Different strategies for class model optimization. A comparative study.

Different strategies for class model optimization. A comparative study. Talanta. 2020 Aug 01;215:120912 Authors: Małyjurek Z, Vitale R, Walczak B Abstract The Class Modelling (CM) approaches like Soft Independent Modelling of Class Analogy (SIMCA) aim at developing a mathematical model for determination of belongingness of new samples to the studied classes. The main feature of CM is that for each target class an individual model is constructed. CM is widely exploited, e.g., in the food and drug quality testing and authenticity or origin verification. It is well known that the most critical stage in construction of a class model is optimization of its parameters. There exist two basic strategies for optimization of class model, i.e., the "compliant" strategy where the target and nontarget class samples are required in the model optimization process, and the "rigorous" strategy where only the target class samples are used. Since the nontarget class samples are usually available, the compliant scenario is more often explored. In the present study, four different resampling methods for optimization of the SIMCA model (applied in both, a compliant and a rigorous fashion) are thoroughly compared. Each method is tested in combination with two distinct decision threshold estimation criteria: i) an a priori fixing it based on a desired statistical significance level and ii) optimizing it through appropriate data-driven procedures. For the s...
Source: Talanta - Category: Chemistry Authors: Tags: Talanta Source Type: research