Probabilistic Confusion Matrix: A Novel Method for Machine Learning Algorithm Generalized Performance Analysis

Ioannis Markoulidakis, Georgios Markoulidakis
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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.
概率混淆矩阵:机器学习算法通用性能分析的新方法
本文基于新颖的概率混淆矩阵概念,探讨了分类机器学习算法的性能问题。论文建立了一个理论框架,将提出的混淆矩阵和由此产生的性能指标与常规混淆矩阵联系起来。理论结果基于各种现实世界的分类问题和最先进的机器学习算法得到了验证。基于概率混淆矩阵的特性,论文强调了在分类机器学习算法的训练阶段和应用阶段使用所提概念的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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