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Performance Assessment of Learning Algorithms on Multi-Domain Data Sets

机译:多域数据集学习算法的性能评估

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This article describes how for the last few decades, data mining research has had significant progress in a wide spectrum of applications. Research in prediction of multi-domain data sets is a challenging task due to the unbalanced, voluminous, conflicting, and complex nature of data sets. A learning algorithm is the most important technique for solving these problems. The learning algorithms are widely used for classification purposes. But choosing the learners that perform best for data sets of particular domains is a challenging task in data mining. This article provides a comparative performance assessment of various state-of-the-art learning algorithms over multi-domain data sets to search the effective classifier(s) for a particular domain, e.g., artificial, natural, semi-natural, etc. In the present article, a total of 14 real world data sets are selected from University of California, Irvine (UCI) machine learning repository for conducting experiments using three competent individual learners and their hybrid combinations.
机译:本文介绍了在过去的几十年中,数据挖掘研究如何在广泛的应用程序中取得重大进展。由于数据集的不平衡,庞大,冲突和复杂的性质,对多域数据集进行预测的研究是一项艰巨的任务。学习算法是解决这些问题的最重要技术。学习算法被广泛用于分类目的。但是,选择对特定领域的数据集表现最佳的学习者在数据挖掘中是一项艰巨的任务。本文提供了针对多域数据集的各种最新学习算法的比较性能评估,以搜索特定领域(例如人工,自然,半自然等)的有效分类器。本文从加利福尼亚大学欧文分校(UCI)机器学习存储库中选择了总共14个现实世界数据集,以使用三个有能力的个人学习者及其混合组合进行实验。

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