Download full text
(596.7Kb)
Citation Suggestion
Please use the following Persistent Identifier (PID) to cite this document:
https://nbn-resolving.org/urn:nbn:de:0168-ssoar-91896-5
Exports for your reference manager
A Move Forward: Exploring National Identity Through Non-linear Principal Component Analysis in Germany
[journal article]
Abstract In research on national identity, scholars have developed a wide variety of approaches to measure and better understand this ubiquitous yet complex concept. To date, most of these approaches have been theory-driven, while only a very few have been data-driven. In this article, we aim to contribute t... view more
In research on national identity, scholars have developed a wide variety of approaches to measure and better understand this ubiquitous yet complex concept. To date, most of these approaches have been theory-driven, while only a very few have been data-driven. In this article, we aim to contribute to the latter by introducing a new data-driven method that has not been applied yet - that of non-linear principal component analysis (NLPCA). In contrast to other commonly used methods such as factor analysis, NLPCA distinguishes itself by making relatively few assumptions about the data and by allowing for greater flexibility when discovering underlying dimensions of such a complex concept as national identity. Drawing on the 2013 ISSP National Identity module, our analysis focuses on the case of Germany, also taking into account Western and Eastern Germany. Running an NLPCA, we find four dimensions that cover the multidimensionality of national identity: nationalistic attitudes, national pride and attachment, cosmopolitan beliefs, and membership criteria defining national belonging. This article contributes to the empirical debate on measuring national identity by suggesting a new and flexible methodological approach that better grasps the concept's complexity and which we believe can move empirical research on national identity forward in and beyond Germany.... view less
Keywords
ISSP; Federal Republic of Germany; national identity; measure; old federal states; New Federal States; political attitude
Classification
Methods and Techniques of Data Collection and Data Analysis, Statistical Methods, Computer Methods
Political Process, Elections, Political Sociology, Political Culture
Free Keywords
non-linear principal component analysis; ISSP 2013
Document language
English
Publication Year
2023
Page/Pages
p. 885-903
Journal
Quality & Quantity, 57 (2023) 1
DOI
https://doi.org/10.1007/s11135-022-01398-6
ISSN
1573-7845
Status
Published Version; peer reviewed