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Data Mining Using Neural Networks in the form of Classification Rules: A Review

机译:使用神经网络进行分类规则形式的数据挖掘:综述

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The increase in the rate of technological evolution is resulting in a reduction in the cost of various storage devices and as a consequence, enormous amounts of data are deposited from heterogeneous sources in raw forms. Therefore, some efficient data mining techniques are required that can process those data and retrieve useful information from them. Recently, machine learning algorithms are becoming very popular for doing various data mining tasks. Neural network is one of them, which has fascinated a lot of researchers due to its efficacy and fruitfulness in doing many tasks specially classification. But the main problem with neural network is its nature of black box, i.e., explaining the decision generated by a neural network is a daunting task. As a solution to this problem, rule extraction technique has been proposed which expresses the knowledge hidden in a learned network in the guise of understandable classification rules. The rule extraction is a very deep rooted technique and a very rich literature exists on this topic. However, a very less number of papers exist which mainly focused on surveying the existing literature. So, this work aims to provide a survey on the existing literature, and to shed light on some of the areas which needs to be focused to enrich the literature. At the same time the paper also tries to create a scope for the existing and the novice researchers to do research in this field.
机译:技术发展速度的提高导致各种存储设备成本的降低,结果,从异构形式的原始数据中存储了大量的数据。因此,需要一些有效的数据挖掘技术来处理这些数据并从中检索有用的信息。最近,机器学习算法在执行各种数据挖掘任务时变得非常流行。神经网络就是其中之一,由于其在执行许多特别分类任务中的功效和丰硕成果,吸引了许多研究人员。但是神经网络的主要问题是黑匣子的性质,即解释神经网络产生的决策是一项艰巨的任务。为了解决该问题,已经提出了规则提取技术,其以可理解的分类规则的形式表达了隐藏在学习网络中的知识。规则提取是一种根深蒂固的技术,有关此主题的文献非常丰富。然而,很少有论文主要集中在调查现有文献上。因此,这项工作旨在提供对现有文献的调查,并阐明需要集中精力以丰富文献的某些领域。同时,本文还尝试为现有的和新手研究人员创建一个在该领域进行研究的范围。

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