巴西教育数据分析中的空间和非空间聚类算法

Daiane Chitko de Souza, C. Taconeli
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引用次数: 0

摘要

教育是人类社会的支柱之一,因此在这一领域取得更好的指标是不同联邦实体的共同目标。在这方面,确定这些指标结果的模式,对不同实体进行评价,并根据它们的相似性对它们进行分组,可以使人们更好地了解人口的教育情况。此外,这种知识可能会补贴公共政策的制定,并使负责任的管理人员能够作出决策。在目前的工作中,我们提出了一个应用空间和非空间聚类算法分析巴西帕拉纳州市政当局评估的基础教育(初中和高中)六个重要指标数据的说明性示例。根据每种方法提供的聚类的空间分布和教育特征进行评价。不同的聚类算法对教育指标产生的聚类具有不同程度的空间连续性和均匀性,反映了根据研究目标选择合适的聚类技术的重要性。
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Spatial and non-spatial clustering algorithms in the analysis of Brazilian educational data
Abstract Education is one of the pillars of human societies, such that achieving better indicators in this area is a common goal for different federate entities. In this context, identifying patterns on the results of such indicators, evaluated for different entities, as well as grouping them based on their similarities, can lead to a better understanding of the educational scenario of a population. This knowledge, moreover, might subsidize the formulation of public policies and allow the decision-making by the responsible managers. In the present work, we present an illustrative example of the application of spatial and non-spatial clustering algorithms in the analysis of data from six important indicators of basic education (middle and high school) evaluated for the municipalities of the state of Paraná, Brazil. Clusters provided by each method were evaluated according to their spatial distributions and educational features. The different clustering algorithms produced clusters with different levels of spatial contiguity and homogeneity regarding the educational indicators, reflecting the importance of choosing the appropriate clustering technique based on the research objectives.
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