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Autori principali: Wild, Romina, Wodaczek, Felix, Del Tatto, Vittorio, Cheng, Bingqing, Laio, Alessandro
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2411.00851
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author Wild, Romina
Wodaczek, Felix
Del Tatto, Vittorio
Cheng, Bingqing
Laio, Alessandro
author_facet Wild, Romina
Wodaczek, Felix
Del Tatto, Vittorio
Cheng, Bingqing
Laio, Alessandro
contents Feature selection is essential in the analysis of molecular systems and many other fields, but several uncertainties remain: What is the optimal number of features for a simplified, interpretable model that retains essential information? How should features with different units be aligned, and how should their relative importance be weighted? Here, we introduce the Differentiable Information Imbalance (DII), an automated method to rank information content between sets of features. Using distances in a ground truth feature space, DII identifies a low-dimensional subset of features that best preserves these relationships. Each feature is scaled by a weight, which is optimized by minimizing the DII through gradient descent. This allows simultaneously performing unit alignment and relative importance scaling, while preserving interpretability. DII can also produce sparse solutions and determine the optimal size of the reduced feature space. We demonstrate the usefulness of this approach on two benchmark molecular problems: (1) identifying collective variables that describe conformations of a biomolecule, and (2) selecting features for training a machine-learning force field. These results show the potential of DII in addressing feature selection challenges and optimizing dimensionality in various applications. The method is available in the Python library DADApy.
format Preprint
id arxiv_https___arxiv_org_abs_2411_00851
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Automatic feature selection and weighting in molecular systems using Differentiable Information Imbalance
Wild, Romina
Wodaczek, Felix
Del Tatto, Vittorio
Cheng, Bingqing
Laio, Alessandro
Machine Learning
Computational Physics
Feature selection is essential in the analysis of molecular systems and many other fields, but several uncertainties remain: What is the optimal number of features for a simplified, interpretable model that retains essential information? How should features with different units be aligned, and how should their relative importance be weighted? Here, we introduce the Differentiable Information Imbalance (DII), an automated method to rank information content between sets of features. Using distances in a ground truth feature space, DII identifies a low-dimensional subset of features that best preserves these relationships. Each feature is scaled by a weight, which is optimized by minimizing the DII through gradient descent. This allows simultaneously performing unit alignment and relative importance scaling, while preserving interpretability. DII can also produce sparse solutions and determine the optimal size of the reduced feature space. We demonstrate the usefulness of this approach on two benchmark molecular problems: (1) identifying collective variables that describe conformations of a biomolecule, and (2) selecting features for training a machine-learning force field. These results show the potential of DII in addressing feature selection challenges and optimizing dimensionality in various applications. The method is available in the Python library DADApy.
title Automatic feature selection and weighting in molecular systems using Differentiable Information Imbalance
topic Machine Learning
Computational Physics
url https://arxiv.org/abs/2411.00851