Contribution to a conference proceedings/Contribution to a book FZJ-2024-03058

http://join2-wiki.gsi.de/foswiki/pub/Main/Artwork/join2_logo100x88.png
Empirical Comparison Between Cross-Validation and Mutation-Validation in Model Selection

 ;  ;  ;  ;  ;  ;  ;

2024
Springer Nature Switzerland Cham
ISBN: 978-3-031-58555-5 (print), 978-3-031-58553-1 (electronic)

Advances in Intelligent Data Analysis XXII / Miliou, Ioanna (Editor) [https://orcid.org/0000-0002-1357-1967] ; Cham : Springer Nature Switzerland, 2024, Chapter 5 ; ISSN: 0302-9743=1611-3349 ; ISBN: 978-3-031-58555-5=978-3-031-58553-1 ; doi:10.1007/978-3-031-58553-1
22nd International Symposium on Intelligent Data Analysis, IDA 2024, Proceedings, Part II, StockholmStockholm, Sweden, 24 Apr 2024 - 26 Apr 20242024-04-242024-04-26
Cham : Springer Nature Switzerland, Lecture Notes in Computer Science 14642, 56 - 67 () [10.1007/978-3-031-58553-1_5]

This record in other databases:  

Please use a persistent id in citations: doi:  doi:

Abstract: Mutation validation (MV) is a recently proposed approach for model selection, garnering significant interest due to its unique characteristics and potential benefits compared to the widely used cross-validation (CV) method. In this study, we empirically compared MV and k-fold CV using benchmark and real-world datasets. By employing Bayesian tests, we compared generalization estimates yielding three posterior probabilities: practical equivalence, CV superiority, and MV superiority. We also evaluated the differences in the capacity of the selected models and computational efficiency. We found that both MV and CV select models with practically equivalent generalization performance across various machine learning algorithms and the majority of benchmark datasets. MV exhibited advantages in terms of selecting simpler models and lower computational costs. However, in some cases MV selected overly simplistic models leading to underfitting and showed instability in hyperparameter selection. These limitations of MV became more evident in the evaluation of a real-world neuroscientific task of predicting sex at birth using brain functional connectivity.


Contributing Institute(s):
  1. Gehirn & Verhalten (INM-7)
  2. Computational and Systems Neuroscience (IAS-6)
Research Program(s):
  1. 5253 - Neuroimaging (POF4-525) (POF4-525)
  2. 5254 - Neuroscientific Data Analytics and AI (POF4-525) (POF4-525)

Appears in the scientific report 2024
Database coverage:
OpenAccess ; NationallizenzNationallizenz ; SCOPUS
Click to display QR Code for this record

The record appears in these collections:
Document types > Events > Contributions to a conference proceedings
Document types > Books > Contribution to a book
Institute Collections > IAS > IAS-6
Institute Collections > INM > INM-7
Workflow collections > Public records
Publications database
Open Access

 Record created 2024-04-22, last modified 2024-10-23


OpenAccess:
Download fulltext PDF
Rate this document:

Rate this document:
1
2
3
 
(Not yet reviewed)