Integrating first-order logic constraints (FOLCs) with neural networks is a crucial but challenging problem since it involves modeling intricate correlations to satisfy the constraints. This paper proposes a novel neural layer, LogicMP, whose layers perform mean-field variational inference over an MLN. It can be plugged into any off-the-shelf neural network to encode FOLCs while retaining modularity and efficiency. By exploiting the structure and symmetries in MLNs, we theoretically demonstrate that our well-designed, efficient mean-field iterations effectively mitigate the difficulty of MLN inference, reducing the inference from sequential calculation to a series of parallel tensor operations. Empirical results in three kinds of tasks over graphs, images, and text show that LogicMP outperforms advanced competitors in both performance and efficiency.
LogicMP: A Neuro-symbolic Approach for Encoding First-order Logic Constraints
LogicMP is a neural layer that integrates first-order logic constraints into neural networks using mean-field variational inference over Markov Logic Networks, improving performance and efficiency across tasks.
- Year
- 2023
- Venue
- arXiv 2023
- Authors
- 10
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2309.15458v3ARXIV-DEFAULT
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