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Fuzzy K- means cluster validation for institutional quality assessment

机译:模糊K-均值聚类验证用于机构质量评估

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The most important facts in educational institutional system growth lies in the quality of services rendered. (i.e., faculty profile, student performance and infrastructure requirements). The highest level of quality in educational institution can be achieved by utilizing the managerial decision makers with valuable implicit knowledge, which is currently unknown /hidden to them. The knowledge hidden among the educational data set is extractable through data mining technology. Clustering, an unsupervised learning depends on certain initiation values to define the subgroups present in a data set. Based on the features of the dataset and input parameters cluster formation may vary, which motivates the clarification of cluster validity. The proposed work presented a fuzzy k-means cluster algorithm in the formation of student, faculty and infrastructural clusters based on the performance, skill set and facilitation availability respectively. With the obtained data clusters, quality assessment is made by predictive mining using decision tree model. The cluster validation criterion is introduced to find the optimal input metrics for fuzzy k-means algorithm. Validation criteria focus on the quality metrics of the institution features for cluster formation and handle efficiently the arbitrary shaped clusters. Experimental results show improved stability and accuracy for clustering structures obtained via sub sampling, and adaptive techniques. These improvements offer insights into specific decision within the data sets. The experimental results confirm the reliability of validity index showing that it performs favorably in all cases selecting independently of clustering algorithm the scheme that best fits the data under consideration.
机译:教育体制发展中最重要的事实在于所提供服务的质量。 (即,教师资料,学生表现和基础设施要求)。通过利用具有宝贵的隐性知识的管理决策者,可以达到教育机构最高的质量,而这是他们目前尚不了解/隐藏的。通过数据挖掘技术可以提取隐藏在教育数据集中的知识。聚类是一种无监督的学习,它依赖于某些初始值来定义数据集中存在的子组。根据数据集的特征和输入参数,聚类的形成可能会有所不同,这有助于阐明聚类的有效性。拟议的工作提出了一个模糊的k-均值聚类算法,分别基于绩效,技能和便​​利性,在学生,教职员工和基础设施集群的形成中。利用获得的数据集群,通过使用决策树模型进行预测性挖掘来进行质量评估。介绍了聚类验证准则,以找到模糊k均值算法的最佳输入指标。验证标准侧重于用于集群形成的机构特征的质量度量,并有效地处理任意形状的集群。实验结果表明,通过子采样和自适应技术获得的聚类结构具有更高的稳定性和准确性。这些改进提供了对数据集中特定决策的见解。实验结果证实了有效性指标的可靠性,表明有效性指标在所有情况下均能很好地执行,而与聚类算法无关地选择最适合所考虑数据的方案。

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