This paper presents a method for the digital history of a discipline (social psychology in this application) through the analysis of scientifc publications. The titles of a comprehensive set of papers published in the Journal of Personality and Social Psychology (1965– 2021) were collected, yielding a total of 10,222 items. The corpus thus constructed underwent several stages of preprocessing until the fnal conversion into a terms x time-points matrix, where terms are stemmed words and multi-words. After normalizing frequencies via a chi square-like transformation, clusters of words portraying similar temporal patterns were identifed by functional (textual) data analysis and distance-based curve clustering. Among the best candidates in terms of the number of clusters, the solutions with six, nine and thirteen clusters (from lower to higher resolution) have been chosen and the nesting relationship demonstrated. They reveal—at diferent levels of granularity—increasing, decreasing, and stable keywords trends, highlighting methods, theories, and application domains that have become more popular in recent years, lost popularity, or have remained in common use. Moreover, this method allows to highlight historical issues (such as crises in the discipline or debates over the use of terms). The results highlight the core topics of social psychology in the past and today, underlying the crucial contribution of this method for the digital history of a discipline.
Portraying the life cycle of ideas in social psychology through functional (textual) data analysis: a toolkit for digital history / Rizzoli, Valentina; Trevisani, Matilde; Tuzzi, Arjuna. - In: SCIENTOMETRICS. - ISSN 0138-9130. - 128:(2023), pp. 5197-5226. [10.1007/s11192-023-04722-5]
Portraying the life cycle of ideas in social psychology through functional (textual) data analysis: a toolkit for digital history
Rizzoli, Valentina
;
2023
Abstract
This paper presents a method for the digital history of a discipline (social psychology in this application) through the analysis of scientifc publications. The titles of a comprehensive set of papers published in the Journal of Personality and Social Psychology (1965– 2021) were collected, yielding a total of 10,222 items. The corpus thus constructed underwent several stages of preprocessing until the fnal conversion into a terms x time-points matrix, where terms are stemmed words and multi-words. After normalizing frequencies via a chi square-like transformation, clusters of words portraying similar temporal patterns were identifed by functional (textual) data analysis and distance-based curve clustering. Among the best candidates in terms of the number of clusters, the solutions with six, nine and thirteen clusters (from lower to higher resolution) have been chosen and the nesting relationship demonstrated. They reveal—at diferent levels of granularity—increasing, decreasing, and stable keywords trends, highlighting methods, theories, and application domains that have become more popular in recent years, lost popularity, or have remained in common use. Moreover, this method allows to highlight historical issues (such as crises in the discipline or debates over the use of terms). The results highlight the core topics of social psychology in the past and today, underlying the crucial contribution of this method for the digital history of a discipline.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.