitive meaning. To address this, we propose a new SRL method which uses possibilistic logic to encode relational models. Learned models are then essentially stratified classical theories, which explicitly encode what can be derived with a given level of certainty. Compared to Markov Logic Networks (MLNs), our method is faster and produces considerably more interpretable models.
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