Generating molecules, both in a directed and undirected fashion, is a huge part of the drug discovery pipeline. Genetic algorithms (GAs) generate molecules by randomly modifying known molecules. In this paper we show that GAs are very strong algorithms for such tasks, outperforming many complicated machine learning methods: a result which many researchers may find surprising. We therefore propose insisting during peer review that new algorithms must have some clear advantage over GAs, which we call the GA criterion. Ultimately our work suggests that a lot of research in molecule generation should be re-assessed.Comment: Currently under review. Code will be made available at a later dat
Learning ensembles by bagging can substantially improve the generalization performance of low-bias, ...
Machine learning (ML) and Artificial Intelligence (AI) have had a renaissance during the last few ye...
A genetic algorithm (GA) is a meta-heuristic computation method that is inspired by Darwin's theory ...
Nigam et al. reported a genetic algorithm (GA) utilizing the SELFIES representation and also propose...
In this account, we discuss the use of genetic algorithms in the inverse design process of homogeneo...
The majority of current genetic algorithms (GAs), while inspired by natural evolutionary systems, ar...
Challenges in natural sciences can often be phrased as optimization problems. Machine learning techn...
Genetic algorithms (GAs) - search procedures based on the mechanics of natural selection and genetic...
AbstractBackground: The Darwinian concept of ‘survival of the fittest’ has inspired the development ...
Genetic algorithms (GAs) are a problem solving stra tegy that uses stochastic search. Since their ...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/46947/1/10994_2005_Article_422926.pd
Genetic algorithms (GAs) are stochastic search algorithms inspired by the basic principles of biolog...
Genetic algorithms provide an alternative to traditional optimization techniques by using directed r...
Living organisms are consummate problem solvers. They exhibit a versatility that puts the best compu...
Learning ensembles by bagging can substantially improve the generalization performance of low-bias, ...
Machine learning (ML) and Artificial Intelligence (AI) have had a renaissance during the last few ye...
A genetic algorithm (GA) is a meta-heuristic computation method that is inspired by Darwin's theory ...
Nigam et al. reported a genetic algorithm (GA) utilizing the SELFIES representation and also propose...
In this account, we discuss the use of genetic algorithms in the inverse design process of homogeneo...
The majority of current genetic algorithms (GAs), while inspired by natural evolutionary systems, ar...
Challenges in natural sciences can often be phrased as optimization problems. Machine learning techn...
Genetic algorithms (GAs) - search procedures based on the mechanics of natural selection and genetic...
AbstractBackground: The Darwinian concept of ‘survival of the fittest’ has inspired the development ...
Genetic algorithms (GAs) are a problem solving stra tegy that uses stochastic search. Since their ...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/46947/1/10994_2005_Article_422926.pd
Genetic algorithms (GAs) are stochastic search algorithms inspired by the basic principles of biolog...
Genetic algorithms provide an alternative to traditional optimization techniques by using directed r...
Living organisms are consummate problem solvers. They exhibit a versatility that puts the best compu...
Learning ensembles by bagging can substantially improve the generalization performance of low-bias, ...
Machine learning (ML) and Artificial Intelligence (AI) have had a renaissance during the last few ye...
A genetic algorithm (GA) is a meta-heuristic computation method that is inspired by Darwin's theory ...