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UniSymNet: A Unified Symbolic Network Guided by Transformer

UniSymNet: A Unified Symbolic Network Guided by Transformer

来源:Arxiv_logoArxiv
英文摘要

Symbolic Regression (SR) is a powerful technique for automatically discovering mathematical expressions from input data. Mainstream SR algorithms search for the optimal symbolic tree in a vast function space, but the increasing complexity of the tree structure limits their performance. Inspired by neural networks, symbolic networks have emerged as a promising new paradigm. However, most existing symbolic networks still face certain challenges: binary nonlinear operators $\{\times, \div\}$ cannot be naturally extended to multivariate operators, and training with fixed architecture often leads to higher complexity and overfitting. In this work, we propose a Unified Symbolic Network that unifies nonlinear binary operators into nested unary operators and define the conditions under which UniSymNet can reduce complexity. Moreover, we pre-train a Transformer model with a novel label encoding method to guide structural selection, and adopt objective-specific optimization strategies to learn the parameters of the symbolic network. UniSymNet shows high fitting accuracy, excellent symbolic solution rate, and relatively low expression complexity, achieving competitive performance on low-dimensional Standard Benchmarks and high-dimensional SRBench.

Xinxin Li、Juan Zhang、Da Li、Xingyu Liu、Jin Xu、Junping Yin

计算技术、计算机技术

Xinxin Li,Juan Zhang,Da Li,Xingyu Liu,Jin Xu,Junping Yin.UniSymNet: A Unified Symbolic Network Guided by Transformer[EB/OL].(2025-05-09)[2025-07-09].https://arxiv.org/abs/2505.06091.点此复制

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