多专家系统评价的人工分类器生成

D. Impedovo, G. Pirlo, L. Sarcinella, E. Stasolla
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引用次数: 7

摘要

多分类器系统组合方法的评价是一个难题。在许多情况下,多分类器组合方法过于复杂,无法进行正式研究,实验方法是唯一可行的策略。当然,为了模拟大量的真实工作条件,必须生成具有不同特征的人工分类器集。本文提出了一种有效的技术来生成具有不同特征的人工分类器集,在个体水平(即识别性能)和集体水平(即相似度)。在实验测试中,生成了模拟不同工况的人工分类器集,并对抽象级组合方法的性能进行了评价。结果表明,该方法可有效地生成具有不同特征的人工分类器集,并可用于估计组合方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Classifier Generation for Multi-expert System Evaluation
The evaluation of combination methods for multi-classifier systems is a difficult problem. In many cases multi-classifier combination methods are too complex to be formally studied and the experimental approach is the unique possible strategy. Of course, in order to simulate a multitude of real working conditions, sets of artificial classifiers with diverse characteristics must be generated. This paper presents an effective technique for generating sets of artificial classifiers with different characteristics both at the individual-level (i.e. recognition performance) and at the collective-level (i.e. degree of similarity). In the experimental tests, sets of artificial classifiers simulating different working conditions are generated and the performances of abstract-level combination methods are estimated. The results points out the effectiveness of the new technique for generating sets of artificial classifiers with different characteristics and their usefulness in estimating the performances of combination methods.
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