AILGLOGRJun 28, 2022

Learning Symmetric Rules with SATNet

arXiv:2206.13998v25 citationsh-index: 44
Originality Incremental advance
AI Analysis

This work addresses the challenge of learning logical rules more efficiently for AI systems that integrate deep learning and reasoning, though it is incremental as it builds on SATNet.

The paper tackles the problem of improving SATNet's learning efficiency by exploiting symmetries in target logical rules, resulting in SymSATNet which dramatically reduces parameters and shows substantial improvement over SATNet in experiments with Sudoku and Rubik's cube.

SATNet is a differentiable constraint solver with a custom backpropagation algorithm, which can be used as a layer in a deep-learning system. It is a promising proposal for bridging deep learning and logical reasoning. In fact, SATNet has been successfully applied to learn, among others, the rules of a complex logical puzzle, such as Sudoku, just from input and output pairs where inputs are given as images. In this paper, we show how to improve the learning of SATNet by exploiting symmetries in the target rules of a given but unknown logical puzzle or more generally a logical formula. We present SymSATNet, a variant of SATNet that translates the given symmetries of the target rules to a condition on the parameters of SATNet and requires that the parameters should have a particular parametric form that guarantees the condition. The requirement dramatically reduces the number of parameters to learn for the rules with enough symmetries, and makes the parameter learning of SymSATNet much easier than that of SATNet. We also describe a technique for automatically discovering symmetries of the target rules from examples. Our experiments with Sudoku and Rubik's cube show the substantial improvement of SymSATNet over the baseline SATNet.

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