Litcius/Paper detail

A Comprehensive Review of Cross-Validation Techniques in Machine Learning

Meenu Bhagat, Brijesh Bakariya

2025International Journal on Science and Technology19 citationsDOIOpen Access PDF

Abstract

In order to make sure that machine learning models are reliable and broadly applicable, cross-validation approaches are essential. They offer a methodical approach for adjusting hyperparameters, assessing model performance, and resolving issues with overfitting, unbalanced data, and temporal dependencies. This review article provides a thorough analysis of the many cross-validation strategies used in machine learning, from conventional techniques like k-fold cross-validation to more specialized strategies for particular kinds of data and learning objectives. In addition to current developments and best practices in cross-validation methodology, we go over the fundamentals, uses, benefits, and drawbacks of each technique. We also highlight important factors to take into account and recommendations for choosing suitable cross-validation procedures based on the properties of the dataset and the modelling goals. The objective of this study is to give academics and practitioners a thorough grasp of cross-validation approaches and their significance in developing robust and dependable machine learning models by synthesizing the available literature.

Topics & Concepts

Computer scienceArtificial intelligenceMachine learningAnomaly Detection Techniques and ApplicationsFault Detection and Control SystemsArtificial Intelligence in Healthcare