Litcius/Paper detail

Chemoinformatic regression methods and their applicability domain

Thomas‐Martin Dutschmann, Valerie Schlenker, Knut Baumann

2024Molecular Informatics24 citationsDOIOpen Access PDF

Abstract

The growing interest in chemoinformatic model uncertainty calls for a summary of the most widely used regression techniques and how to estimate their reliability. Regression models learn a mapping from the space of explanatory variables to the space of continuous output values. Among other limitations, the predictive performance of the model is restricted by the training data used for model fitting. Identification of unusual objects by outlier detection methods can improve model performance. Additionally, proper model evaluation necessitates defining the limitations of the model, often called the applicability domain. Comparable to certain classifiers, some regression techniques come with built-in methods or augmentations to quantify their (un)certainty, while others rely on generic procedures. The theoretical background of their working principles and how to deduce specific and general definitions for their domain of applicability shall be explained.

Topics & Concepts

Applicability domainComputer scienceOutlierRegressionIdentification (biology)Data miningRegression analysisDomain (mathematical analysis)Machine learningReliability (semiconductor)Linear regressionRegression diagnosticDomain knowledgeArtificial intelligenceQuantitative structure–activity relationshipStatisticsMathematicsPolynomial regressionMathematical analysisBotanyPhysicsBiologyQuantum mechanicsPower (physics)Computational Drug Discovery MethodsFault Detection and Control SystemsAdvanced Statistical Methods and Models