Use of Ranking Methods in Machine Learning to Prioritize Chemical Compounds for Drug Discovery
Methods, systems and media are taught utilizing ranking techniques in machine learning to learn a ranking function. Specifically, ranking algorithms are applied to learn a ranking function that advantageously minimizes ranking error as a function of targeted ranking order discrepancies between a predetermined first ranking of a training plurality of data elements and a second ranking of the training plurality of data elements by the ranking function. The ranking algorithms taught may be applied to ranking representations of chemical structures and may be particularly advantageous in the field of drug discovery, e.g., for prioritizing chemical structures for drug screenings.
Researchers
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methods, systems and media utilizing ranking techniques in machine learning
United States of America | Granted | 8,862,520
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