Machine learning (ML) from materials data-bases can accelerate the design and discovery of new materials through the development of accurate, computationally inexpensive models to predict materials properties. These models in turn enable rapid screening of large materials search space. However, materials datasets describing functional properties are typically small, which creates challenges pertaining to interpretability and transferability when exploring them with conventional ML approaches. Further, correlations within the dataset can lead to instability (nonunique functional models relating inputs to outputs) and overfitting. In this work, we address these issues by developing a new approach, in which ML with the Bootstrapped projected g...
A new data-driven computational framework is developed to assist in the design and modeling of new m...
Material discovery holds the key to technological advancement as materials’ properties dictate the...
In material science, experiments and high-throughput models often consume a large amount of calendar...
Machine learning (ML) from materials data-bases can accelerate the design and discovery of new mater...
Machine learning (ML) from materials databases can accelerate the design and discovery of new materi...
Although machine learning (ML) models promise to substantially accelerate the discovery of novel ma...
Although machine learning (ML) models promise to substantially accelerate the discovery of novel mat...
In the past few decades, the first principles modeling algorithms, especially density functional the...
Materials modeling is revolutionizing materials discovery paradigms through rationalizing the explor...
Materials scientists increasingly employ machine or statistical learning (SL) techniques to accelera...
Machine learning is quickly becoming an important tool in modern materials design. Where many of its...
We present a benchmark test suite and an automated machine learning procedure for evaluating supervi...
Atomic-scale modeling and understanding of materials have made remarkable progress, but they are sti...
Abstract Machine learning models of material properties accelerate materials discovery, reproducing ...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
A new data-driven computational framework is developed to assist in the design and modeling of new m...
Material discovery holds the key to technological advancement as materials’ properties dictate the...
In material science, experiments and high-throughput models often consume a large amount of calendar...
Machine learning (ML) from materials data-bases can accelerate the design and discovery of new mater...
Machine learning (ML) from materials databases can accelerate the design and discovery of new materi...
Although machine learning (ML) models promise to substantially accelerate the discovery of novel ma...
Although machine learning (ML) models promise to substantially accelerate the discovery of novel mat...
In the past few decades, the first principles modeling algorithms, especially density functional the...
Materials modeling is revolutionizing materials discovery paradigms through rationalizing the explor...
Materials scientists increasingly employ machine or statistical learning (SL) techniques to accelera...
Machine learning is quickly becoming an important tool in modern materials design. Where many of its...
We present a benchmark test suite and an automated machine learning procedure for evaluating supervi...
Atomic-scale modeling and understanding of materials have made remarkable progress, but they are sti...
Abstract Machine learning models of material properties accelerate materials discovery, reproducing ...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
A new data-driven computational framework is developed to assist in the design and modeling of new m...
Material discovery holds the key to technological advancement as materials’ properties dictate the...
In material science, experiments and high-throughput models often consume a large amount of calendar...