2022
DOI: 10.21203/rs.3.rs-2155283/v1
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Prediction of Organic Compound Aqueous Solubility Using Interpretable Machine Learning- A Comparison Study of Descriptor-Based and Topological Models

Abstract: A reliable and practical determination of a chemical species’ solubility in water continues to be examined using empirical observations and exhaustive experimental studies alone. Predictions of chemical solubility in water using data-driven algorithms can allow us to create a rationally designed, efficient, and cost-effective tool for next-generation materials and chemical formulations. We present results from two machine learning (ML) modeling studies to adequately predict various species’ solubility using da… Show more

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