This journal is © The Royal Society of Chemistry. Machine learning (ML) models, such as artificial neural networks, have emerged as a complement to high-throughput screening, enabling characterization of new compounds in seconds instead of hours. The promise of ML models to enable large-scale chemical space exploration can only be realized if it is straightforward to identify when molecules and materials are outside the model's domain of applicability. Established uncertainty metrics for neural network models are either costly to obtain (e.g., ensemble models) or rely on feature engineering (e.g., feature space distances), and each has limitations in estimating prediction errors for chemical space exploration. We introduce the distance to a...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
While neural networks achieve state-of-the-art performance for many molecular modeling and structure...
Predicting bioactivity and physical properties of small molecules is a central challenge in drug dis...
Machine learning (ML) models, such as artificial neural networks, have emerged as a complement to hi...
© 2020 American Chemical Society. Advances in deep neural network (DNN)-based molecular property pre...
Abstract With the increasingly more important role of machine learning (ML) models in chemical resea...
Uncertainty quantification (UQ) is an important component of molecular property prediction, particul...
High-throughput computational screening for chemical discovery mandates the automated and unsupervis...
Advances in deep neural network (DNN) based molecular property prediction have recently led to the d...
We present a scheme to obtain an inexpensive and reliable estimate of the uncertainty associated wit...
High-throughput computational screening for chemical discovery mandates the automated and unsupervis...
The performance of a model is dependent on the quality and information content of the data used to b...
Discovering chemicals with desired attributes is a long and painstaking process. Curated datasets co...
We try to determine if machine learning (ML) methods, applied to the discovery of new materials on t...
Deep neural networks (DNNs) are the major drivers of recent progress in artificial intelligence. The...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
While neural networks achieve state-of-the-art performance for many molecular modeling and structure...
Predicting bioactivity and physical properties of small molecules is a central challenge in drug dis...
Machine learning (ML) models, such as artificial neural networks, have emerged as a complement to hi...
© 2020 American Chemical Society. Advances in deep neural network (DNN)-based molecular property pre...
Abstract With the increasingly more important role of machine learning (ML) models in chemical resea...
Uncertainty quantification (UQ) is an important component of molecular property prediction, particul...
High-throughput computational screening for chemical discovery mandates the automated and unsupervis...
Advances in deep neural network (DNN) based molecular property prediction have recently led to the d...
We present a scheme to obtain an inexpensive and reliable estimate of the uncertainty associated wit...
High-throughput computational screening for chemical discovery mandates the automated and unsupervis...
The performance of a model is dependent on the quality and information content of the data used to b...
Discovering chemicals with desired attributes is a long and painstaking process. Curated datasets co...
We try to determine if machine learning (ML) methods, applied to the discovery of new materials on t...
Deep neural networks (DNNs) are the major drivers of recent progress in artificial intelligence. The...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
While neural networks achieve state-of-the-art performance for many molecular modeling and structure...
Predicting bioactivity and physical properties of small molecules is a central challenge in drug dis...