用神经网络实现不同的数据挖掘算法

Aruna J. Chamatkar, P. Butey
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引用次数: 8

摘要

由于网上有大量的信息,万维网是数据挖掘研究的沃土。数据挖掘研究处于多个研究领域的交叉路口,如数据库、信息检索和人工智能,特别是机器学习和数据完整性的子领域。万维网上所有的电子商务和社交网站都使用分类,这是近年来数据库界非常关注的数据挖掘问题之一。神经网络不适合直接用于数据挖掘,因为分类的方式没有明确地表述为适合人类验证或解释的符号规则。利用该方法可以从神经网络中提取出不同的简洁、高精度的符号规则。首先对神经网络进行训练,以达到数据挖掘所需的精度。在本文中,我们将神经网络与数据挖掘中常用的三种不同的算法相结合,以改善数据挖掘的结果。这三种算法分别是CHARM算法、Top K规则挖掘算法和CM垃圾邮件算法。利用在线电子商务网站filpkart和Amazon的不同数据集对神经网络进行训练,并将其用于数据挖掘。利用神经网络技术对三种数据挖掘算法的结果进行了测试,并比较了算法的计算复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Different Data Mining Algorithms with Neural Network
With the huge amount of information available online, the World Wide Web is a fertile area for data mining research. The data mining research is at the cross road of research from several research communities, such as database, information retrieval, and within AI, especially the sub-areas of machine learning and data integrity. Every E-commerce and social website in World Wide Web uses the Classification is one of the data mining problems receiving great attention recently in the database community. Neural network is not suitable for data mining directly, because how the classifications were made is not explicitly stated as symbolic rules that are suitable for verification or interpretation by humans. Different concise symbolic rules with high accuracy can be extracted from a neural network with the proposed approach. The neural network is first trained to achieve the required accuracy in data mining. In this paper we are going to combine neural network with the three different algorithms which are commonly used in data mining to improve the data mining result. These three algorithms are CHARM Algorithm, Top K Rules mining and CM SPAM Algorithm. The different datasets of online e-commerce website filpkart and Amazon are used to train the neural network and to use in data mining. The results of all three data mining algorithm with neural network techniques then tested on the available datasets and result are compared by computational complexity of the algorithm.
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