Prototype survey analysis of different information retrieval classification and grouping approaches for categorical information

K. Kamakshaiah, R. Seshadri
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引用次数: 1

Abstract

Present days, large amount information stored in information sources, which is formally increased based on Knowledge Discovery from information warehouses with different formats of information. To acquire required and useful information from information sources, some of the techniques, methods and some of developed tools to combine large or high dimensional information sets. This procedure gives demand to implement novel research field i.e. information retrieval. The main task behind information retrieval is to extract required information from large size of information and change them into meaningful for further use in information retrieval. Classification and Grouping's are the main information retrieval approaches to classify and combine categorical information in a large set of information into required group set of class labels. So in this document, we provide comprehensive analysis of different classification and grouping methods in information retrieval to efficient information retrieval, which includes neural networks, Bayesian networks and decision trees. We also provide survey on some of semi supervised and supervised outlier detection techniques for categorical information on unlabeled information sets under large of instances in information sets with required instances in real time synthetic information. We bring out the keys aspects of different outlier and information retrieval approaches to information exploration.
分类信息的不同信息检索分类分组方法的原型调查分析
目前,信息源中存储着大量的信息,这些信息通过知识发现从不同格式的信息仓库中正式增加。为了从信息源中获取所需的和有用的信息,一些技术、方法和一些开发的工具来组合大或高维的信息集。这一过程要求实现新的研究领域,即信息检索。信息检索的主要任务是从海量的信息中提取出需要的信息,并将其转化为有意义的信息,以供信息检索使用。分类和分组是一种主要的信息检索方法,它将大量信息中的类别信息分类并组合成所需的类标签组集。因此,本文综合分析了信息检索中不同的分类和分组方法,包括神经网络、贝叶斯网络和决策树。在实时合成信息中,在具有所需实例的信息集中,在大量实例的情况下,对未标记信息集上的分类信息进行了半监督和监督异常点检测。提出了不同的离群点和信息检索方法在信息挖掘中的关键方面。
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