ViSymRe: Vision Multimodal Symbolic Regression
Da Li, Junping Yin, Jin Xu, Xinxin Li, Juan Zhang

TL;DR
ViSymRe introduces a novel vision-based symbolic regression framework that leverages visual modalities and a multi-view random slicing technique to improve convergence and performance in high-dimensional datasets.
Contribution
The paper presents ViSymRe, a new vision multimodal approach with MVRS and a dual-vision pipeline, enhancing Transformer-based symbolic regression's efficiency and accuracy.
Findings
Visual modality improves model convergence and metrics.
MVRS enables low-cost training in high-dimensional scenarios.
ViSymRe performs competitively on benchmark datasets.
Abstract
Extracting interpretable equations from observational datasets to describe complex natural phenomena is one of the core goals of artificial intelligence. This field is known as symbolic regression (SR). In recent years, Transformer-based paradigms have become a new trend in SR, addressing the well-known problem of inefficient search. However, the modal heterogeneity between datasets and equations often hinders the convergence and generalization of these models. In this paper, we propose ViSymRe, a Vision Symbolic Regression framework, to explore the positive role of visual modality in enhancing the performance of Transformer-based SR paradigms. To overcome the challenge where the visual SR model is untrainable in high-dimensional scenarios, we present Multi-View Random Slicing (MVRS). By projecting multivariate equations into 2-D space using random affine transformations, MVRS avoids…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Image Retrieval and Classification Techniques
MethodsSoftmax · Attention Is All You Need
