Probabilistic Confusion Matrix: A Novel Method for Machine Learning Algorithm Generalized Performance Analysis
Ioannis Markoulidakis, Georgios Markoulidakis
Abstract
The paper addresses the issue of classification machine learning algorithm performance based on a novel probabilistic confusion matrix concept. The paper develops a theoretical framework which associates the proposed confusion matrix and the resulting performance metrics with the regular confusion matrix. The theoretical results are verified based on a wide variety of real-world classification problems and state-of-the-art machine learning algorithms. Based on the properties of the probabilistic confusion matrix, the paper then highlights the benefits of using the proposed concept both during the training phase and the application phase of a classification machine learning algorithm.
Topics & Concepts
Confusion matrixConfusionProbabilistic logicComputer scienceMachine learningArtificial intelligenceMatrix (chemical analysis)AlgorithmVariety (cybernetics)PsychologyMaterials scienceComposite materialPsychoanalysisNeural Networks and ApplicationsFace and Expression RecognitionRough Sets and Fuzzy Logic