A copy of this work was available on the public web and has been preserved in the Wayback Machine. The capture dates from 2022; you can also visit the original URL.
The file type is application/pdf
.
Learning First-Order Rules with Differentiable Logic Program Semantics
2022
Proceedings of the Thirty-First International Joint Conference on Artificial Intelligence
unpublished
Learning first-order logic programs (LPs) from relational facts which yields intuitive insights into the data is a challenging topic in neuro-symbolic research. We introduce a novel differentiable inductive logic programming (ILP) model, called differentiable first-order rule learner (DFOL), which finds the correct LPs from relational facts by searching for the interpretable matrix representations of LPs. These interpretable matrices are deemed as trainable tensors in neural networks (NNs). The
doi:10.24963/ijcai.2022/414
fatcat:k7lj7eh7qbfcxa5arrsnlf55a4