Authors
Andrea Bommert, Jörg Rahnenführer
Publication date
2020
Conference
Machine Learning, Optimization, and Data Science: 6th International Conference, LOD 2020, Siena, Italy, July 19–23, 2020, Revised Selected Papers, Part I 6
Pages
203-214
Publisher
Springer International Publishing
Description
For data sets with similar features, for example highly correlated features, most existing stability measures behave in an undesired way: They consider features that are almost identical but have different identifiers as different features. Existing adjusted stability measures, that is, stability measures that take into account the similarities between features, have major theoretical drawbacks. We introduce new adjusted stability measures that overcome these drawbacks. We compare them to each other and to existing stability measures based on both artificial and real sets of selected features. Based on the results, we suggest using one new stability measure that considers highly similar features as exchangeable.
Total citations
2020202120222023202413322
Scholar articles
A Bommert, J Rahnenführer - Machine Learning, Optimization, and Data Science: 6th …, 2020