Molecular pretraining, which learns molecular representations over massive unlabeled data, has become a prominent paradigm to solve a variety of tasks in computational chemistry and drug discovery. Recently, prosperous progress has been made in molecular pretraining with different molecular featurizations, including 1D SMILES strings, 2D graphs, and 3D geometries. However, the role of molecular featurizations with their corresponding neural architectures in molecular pretraining remains largely unexamined. In this paper, through two case studieschirality classification and aromatic ring countingwe first demonstrate that different featurization techniques convey chemical information differently. In light of this observation, we propose a sim...
Procuring expressive molecular representations underpins AI-driven molecule design and scientific di...
Extracting informative representations of molecules using Graph neural networks (GNNs) is crucial in...
Research in chemistry increasingly requires interdisciplinary work prompted by, among other things, ...
Molecular pretraining, which learns molecular representations over massive unlabeled data, has becom...
The prediction of molecular properties is a crucial aspect in drug discovery that can save a lot of ...
Machine learning as a tool for chemical space exploration broadens horizons to work with known and u...
Deep learning has been a prevalence in computational chemistry and widely implemented in molecule pr...
Models based on machine learning can enable accurate and fast molecular property predictions, which ...
Molecular representation learning has attracted much attention recently. A molecule can be viewed as...
Pretraining foundation models that adapt to a wide range of molecule tasks have been long pursued by...
Molecular graph representation learning is a fundamental problem in modern drug and material discove...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
<p></p><p>There has been a recent surge of interest in using machine learning across chemical space ...
A key component of automated molecular design is the generation of compound ideas for subsequent fil...
Molecular property prediction is one of the fastest-growing applications of deep learning with criti...
Procuring expressive molecular representations underpins AI-driven molecule design and scientific di...
Extracting informative representations of molecules using Graph neural networks (GNNs) is crucial in...
Research in chemistry increasingly requires interdisciplinary work prompted by, among other things, ...
Molecular pretraining, which learns molecular representations over massive unlabeled data, has becom...
The prediction of molecular properties is a crucial aspect in drug discovery that can save a lot of ...
Machine learning as a tool for chemical space exploration broadens horizons to work with known and u...
Deep learning has been a prevalence in computational chemistry and widely implemented in molecule pr...
Models based on machine learning can enable accurate and fast molecular property predictions, which ...
Molecular representation learning has attracted much attention recently. A molecule can be viewed as...
Pretraining foundation models that adapt to a wide range of molecule tasks have been long pursued by...
Molecular graph representation learning is a fundamental problem in modern drug and material discove...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
<p></p><p>There has been a recent surge of interest in using machine learning across chemical space ...
A key component of automated molecular design is the generation of compound ideas for subsequent fil...
Molecular property prediction is one of the fastest-growing applications of deep learning with criti...
Procuring expressive molecular representations underpins AI-driven molecule design and scientific di...
Extracting informative representations of molecules using Graph neural networks (GNNs) is crucial in...
Research in chemistry increasingly requires interdisciplinary work prompted by, among other things, ...