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Advances and challenges in deep generative models for de novo molecule generation
Author(s) -
Xue Dongyu,
Gong Yukang,
Yang Zhaoyi,
Chuai Guohui,
Qu Sheng,
Shen Aizong,
Yu Jing,
Liu Qi
Publication year - 2018
Publication title -
wiley interdisciplinary reviews: computational molecular science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 5.126
H-Index - 81
eISSN - 1759-0884
pISSN - 1759-0876
DOI - 10.1002/wcms.1395
Subject(s) - generative grammar , deep learning , artificial intelligence , cheminformatics , computer science , discriminative model , generative model , machine learning , representation (politics) , bioinformatics , biology , politics , political science , law
The de novo molecule generation problem involves generating novel or modified molecular structures with desirable properties. Taking advantage of the great representation learning ability of deep learning models, deep generative models, which differ from discriminative models in their traditional machine learning approach, provide the possibility of generation of desirable molecules directly. Although deep generative models have been extensively discussed in the machine learning community, a specific investigation of the computational issues related to deep generative models for de novo molecule generation is needed. A concise and insightful discussion of recent advances in applying deep generative models for de novo molecule generation is presented, with particularly emphasizing the most important challenges for successful application of deep generative models in this specific area. This article is categorized under: Computer and Information Science > Chemoinformatics Computer and Information Science > Computer Algorithms and Programming