Title of article :
A systematic analysis of performance measures for classification tasks
Author/Authors :
Marina Sokolova، نويسنده , , Leila Kosseim & Guy Lapalme، نويسنده ,
Issue Information :
دوماهنامه با شماره پیاپی سال 2009
Abstract :
This paper presents a systematic analysis of twenty four performance measures used in the complete spectrum of Machine Learning classification tasks, i.e., binary, multi-class, multi-labelled, and hierarchical. For each classification task, the study relates a set of changes in a confusion matrix to specific characteristics of data. Then the analysis concentrates on the type of changes to a confusion matrix that do not change a measure, therefore, preserve a classifier’s evaluation (measure invariance). The result is the measure invariance taxonomy with respect to all relevant label distribution changes in a classification problem. This formal analysis is supported by examples of applications where invariance properties of measures lead to a more reliable evaluation of classifiers. Text classification supplements the discussion with several case studies.
Keywords :
Text classification , Performance Evaluation , Machine Learning
Journal title :
Information Processing and Management
Journal title :
Information Processing and Management