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Constraining classifiers in molecular analysis: invariance and robustness
Author(s) -
Ludwig Lausser,
Robin Szekely,
Attila Klimmek,
Florian Schmid,
Hans A. Kestler
Publication year - 2020
Publication title -
journal of the royal society interface
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.655
H-Index - 139
eISSN - 1742-5689
pISSN - 1742-5662
DOI - 10.1098/rsif.2019.0612
Subject(s) - robustness (evolution) , a priori and a posteriori , computer science , generalization , categorization , curse of dimensionality , artificial intelligence , invariant (physics) , machine learning , support vector machine , pattern recognition (psychology) , data mining , mathematics , biology , mathematical analysis , philosophy , biochemistry , epistemology , gene , mathematical physics
Analysing molecular profiles requires the selection of classification models that can cope with the high dimensionality and variability of these data. Also, improper reference point choice and scaling pose additional challenges. Often model selection is somewhat guided by ad hoc simulations rather than by sophisticated considerations on the properties of a categorization model. Here, we derive and report four linked linear concept classes/models with distinct invariance properties for high-dimensional molecular classification. We can further show that these concept classes also form a half-order of complexity classes in terms of Vapnik–Chervonenkis dimensions, which also implies increased generalization abilities. We implemented support vector machines with these properties. Surprisingly, we were able to attain comparable or even superior generalization abilities to the standard linear one on the 27 investigated RNA-Seq and microarray datasets. Our results indicate that a priori chosen invariant models can replace ad hoc robustness analysis by interpretable and theoretically guaranteed properties in molecular categorization.

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