云中语义相似聚类文档的增强投影神经特征

B. Vinothini, N. Gnanambigai, P. Dinadayalan
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引用次数: 0

摘要

云计算已经成为互联网上的现实世界技术。随着高维度大数据的发展,数据在云上存储的可能性越来越大。文档聚类是一个基本主题,在云计算等许多领域已经成为不可或缺的组成部分。文档聚类将文档划分为重要的类或组,以便检索相关文档。许多研究者将因子分解方法和本体用于基于内部和外部知识的文档聚类。然而,现有的方法未能提供语义特征的构建,导致信息丢失,而覆盖了文档中的所有思想。为了解决这些问题,本文对不同的云文档聚类技术进行了综述。在此基础上,提出了基于熵的投影神经特征增强(EB-PNF)聚类方法。所提出的方法包括两个阶段。它们是,基于语义相似度评分的相似文档识别,特征提取,包括基于精度,召回率和计算复杂性的单标签和多标签特征提取,以证明EB-PNF方法产生可与最先进的方法相媲美的高质量聚类。
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Boosting Projection Neural Features for Semantic Similar Clustered Documents in Cloud
Cloud computing has emerged as real world technology over the Internet. Due to the development of big data with high dimensionality, data storage possibility over cloud has created large scope in recent times. Document clustering is the fundamental topic that turned into an indispensable component in many areas like cloud computing. Document clustering partitions the document into significant classes or groups for retrieving the relevant document. Many researchers used the factorization methods and ontologies for internal and external knowledge based document clustering. However, existing methods failed to provide the semantic feature construction and leads to the information loss while covering all the ideas in documents. In order to address these problems, different document clustering techniques in cloud has been reviewed in this paper. In addition to that Document clustering by Entropy-based Boosting with Projection Neural Feature (EB-PNF) method is presented. The proposed method involves two stages. They are, similar document identification based on semantic similarity score, feature extraction which includes the extraction of both single and multi-label features based on the precision, recall and computational complexity to prove that EB-PNF method produces high-quality clusters comparable to the state-of-the-art methods.
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