通过新的免费统计软件 ROP-R 的聚类模块探索父母依恋的类型

Q2 Psychology
András Vargha, Ferenc Grezsa
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引用次数: 0

摘要

本文的目的有三:(1)通过使用真实心理数据的几项分析说明,展示基于 ROPstat 和 R 的新免费软件 ROP-R 的丰富聚类功能;(2)展示 ROP-R 与 ROPstat 软件在复杂分类分析中的良好配合;(3)使用 ROP-R 的聚类模块探索一些非难类型的父系依恋。ROP-R 的四个模块可用于进行聚类分析(CA),其中有几种方法(如分层聚类分析、k-medoids 聚类分析、k-medians 聚类分析、基于模型的聚类分析)是其他用户友好型菜单驱动软件所不具备的。本文使用了一项青少年研究(Mirnics 等人,2021 年)中的母亲和父亲依恋数据,以说明如何使用 ROP-R 软件来执行各种 CA,并使用有吸引力的图表和有用的表格来评估结果。通过比较不同的聚类方法,发现标准 AHCA 和 k-means CA 都能发现 7 型结构,这一点也得到了非标准 k-medians CA 的验证。然而,非标准的 k-medoids CA 和 MBCA 方法在识别具有可接受的整体同质性的结构方面并不十分有效。尽管如此,它们还是能够通过极其均匀的聚类识别出一些类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring types of parent attachment via the clustering modules of a new free statistical software, ROP-R
The aim of the paper is threefold: (1) to demonstrate the rich repertoire of clustering capabilities of a ROPstat and R-based new and free software, called ROP-R, by illustrating several analyses with real psychological data; (2) to show how well ROP-R works in tandem with ROPstat software in complex classification analyses; and (3) to explore some nontrivial types of parent attachment using the clustering modules of ROP-R. Four modules of ROP-R are available for performing cluster analyses (CAs), with several methods (e.g., divisive hierarchical CA, k-medoids CA, k-medians CA, model-based CA) not found in other user-friendly menu-driven software. In the paper, mother and father attachment data are used from a study with adolescents (Mirnics et al., 2021) to illustrate how the ROP-R software can be used to perform various CAs and evaluate the results using attractive graphs and useful tables. Comparing different clustering methods, it was found that both standard AHCA and k-means CA could discover a 7-type structure, which was also verified by the nonstandard k-medians CA. However, the nonstandard k-medoids CA and MBCA methods were not very effective in identifying a structure with an acceptable overall homogeneity. Nevertheless, they were able to identify some types through extremely homogeneous clusters.
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来源期刊
Journal for Person-Oriented Research
Journal for Person-Oriented Research Psychology-Psychology (miscellaneous)
CiteScore
2.90
自引率
0.00%
发文量
9
审稿时长
23 weeks
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