LGAIJan 25, 2024

PruneSymNet: A Symbolic Neural Network and Pruning Algorithm for Symbolic Regression

arXiv:2401.15103v15 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of deriving interpretable symbolic expressions from data for knowledge discovery and interpretable machine learning, representing an incremental improvement.

The authors tackled symbolic regression by proposing PruneSymNet, a differentiable symbolic neural network with a greedy pruning algorithm enhanced by beam search, which achieved better accuracy compared to current popular algorithms on a public dataset.

Symbolic regression aims to derive interpretable symbolic expressions from data in order to better understand and interpret data. %which plays an important role in knowledge discovery and interpretable machine learning. In this study, a symbolic network called PruneSymNet is proposed for symbolic regression. This is a novel neural network whose activation function consists of common elementary functions and operators. The whole network is differentiable and can be trained by gradient descent method. Each subnetwork in the network corresponds to an expression, and our goal is to extract such subnetworks to get the desired symbolic expression. Therefore, a greedy pruning algorithm is proposed to prune the network into a subnetwork while ensuring the accuracy of data fitting. The proposed greedy pruning algorithm preserves the edge with the least loss in each pruning, but greedy algorithm often can not get the optimal solution. In order to alleviate this problem, we combine beam search during pruning to obtain multiple candidate expressions each time, and finally select the expression with the smallest loss as the final result. It was tested on the public data set and compared with the current popular algorithms. The results showed that the proposed algorithm had better accuracy.

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