Research Article | Open Access

Material intelligent visualization design via two-dimensional symbolic feature generation

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J Mater Inf 2026;6:[Accepted].
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Abstract

Machine learning for complex materials problems suffers from high-dimensionality data, while traditional “black-box” dimensionality reduction techniques typically lack the capability to balance predictive accuracy with visualization and interpretability. This work presents a novel method named Two-Dimensional Symbolic Feature Generation, based on symbolic regression and genetic algorithms. This approach facilitates machine learning by providing quantifiable interpretability and enabling visualization-driven materials design. Evaluated across diverse classification and regression tasks in materials science, the proposed method demonstrates notable success in three critical aspects: First, it significantly improved the predictive accuracy. Specifically, classification accuracy for ferroelectric perovskites and high-entropy alloy phases improved from 85.6% and 84.5% to 94.2% and 88.4%, respectively. Correspondingly, prediction errors for shape memory alloys and copper alloys were reduced from 2.9 K, 5.9% and 9.7% to 1.1 K, 3.7% and 6.2%. Second, the method ensures interpretability by constructing explicit mathematical expressions that transform the original high-dimensional features into two new symbolic ones, avoiding opaque spatial transformations. Third, it enables model visualization through two-dimensional contour maps that relate the constructed features to the target property, thereby offering intuitive insight into feature-property relationships. Leveraging these “design roadmaps,” a refractory high-entropy alloy with a single-phase solid solution and a precipitation-strengthened copper alloy with an optimized property trade-off were successfully designed. The two-dimensional symbolic feature generation framework thus addresses key limitations in accuracy, interpretability, and visualization within materials informatics, establishing a new paradigm for transparent and visual materials design.

Keywords

Machine learning, feature construction, interpretability, materials visualization design

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Yong W, Zhang H, Li Z, He J, Chen C, Gao Y, Fu H, Xie J. Material intelligent visualization design via two-dimensional symbolic feature generation. J Mater Inf 2026;6:[Accept]. http://dx.doi.org/10.20517/jmi.2026.02

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© The Author(s) 2026. Open Access This article is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, sharing, adaptation, distribution and reproduction in any medium or format, for any purpose, even commercially, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.
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Journal of Materials Informatics
ISSN 2770-372X (Online)
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