Abstract Accurate theoretical predictions of desired properties of materials play an important role in materials research and development. Machine learning (ML) can accelerate the materials design by building a model from input data. For complex datasets, such as those of crystalline compounds, a vital issue is how to construct low-dimensional representations for input crystal structures with chemical insights. In this work, we introduce an algebraic topology-based method, called atom-specific persistent homology (ASPH), as a unique representation of crystal structures. The ASPH can capture both pairwise and many-body interactions and reveal the topology-property relationship of a group of atoms at various scales. Combined with composition-...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...
Predicting crystal structure information is a challenging problem in materials science that clearly ...
The prediction of energetically stable crystal structures formed by a given chemical composition is ...
Machine Learning (ML) techniques are revolutionizing the way to perform efficient materials modeling...
Predicting crystal structure has always been a challenging problem for physical sciences. Recently, ...
Machine learning has brought great convenience to material property prediction. However, most existi...
The combination of modern machine learning (ML) approaches with high-quality data from quantum mecha...
The combination of modern machine learning (ML) approaches with high-quality data from quantum mecha...
Machine learning has emerged as a powerful approach in materials discovery. Its major challenge is s...
Molecular crystals cannot be designed like macroscopic objects because they do not assemble accordin...
Abstract: Machine learning has the potential to accelerate materials discovery by accurately predict...
To assist technology advancements, it is important to continue the search for new materials. The sta...
Topological materials are of significant interest for both basic science and next-generation technol...
To assist technology advancements, it is important to continue the search for new materials. The sta...
This thesis addresses one of the fundamental questions in materials crystal chemistry, namely why do...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...
Predicting crystal structure information is a challenging problem in materials science that clearly ...
The prediction of energetically stable crystal structures formed by a given chemical composition is ...
Machine Learning (ML) techniques are revolutionizing the way to perform efficient materials modeling...
Predicting crystal structure has always been a challenging problem for physical sciences. Recently, ...
Machine learning has brought great convenience to material property prediction. However, most existi...
The combination of modern machine learning (ML) approaches with high-quality data from quantum mecha...
The combination of modern machine learning (ML) approaches with high-quality data from quantum mecha...
Machine learning has emerged as a powerful approach in materials discovery. Its major challenge is s...
Molecular crystals cannot be designed like macroscopic objects because they do not assemble accordin...
Abstract: Machine learning has the potential to accelerate materials discovery by accurately predict...
To assist technology advancements, it is important to continue the search for new materials. The sta...
Topological materials are of significant interest for both basic science and next-generation technol...
To assist technology advancements, it is important to continue the search for new materials. The sta...
This thesis addresses one of the fundamental questions in materials crystal chemistry, namely why do...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...
Predicting crystal structure information is a challenging problem in materials science that clearly ...
The prediction of energetically stable crystal structures formed by a given chemical composition is ...