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Learning Reasoning Strategies in End-to-End Differentiable Proving

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Attempts to render deep learning models interpretable, data-efficient, and robust have seen some success through hybridisation with rule-based systems, for example, in Neural Theorem Provers (NTPs). These neuro-symbolic models can induce interpretable rules and learn representations from data via back-propagation, while providing logical explanations for their predictions. However, they are restricted by their computational complexity, as they need to consider all possible proof paths for explaining a goal, thus rendering them unfit for large-scale applications. We present Conditional Theorem Provers (CTPs), an extension to NTPs that learns an optimal rule selection strategy via gradient-based optimisation. We show that CTPs are scalable and yield state-of-the-art results on the CLUTRR dataset, which tests systematic generalisation of neural models by learning to reason over smaller graphs and evaluating on larger ones. Finally, CTPs show better link prediction results on standard benchmarks in comparison with other neural-symbolic models, while being explainable. All source code and datasets are available online, at https://github.com/uclnlp/ctp.

Pasquale Minervini, Sebastian Riedel, Pontus Stenetorp, Edward Grefenstette, Tim Rockt\"aschel• 2020

Related benchmarks

TaskDatasetResultRank
Link PredictionUMLS
Hits@1098.4
56
Link PredictionKinship
MRR0.764
36
Link PredictionCountries S1
AUC-PR1
18
Link PredictionCountries S3
AUC-PR0.9478
18
Link PredictionCountries S2
AUC-PR91.81
18
Link PredictionNations
MRR0.709
6
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