A Study on different data mining classifiers

R. Katarya, V. Gangwar, Ishita Jaisia
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引用次数: 3

Abstract

Data mining is a process of finding patterns in a large dataset. It involves various algorithmic classifiers. Almost everyone in the IT sector is utilizing data mining techniques to understand different patterns in a large dataset. Classification is required to find out in which group the given instance of the testing dataset is related to a given class of a training dataset. It partitions given information into its subclasses which are dependent upon some observed parameters. Several different types of techniques used for data mining are - Decision Trees (ID3, C4.5, CART), k-nearest neighbours, Apriori algorithm, Naive Bayes, Neural Networks. Comprehensively, The three approaches followed for classification technique are Machine Learning, Statistical Based and Neural Networks. Considering these approaches broadly we can define different classifiers. The classification has innumerable applications in speech recognition, computer vision, Geostatistics, Biological classification. This study presents a comprehensive survey of different data mining classifiers and compares them on different parameters.
不同数据挖掘分类器的研究
数据挖掘是在大型数据集中发现模式的过程。它涉及各种算法分类器。几乎IT部门的每个人都在使用数据挖掘技术来理解大型数据集中的不同模式。需要进行分类,以找出测试数据集的给定实例与训练数据集的给定类相关的组。它将给定的信息划分为子类,这些子类依赖于一些观察到的参数。用于数据挖掘的几种不同类型的技术是-决策树(ID3, C4.5, CART), k近邻,Apriori算法,朴素贝叶斯,神经网络。总的来说,分类技术遵循的三种方法是机器学习,基于统计和神经网络。综合考虑这些方法,我们可以定义不同的分类器。该分类在语音识别、计算机视觉、地质统计学、生物分类等领域有着广泛的应用。本研究对不同的数据挖掘分类器进行了全面的综述,并在不同的参数下对它们进行了比较。
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