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Comparative Analysis of Data Mining Tools and Classification Techniques using WEKA in Medical Bioinformatics

机译:医学生物信息学中使用WEKA的数据挖掘工具和分类技术的比较分析

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The availability of huge amounts of data resulted in great need of data mining technique in order to generate useful knowledge. In the present study we provide detailed information about data mining techniques with more focus on classification techniques as one important supervised learning technique. We also discuss WEKA software as a tool of choice to perform classification analysis for different kinds of available data. A detailed methodology is provided to facilitate utilizing the software by a wide range of users. The main features of WEKA are 49 data preprocessing tools, 76 classification/regression algorithms, 8 clustering algorithms, 3 algorithms for finding association rules, 15 attribute/subset evaluators plus 10 search algorithms for feature selection. WEKA extracts useful information from data and enables a suitable algorithm for generating an accurate predictive model from it to be identified. Moreover, medical bioinformatics analyses have been performed to illustrate the usage of WEKA in the diagnosis of Leukemia.
机译:大量数据的可用性导致对数据挖掘技术的巨大需求,以便生成有用的知识。在本研究中,我们提供了有关数据挖掘技术的详细信息,其中更多地将分类技术作为一种重要的监督学习技术。我们还将讨论WEKA软件作为对各种可用数据进行分类分析的首选工具。提供了一种详细的方法,以方便广大用户使用该软件。 WEKA的主要功能是49种数据预处理工具,76种分类/回归算法,8种聚类算法,3种用于查找关联规则的算法,15种属性/子集评估器以及10种用于特征选择的搜索算法。 WEKA从数据中提取有用的信息,并启用一种合适的算法,以便从中生成准确的预测模型。此外,已经进行了医学生物信息学分析,以说明WEKA在白血病诊断中的用途。

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