Materials scientists increasingly employ machine or statistical learning (SL) techniques to accelerate materials discovery and design. Such pursuits benefit from pooling training data across, and thus being able to generalize predictions over, k-nary compounds of diverse chemistries and structures. This work presents a SL framework that addresses challenges in materials science applications, where datasets are diverse but of modest size, and extreme values are often of interest. Our advances include the application of power or Hölder means to construct descriptors that generalize over chemistry and crystal structure, and the incorporation of multivariate local regression within a gradient boosting framework. The approach is demonstrated by ...
Ultrahard materials are an essential component in a wide range of industrial applications. In this w...
In the past few decades, the first principles modeling algorithms, especially density functional the...
Materials informatics uses data-driven approaches for the study and discovery of materials. Feature...
Materials scientists increasingly employ machine or statistical learning (SL) techniques to accelera...
In material science, experiments and high-throughput models often consume a large amount of calendar...
Abstract: Important physical properties such as yield strength, elastic modulus, and thermal conduct...
We present a benchmark test suite and an automated machine learning procedure for evaluating supervi...
Data driven approaches based on machine learning (ML) algorithms are very popular in the domain of p...
Machine learning (ML) from materials data-bases can accelerate the design and discovery of new mater...
A set of universal descriptors which combines atomic properties with crystal fingerprint are present...
Abstract We identify compositionally complex alloys (CCAs) that offer exceptional mechanical propert...
Abstract The search for new superhard materials is of great interest for extreme industrial applicat...
We combined descriptor-based analytical models for stiffness-matrix and elastic-moduli with mean-fie...
We apply machine learning algorithms to optimize thermodynamic and elastic properties of multicompon...
In the pursuit of materials with exceptional mechanical properties, a machine-learning model is deve...
Ultrahard materials are an essential component in a wide range of industrial applications. In this w...
In the past few decades, the first principles modeling algorithms, especially density functional the...
Materials informatics uses data-driven approaches for the study and discovery of materials. Feature...
Materials scientists increasingly employ machine or statistical learning (SL) techniques to accelera...
In material science, experiments and high-throughput models often consume a large amount of calendar...
Abstract: Important physical properties such as yield strength, elastic modulus, and thermal conduct...
We present a benchmark test suite and an automated machine learning procedure for evaluating supervi...
Data driven approaches based on machine learning (ML) algorithms are very popular in the domain of p...
Machine learning (ML) from materials data-bases can accelerate the design and discovery of new mater...
A set of universal descriptors which combines atomic properties with crystal fingerprint are present...
Abstract We identify compositionally complex alloys (CCAs) that offer exceptional mechanical propert...
Abstract The search for new superhard materials is of great interest for extreme industrial applicat...
We combined descriptor-based analytical models for stiffness-matrix and elastic-moduli with mean-fie...
We apply machine learning algorithms to optimize thermodynamic and elastic properties of multicompon...
In the pursuit of materials with exceptional mechanical properties, a machine-learning model is deve...
Ultrahard materials are an essential component in a wide range of industrial applications. In this w...
In the past few decades, the first principles modeling algorithms, especially density functional the...
Materials informatics uses data-driven approaches for the study and discovery of materials. Feature...