In the last decade, the use of Machine and Deep Learning (MDL) methods in Condensed Matter physics has seen a steep increase in the number of problems tackled and methods employed. A number of distinct MDL approaches have been employed in many different topics; from prediction of materials properties to computation of Density Functional Theory potentials and inter-atomic force fields. In many cases the result is a surrogate model which returns promising predictions but is opaque on the inner mechanisms of its success. On the other hand, the typical practitioner looks for answers that are explainable and provide a clear insight on the mechanisms governing a physical phenomena. In this work, we describe a proposal to use a sophisticated combination of traditional Machine Learning methods to obtain an explainable model that outputs an explicit functional formulation for the material property of interest. We demonstrate the effectiveness of our methodology in deriving a new highly accurate expression for the enthalpy of formation of solid solutions of lanthanides orthophosphates.
翻译:过去十年来,在浓缩物质物理学中使用机器和深层学习方法(MDL)的问题和所用方法急剧增加,处理的问题和所用方法急剧增加,许多不同的专题都采用了不同的MDL方法;从材料特性预测到计算密度功能理论潜力和原子间力量领域,在许多情况下,其结果是一种代用模型,这种模型返回了有希望的预测,但在其成功的内部机制上却不透明。另一方面,典型的执业者寻找可以解释的答案,并清楚地了解物理现象的规范机制。在这项工作中,我们描述了一项提案,即使用复杂的传统机器学习方法组合,以获得一个可以解释的模式,产生一种对重要物质特性的明确的功能性配方。我们展示了我们的方法的有效性,即为形成lanthanides或toho磷酸盐的可靠解决方案的enthpy产生一种新的非常准确的成分。</s>