Madhav Muthyala, Farshud Sorourifar, Joel A. Paulson
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引用次数: 0
摘要
符号回归(SR)是一种强大的机器学习方法,它搜索代数模型的结构和参数,提供复杂数据的可解释和紧凑表示。与传统的回归方法不同,SR探索逐渐复杂的特征空间,这可以发现简单的模型,即使从小数据集也可以很好地推广。在SR算法中,Sure Independence Screening and Sparsifying Operator (SISSO)在自然科学中被证明是特别有效的,它有助于重新发现基本的物理定律,并为材料属性建模发现新的可解释方程。然而,它的广泛采用受到性能低下和基于fortran的实现所带来的挑战的限制,特别是在现代计算环境中。在这项工作中,我们介绍了TorchSISSO,一个内置在PyTorch框架中的原生Python实现。TorchSISSO利用GPU加速,易于集成和可扩展性,提供显着的加速和提高的准确性。我们证明了TorchSISSO在一系列任务中匹配或超过原始SISSO的性能,同时显着减少了计算时间并提高了更广泛的科学应用的可访问性。
TorchSISSO: A PyTorch-based implementation of the sure independence screening and sparsifying operator for efficient and interpretable model discovery
Symbolic regression (SR) is a powerful machine learning approach that searches for both the structure and parameters of algebraic models, offering interpretable and compact representations of complex data. Unlike traditional regression methods, SR explores progressively complex feature spaces, which can uncover simple models that generalize well, even from small datasets. Among SR algorithms, the Sure Independence Screening and Sparsifying Operator (SISSO) has proven particularly effective in the natural sciences, helping to rediscover fundamental physical laws as well as discover new interpretable equations for materials property modeling. However, its widespread adoption has been limited by performance inefficiencies and the challenges posed by its FORTRAN-based implementation, especially in modern computing environments. In this work, we introduce TorchSISSO, a native Python implementation built in the PyTorch framework. TorchSISSO leverages GPU acceleration, easy integration, and extensibility, offering a significant speed-up and improved accuracy over the original. We demonstrate that TorchSISSO matches or exceeds the performance of the original SISSO across a range of tasks, while dramatically reducing computational time and improving accessibility for broader scientific applications.