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Applying matrix factorization techniques to compare experts' categorization process during case formulation task performed by concept maps

机译:应用矩阵分解技术在概念图执行案例制定任务期间比较专家的分类过程

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The aim of this paper was to present a method to enable the analysis of the process of categorization of patients' testimonials and the comparison of individual categories created by professionals. A complex diagnostic task (case conceptualization) was employed to study the categorization function in professional thinking. Two groups of psychotherapists (30 people in each group) served as subjects of the research. The main objective of the study was to find an appropriate representation of concept maps enabling a comparison of both the categories and the structures between experts. In the comparison process, only the information about the premises justifying each given category was taken into account and represented by a concept-testimonials matrix. Three different elements weighting schemes and matrix factorization-based unsupervised clustering methods were analyzed in the context of consistency and ability to establish main semantic groups of concepts common to the majority of experts. Moreover, special attention was paid to determining the number of main semantic classes. The study showed that even the used representation was similar to the task of documents indexing there was some discrepancy. The highest accuracy in generating main semantic groups was achieved using the PCA and K-Means (nKM) (the average false positive rate in clusters was 32%). This method outperformed Tempered PLSA (the average false positive rate per cluster was 52%). It was demonstrated that in analyzed task the nKM method allowed comparing the similarity of concepts even when they were created by various experts using different conceptual apparatus. (C) 2017 Elsevier B.V. All rights reserved.
机译:本文的目的是提出一种方法,可以分析患者推荐书的分类过程,并比较专业人员创建的各个类别。一个复杂的诊断任务(案例概念化)被用来研究专业思维中的分类功能。两组心理治疗师(每组30人)作为研究对象。该研究的主要目的是找到概念图的适当表示形式,以使专家之间的类别和结构能够进行比较。在比较过程中,仅考虑有关证明每个给定类别合理的前提的信息,并由概念-推荐矩阵表示。在一致性和建立大多数专家共同的概念的主要语义组的能力的背景下,分析了三种不同的元素加权方案和基于矩阵分解的无监督聚类方法。此外,特别注意确定主要语义类别的数量。研究表明,即使使用的表示形式与文档索引编制任务相似,也存在一些差异。使用PCA和K-Means(nKM)可以在生成主要语义组中获得最高的准确性(聚类中的平均误报率是32%)。该方法的性能优于Tempered PLSA(每簇的平均假阳性率为52%)。结果表明,在分析任务中,nKM方法可以比较概念的相似性,即使它们是由使用不同概念工具的各种专家创建的。 (C)2017 Elsevier B.V.保留所有权利。

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