AISep 24, 2024

LTNtorch: PyTorch Implementation of Logic Tensor Networks

arXiv:2409.16045v115 citationsh-index: 5
AI Analysis

This provides a tool for researchers and practitioners in AI to combine symbolic reasoning with neural networks, though it is incremental as it implements an existing framework.

The paper introduces LTNtorch, a PyTorch implementation of Logic Tensor Networks (LTN), a neuro-symbolic framework that integrates deep learning with logical reasoning by optimizing neural models through a loss function based on logical formulas, enabling gradient-descent learning via fuzzy logic.

Logic Tensor Networks (LTN) is a Neuro-Symbolic framework that effectively incorporates deep learning and logical reasoning. In particular, LTN allows defining a logical knowledge base and using it as the objective of a neural model. This makes learning by logical reasoning possible as the parameters of the model are optimized by minimizing a loss function composed of a set of logical formulas expressing facts about the learning task. The framework learns via gradient-descent optimization. Fuzzy logic, a relaxation of classical logic permitting continuous truth values in the interval [0,1], makes this learning possible. Specifically, the training of an LTN consists of three steps. Firstly, (1) the training data is used to ground the formulas. Then, (2) the formulas are evaluated, and the loss function is computed. Lastly, (3) the gradients are back-propagated through the logical computational graph, and the weights of the neural model are changed so the knowledge base is maximally satisfied. LTNtorch is the fully documented and tested PyTorch implementation of Logic Tensor Networks. This paper presents the formalization of LTN and how LTNtorch implements it. Moreover, it provides a basic binary classification example.

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