Adopting Text Clustering in web-based application to facilitate searching of education information

N. Nilsson, Yan Liu
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引用次数: 1

Abstract

Clustering, as a part of the Data Mining field, has been in the center of the research attention for the last decade. It is the task of finding subsets of data that are sharing the same type of attributes. Text Clustering becomes one of the most critical and important solutions in data mining to discover knowledge from fast grow up web data and log files. There are many challenges, algorithms needs to be tailored specific for each domain and scale well with growing data sets. Another interesting aspect is the design of the system. A complex set components need to interact well together. This article proposes an elegant way of clustering university educations based on their text attributes. The solution is integrated directly into a Spring Web Application. A comprehensive architecture is proposed, providing the frameworks needed. Clustering techniques such as Canopy Generation [4] and k-Means are demonstrated.
在基于web的应用中采用文本聚类,方便教育信息的检索
聚类作为数据挖掘领域的一部分,在过去的十年中一直是研究的焦点。它的任务是查找共享相同类型属性的数据子集。文本聚类从快速增长的web数据和日志文件中发现知识,成为数据挖掘中最关键、最重要的解决方案之一。有许多挑战,算法需要为每个领域量身定制,并随着数据集的增长而良好扩展。另一个有趣的方面是系统的设计。一个复杂的组件集需要很好地相互作用。本文提出了一种基于文本属性对大学教育进行聚类的优雅方法。该解决方案直接集成到Spring Web应用程序中。提出了一个全面的体系结构,提供了所需的框架。本文展示了冠层生成[4]和k-Means等聚类技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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