4.6 Article

Feature importance in machine learning models: A fuzzy information fusion approach

Journal

NEUROCOMPUTING
Volume 511, Issue -, Pages 163-174

Publisher

ELSEVIER
DOI: 10.1016/j.neucom.2022.09.053

Keywords

Feature importance; Fuzzy systems; Information fusion; Interpretability; Machine learning; Responsible Al

Funding

  1. Horizon Centre for Doctoral Training at the University of Nottingham (UKRI Grant) [EP/L015463/1]
  2. Microlise

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With the increasing use of machine learning, it is important to verify and understand the reasons behind specific outputs. However, there is currently a lack of consensus on how to quantify feature importance, leading to unreliable explanations. Combining results from multiple feature importance quantifiers using different machine learning approaches and re-sampling can improve the reliability of explanations.
With the widespread use of machine learning to support decision-making, it is increasingly important to verify and understand the reasons why a particular output is produced. Although post-training feature importance approaches assist this interpretation, there is an overall lack of consensus regarding how feature importance should be quantified, making explanations of model predictions unreliable. In addition, many of these explanations depend on the specific machine learning approach employed and on the subset of data used when calculating feature importance. A possible solution to improve the reliability of explanations is to combine results from multiple feature importance quantifiers from different machine learning approaches coupled with re-sampling. Current state-of-the-art ensemble feature importance fusion uses crisp techniques to fuse results from different approaches. There is, however, significant loss of information as these approaches are not context-aware and reduce several quantifiers to a single crisp output. More importantly, their representation of importance as coefficients may be difficult to comprehend by end-users and decision makers. Here we show how the use of fuzzy data fusion methods can overcome some of the important limitations of crisp fusion methods by making the importance of features easily understandable. (C) 2022 The Author(s). Published by Elsevier B.V.

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