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首页> 外文期刊>International journal of data analysis techniques and strategies >A comparative evaluation of dissimilarity-based and model-based clustering in science education research: the case of children's mental models of the Earth
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A comparative evaluation of dissimilarity-based and model-based clustering in science education research: the case of children's mental models of the Earth

机译:基于不同基于和模型的科学教育研究的比较评估:地球中儿童心理模型的案例

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摘要

In the present work, two different classification methods, a dissimilarity-based clustering approach (DBC) and the model-based latent class analysis (LCA), were used to analyse responses to a questionnaire designed to measure children's mental representation of the Earth. It contributes to an ongoing debate in cognitive psychology and science education research between two antagonistic theories on the nature of children's knowledge, that is, the coherent versus fragmented knowledge hypothesis. Methodology-wise the problem concerns the classification of response patterns into distinct clusters, which correspond to specific hypothesised mental models. DBC employs the partitioning around medoids (PAM) approach and selects the final cluster solution based on average silhouette width, cluster stability and interpretability. LCA, a model-based clustering method achieves a taxonomy by employing the conditional probabilities of responses. Initially, a brief presentation and comparison of the two methods is provided, while issues on clustering philosophies are discussed. Both PAM and LCA attained to detect merely the cluster which corresponds to the coherent scientific model and an artificial segment added on purpose in the empirical data. The two methods, despite the obvious deviations in cluster-membership assignment, finally provide sound findings as far as hypotheses tested, by converging to identical conclusions.
机译:在本作工作中,两种不同的分类方法,基于不同的基于聚类方法(DBC)和基于模型的潜在课程分析(LCA),用于分析对旨在衡量地球的儿童心理表现的问卷的回应。它有助于在儿童知识性质的两个对抗理论之间的认知心理学和科学教育研究中的持续辩论,即连贯的与分散知识假设。方法论问题涉及响应模式分类为不同的簇,其对应于特定的假设心理模型。 DBC采用METOIDS(PAM)方法周围的分区,并根据平均轮廓宽度,集群稳定性和解释性选择最终集群解决方案。 LCA,基于模型的聚类方法通过采用响应的条件概率来实现分类法。最初,提供了两种方法的简要介绍和比较,同时讨论了集群哲学的问题。 PAM和LCA都达到仅用于对应于连贯的科学模型和人工部分的集群,以在经验数据中添加的。这两种方法,尽管集群成员分配明显偏差,但最终通过融合到相同的结论来提供声音调查结果。

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