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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >A Framework for Supervised Classification Performance Analysis with Information-Theoretic Methods
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A Framework for Supervised Classification Performance Analysis with Information-Theoretic Methods

机译:具有信息理论方法的监督分类性能分析的框架

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We introduce a framework for the evaluation of multiclass classifiers by exploring their confusion matrices. Instead of using error-counting measures of performance, we concentrate in quantifying the information transfer from true to estimated labels using information-theoretic measures. First, the Entropy Triangle allows us to visualize the balance of mutual information, variation of information, and the deviation from uniformity in the true and estimated label distributions. Next, the Entropy-Modified Accuracy allows us to rank classifiers by performance while the Normalized Information Transfer rate allows us to evaluate classifiers by the amount of information accrued during learning. Finally, if the question rises to elucidate which errors are systematically committed by the classifier, we use a generalization of Formal Concept Analysis to elicit such knowledge. All such techniques can be applied either to artificially or biologically embodied classifiers-e.g., human performance on perceptual tasks. We instantiate the framework in a number of examples to provide guidelines for the use of these tools in the case of assessing single classifiers or populations of them-whether induced with the same technique or not-either on single tasks or in a set of them. These include well-known UCI tasks and the more complex KDD cup 99 competition on Intrusion Detection.
机译:我们通过探索混淆矩阵来介绍一个框架,用于评估多标准分类器。我们专注于使用信息理论措施量化从True的信息转移到估计标签的信息转移。首先,熵三角形允许我们可视化相互信息的余额,信息变化以及真实和估计标签分布中的均匀性的偏差。接下来,熵改性的精度允许我们通过性能进行分类器,而归一化信息传输速率允许我们通过学习期间累计的信息量进行评估。最后,如果问题上升到分类器系统地阐明哪些错误,我们使用正式概念分析的概括来引发这些知识。所有这些技术都可以应用于人工或生物学体现的分类器-e.g。,在感知任务中的人类性能。我们在许多示例中实例化框架,以便在评估它们的单个分类器或群体的情况下提供这些工具的准则 - 无论是在单个任务还是在一组中都以相同的技术引起。这些包括众所周知的UCI任务和更复杂的KDD杯99次入侵检测竞争。

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