Machine learning has brought great convenience to material property prediction. However, most existing models can only predict properties of molecules or crystals with specific size, and usually only local atomic environment or molecular global descriptor representation be used as the characteristics of the model, resulting in poor model versatility and cannot be applied to multiple systems. We propose a method that combines the description of the local atomic environment and the overall structure of the molecule, a fusion model consisting of a graph convolutional neural network and a fully connected neural network is used to predict the properties of molecules or crystals, and successfully applied to QM9 organic molecules and semiconductor...
Data driven approaches based on machine learning (ML) algorithms are very popular in the domain of p...
We present a benchmark test suite and an automated machine learning procedure for evaluating supervi...
Predicting material properties base on micro structure of materials has long been a challenging prob...
Materials science is of fundamental significance to science and technology because our industrial ba...
Abstract Accurate theoretical predictions of desired properties of materials play an important role ...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...
In recent years, a development of appropriate crystal representations for accurate prediction of ino...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
In recent years, graph neural network (GNN) based approaches have emerged as a powerful technique to...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
Machine Learning (ML) techniques are revolutionizing the way to perform efficient materials modeling...
In molecular quantum mechanics, mappings between molecular structures and their corresponding physic...
Predicting molecular properties (e.g., atomization energy) is an essential issue in quantum chemistr...
Data driven approaches based on machine learning (ML) algorithms are very popular in the domain of p...
Data driven approaches based on machine learning (ML) algorithms are very popular in the domain of p...
We present a benchmark test suite and an automated machine learning procedure for evaluating supervi...
Predicting material properties base on micro structure of materials has long been a challenging prob...
Materials science is of fundamental significance to science and technology because our industrial ba...
Abstract Accurate theoretical predictions of desired properties of materials play an important role ...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...
In recent years, a development of appropriate crystal representations for accurate prediction of ino...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
In recent years, graph neural network (GNN) based approaches have emerged as a powerful technique to...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
Work Abstract: In recent years, numerous studies have employed machine learning (ML) techniques to ...
Machine Learning (ML) techniques are revolutionizing the way to perform efficient materials modeling...
In molecular quantum mechanics, mappings between molecular structures and their corresponding physic...
Predicting molecular properties (e.g., atomization energy) is an essential issue in quantum chemistr...
Data driven approaches based on machine learning (ML) algorithms are very popular in the domain of p...
Data driven approaches based on machine learning (ML) algorithms are very popular in the domain of p...
We present a benchmark test suite and an automated machine learning procedure for evaluating supervi...
Predicting material properties base on micro structure of materials has long been a challenging prob...