多表拓扑分析

Rafik Abdesselam
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引用次数: 0

摘要

本文提出了一种拓扑方法,以便同时探索多个数据表。这些数据表包含从同一个人身上收集到的不同同质主题的定量和/或定性变量。这种方法被称为多表拓扑分析法(TAMT),是在对多个数据表进行联合分析的背景下,以邻域图的概念为基础的。它允许同时研究多个主题表之间可能存在的联系。根据所考虑的定量、定性或混合变量,对每个专题表中变量的相关或关联结构进行分析。与多重因子分析(MFA)一样,TAMT 可以同时对多个变量表进行分析,并获得结果,特别是图形表示,从而可以研究个体、变量和数据表之间的关系。这些数据表也可以是时间数据表,在不同时间对同一个人进行收集。建议的 TAMT 方法使用与多个不同同质主题相关的真实数据进行了说明。其结果与 MFA 方法的结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topological analysis of multiple tables
The paper proposes a topological approach in order to explore several data tables simultaneously. These data tables of quantitative and/or qualitative variables measured on different homogeneous themes, collected from the same individuals. This approach, called topological analysis of multiple tables (TAMT), is based on the notion of neighborhood graphs in the context of a joint analysis of several data tables. It allows the simultaneous study of possible links between several thematic tables. The structure of the correlations or associations of the variables in each thematic table is analyzed according to quantitative, qualitative or mixed variables considered. Like the multiple factorial analysis (MFA), the TAMT allows several tables of variables to be analyzed simultaneously, and to obtain results, in particular graphical representations, which make it possible to study the relationship between individuals, variables and tables of data. These can also be tables of temporal data, collected at different times on the same individuals. The proposed TAMT approach is illustrated using real data associated with several and different homogeneous themes. Its results are compared to those from the MFA method.
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