TP-GraphMiner:一个基于任务的信息网络聚类框架

Vijayalakshmi Ramasamy, Urvashi Desai, Hakam W. Alomari, J. Kiper
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引用次数: 8

摘要

在关系表中聚类相似的实体对研究界来说是一个公开的挑战,因为事务数据表示为表,其中两个或多个实体之间的关系很难表示。本文使用一种基于图的建模方法,称为事务模式图挖掘器(TP-GraphMiner),根据事务中属性的相似性来识别集群。它探索了一种以社会为中心的分析,旨在教育决策过程,如识别女性和男性学生在课程中的相对参与度,他们的互动模式的相似性,基于交易属性的相似实体集群,以及异常值-具有不同兴趣的实体。本初步调查的实证结果显示:虽然女生在STEM课程上的入学率远低于男生,但聚类结果显示,女生在计算机编程课程上的参与度更高,在知识分享和回答同龄人问题方面的参与度也更突出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TP-GraphMiner: A Clustering Framework for Task-Based Information Networks
Clustering similar entities in relational tables is an open challenge to the research community due to the representation of transactional data as tables where the relationships between two or more entities are difficult to represent. This paper uses a graph-based modeling approach called Transaction Pattern Graph Miner (TP-GraphMiner) to identify clusters based on the similarities of the attributes in the transactions. It explores a socio-centric analysis that aims at educational decision-making processes such as identifying the relative engagement of female and male students in the coursework, the similarities of their interaction patterns, similar clusters of entities base on the attributes in the transactions, and the outliers - the entities with divergent interests. The empirical results of this initial investigation have revealed the following: while the rate of enrollment of female students in STEM courses is much lower than that of male students, the clustering results reveals greater active participation of the female students in computer programming courses and their prominent engagement in knowledge sharing and answering their peers’ questions.
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