基于数据内在特征的不平衡数据分类的平衡

Harpreet Singh Bror
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引用次数: 1

摘要

数据挖掘是当前数据处理领域的热门话题。有大量的应用程序产生大量的数据。需要对这些数据进行处理,以便提取已分析的数据。从而为相关组织的决策目的提供分析依据。但从行源收集的数据在本质上是不平衡的。需要对这些数据进行处理以生成平衡数据集。因为处理不平衡数据将是一个高效的过程。数据集中存在各种类型的差异。在目前的研究论文中,这些不同类型的差异是要消除的。使数据集的处理和分析变得更加简单和高效。这些差异存在于数据集中,就像小的脱节,数据缺乏密度,类之间的重叠,噪声数据的影响,边界等,使用不同的技术,这些问题进入数据集正在被中和。这样平衡的数据就可以输入到数据挖掘中。
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Balancing of the Imbalance data classification using Data Intrinsic characteristics
Data mining is the current buzz of the data processing world. There are large number of applications which are producing the large amount of data. This data need to be processed for the extraction of the analyzed data. So that this analysis can be used in the decision making purpose in relevant organizations. But the data collected from the row sources are of imbalance in nature. This data needs to be processed to generate the balancing dataset. Because processing imbalance data will be highly in efficient process. There are various types of discrepancies lies into the dataset. In current research paper these different types of discrepancies are to be neutralized. So that processing and analysis of the dataset will become easy and more efficient. These discrepancies lies into the dataset are like small disjuncts, lack of density in data, overlapping between the classes, impact of noisy data, the borderline etc. using different techniques these problems into the dataset are being neutralized. So that balanced data can be inputted for the data mining purpose.
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