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BartSmiles: Generative Masked Language Models for Molecular Representations

Gayane Chilingaryan, Hovhannes Tamoyan, Ani Tevosyan, Nelly Babayan, Karen Hambardzumyan, Zaven Navoyan, Armen Aghajanyan, Hrant Khachatrian, Lusine Khondkaryan

2024Journal of Chemical Information and Modeling22 citationsDOI

Abstract

We discover a robust self-supervised strategy tailored toward molecular representations for generative masked language models through a series of tailored, in-depth ablations. Using this pretraining strategy, we train BARTSmiles, a BART-like model with an order of magnitude more compute than previous self-supervised molecular representations. In-depth evaluations show that BARTSmiles consistently outperforms other self-supervised representations across classification, regression, and generation tasks, setting a new state-of-the-art on eight tasks. We then show that when applied to the molecular domain, the BART objective learns representations that implicitly encode our downstream tasks of interest. For example, by selecting seven neurons from a frozen BARTSmiles, we can obtain a model having performance within two percentage points of the full fine-tuned model on task Clintox. Lastly, we show that standard attribution interpretability methods, when applied to BARTSmiles, highlight certain substructures that chemists use to explain specific properties of molecules. The code and pretrained model are publicly available.

Topics & Concepts

InterpretabilityComputer scienceGenerative modelGenerative grammarTask (project management)Artificial intelligenceLanguage modelCode (set theory)ENCODEMachine learningNatural language processingSeries (stratigraphy)Set (abstract data type)ChemistryManagementBiochemistryPaleontologyBiologyGeneProgramming languageEconomicsMachine Learning in Materials ScienceComputational Drug Discovery MethodsProtein Structure and Dynamics
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