Improving the Measurement of Shared Cultural Schemas with Correlational Class Analysis: Theory and Method

Measurement of shared cultural schemas is a central methodological challenge for the sociology of culture. Relational Class Analysis (RCA) is a recently developed technique for identifying such schemas in survey data. However, existing work lacks a clear definition of such schemas, which leaves RCA’...

Full description

Bibliographic Details
Main Author: Andrei Boutyline
Format: Article
Language:English
Published: Society for Sociological Science 2017-05-01
Series:Sociological Science
Subjects:
Online Access:https://www.sociologicalscience.com/articles-v4-15-353/
id doaj-c134b464fcb04e96b3c7ba829f2e6d51
record_format Article
spelling doaj-c134b464fcb04e96b3c7ba829f2e6d512020-11-24T22:38:12ZengSociety for Sociological ScienceSociological Science2330-66962330-66962017-05-0141535339310.15195/v4.a153975Improving the Measurement of Shared Cultural Schemas with Correlational Class Analysis: Theory and MethodAndrei Boutyline0 University of California, Berkeley Measurement of shared cultural schemas is a central methodological challenge for the sociology of culture. Relational Class Analysis (RCA) is a recently developed technique for identifying such schemas in survey data. However, existing work lacks a clear definition of such schemas, which leaves RCA’s accuracy largely unknown. Here, I build on the theoretical intuitions behind RCA to arrive at this definition. I demonstrate that shared schemas should result in linear dependencies between survey rows—the relationship usually measured with Pearson’s correlation. I thus modify RCA into a “Correlational Class Analysis” (CCA). When I compare the methods using a broad set of simulations, results show that CCA is reliably more accurate at detecting shared schemas than RCA, even in scenarios that substantially violate CCA’s assumptions. I find no evidence of theoretical settings where RCA is more accurate. I then revisit a previous RCA analysis of the 1993 General Social Survey musical tastes module. Whereas RCA partitioned these data into three schematic classes, CCA partitions them into four. I compare these results with a multiple-groups analysis in structural equation modeling and find that CCA’s partition yields greatly improved model fit over RCA. I conclude with a parsimonious framework for future work.https://www.sociologicalscience.com/articles-v4-15-353/Cultural SchemasCulture and CognitionHeterogeneous LogicsMusic TastesNetwork AnalysisOmnivorousness
collection DOAJ
language English
format Article
sources DOAJ
author Andrei Boutyline
spellingShingle Andrei Boutyline
Improving the Measurement of Shared Cultural Schemas with Correlational Class Analysis: Theory and Method
Sociological Science
Cultural Schemas
Culture and Cognition
Heterogeneous Logics
Music Tastes
Network Analysis
Omnivorousness
author_facet Andrei Boutyline
author_sort Andrei Boutyline
title Improving the Measurement of Shared Cultural Schemas with Correlational Class Analysis: Theory and Method
title_short Improving the Measurement of Shared Cultural Schemas with Correlational Class Analysis: Theory and Method
title_full Improving the Measurement of Shared Cultural Schemas with Correlational Class Analysis: Theory and Method
title_fullStr Improving the Measurement of Shared Cultural Schemas with Correlational Class Analysis: Theory and Method
title_full_unstemmed Improving the Measurement of Shared Cultural Schemas with Correlational Class Analysis: Theory and Method
title_sort improving the measurement of shared cultural schemas with correlational class analysis: theory and method
publisher Society for Sociological Science
series Sociological Science
issn 2330-6696
2330-6696
publishDate 2017-05-01
description Measurement of shared cultural schemas is a central methodological challenge for the sociology of culture. Relational Class Analysis (RCA) is a recently developed technique for identifying such schemas in survey data. However, existing work lacks a clear definition of such schemas, which leaves RCA’s accuracy largely unknown. Here, I build on the theoretical intuitions behind RCA to arrive at this definition. I demonstrate that shared schemas should result in linear dependencies between survey rows—the relationship usually measured with Pearson’s correlation. I thus modify RCA into a “Correlational Class Analysis” (CCA). When I compare the methods using a broad set of simulations, results show that CCA is reliably more accurate at detecting shared schemas than RCA, even in scenarios that substantially violate CCA’s assumptions. I find no evidence of theoretical settings where RCA is more accurate. I then revisit a previous RCA analysis of the 1993 General Social Survey musical tastes module. Whereas RCA partitioned these data into three schematic classes, CCA partitions them into four. I compare these results with a multiple-groups analysis in structural equation modeling and find that CCA’s partition yields greatly improved model fit over RCA. I conclude with a parsimonious framework for future work.
topic Cultural Schemas
Culture and Cognition
Heterogeneous Logics
Music Tastes
Network Analysis
Omnivorousness
url https://www.sociologicalscience.com/articles-v4-15-353/
work_keys_str_mv AT andreiboutyline improvingthemeasurementofsharedculturalschemaswithcorrelationalclassanalysistheoryandmethod
_version_ 1725714219644485632