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A Case Study on Classification Reliability

机译:分类可靠性案例研究

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摘要

The reliability of an induced classifier can be affected by several factors including the data oriented factors and the algorithm oriented factors [3]. In some cases, the reliability could also be affected by knowledge oriented factors. In this paper, we analyze three special cases to examine the reliability of the discovered knowledge. Our case study results show that (1) in the cases of mining from low quality data, rough classification approach is more reliable than exact approach which in general tolerate to low quality data; (2) Without sufficient large size of the data, the reliability of the discovered knowledge will be decreased accordingly; (3) The reliability of point learning approach could easily be misled by noisy data. It will in most cases generate an unreliable interval and thus affect the reliability of the discovered knowledge. It is also reveals that the inexact field is a good learning strategy that could model the potentials and to improve the discovery reliability.
机译:归纳分类器的可靠性会受到多种因素的影响,包括面向数据的因素和基于算法的因素[3]。在某些情况下,可靠性还可能受到面向知识的因素的影响。在本文中,我们分析了三种特殊情况,以检验发现的知识的可靠性。我们的案例研究结果表明:(1)在从低质量数据中进行挖掘的情况下,粗略分类方法比精确方法更可靠,后者通常可以容忍低质量数据; (2)如果没有足够大的数据量,发现的知识的可靠性就会相应降低; (3)点学习方法的可靠性很容易被嘈杂的数据所误导。在大多数情况下,它将生成不可靠的间隔,从而影响所发现知识的可靠性。这也表明,不精确领域是一种很好的学习策略,可以对势进行建模并提高发现的可靠性。

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