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Closed- and open-vocabulary approaches to text analysis: A review, quantitative comparison, and recommendations.
Author(s) -
Johannes C. Eichstaedt,
Margaret L. Kern,
David B. Yaden,
H. Andrew Schwartz,
Salvatore Giorgi,
Gregory Park,
Courtney A. Hagan,
Victoria A. Tobolsky,
Laura Smith,
Anneke Buffone,
Jonathan Iwry,
Martin E. P. Seligman,
Lyle Ungar
Publication year - 2021
Publication title -
psychological methods
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 6.981
H-Index - 151
eISSN - 1939-1463
pISSN - 1082-989X
DOI - 10.1037/met0000349
Subject(s) - vocabulary , computer science , latent dirichlet allocation , natural language processing , sample (material) , diction , psychology , narrative , cognitive psychology , artificial intelligence , linguistics , topic model , philosophy , chemistry , poetry , chromatography
Technology now makes it possible to understand efficiently and at large scale how people use language to reveal their everyday thoughts, behaviors, and emotions. Written text has been analyzed through both theory-based, closed-vocabulary methods from the social sciences as well as data-driven, open-vocabulary methods from computer science, but these approaches have not been comprehensively compared. To provide guidance on best practices for automatically analyzing written text, this narrative review and quantitative synthesis compares five predominant closed- and open-vocabulary methods: Linguistic Inquiry and Word Count (LIWC), the General Inquirer, DICTION, Latent Dirichlet Allocation, and Differential Language Analysis. We compare the linguistic features associated with gender, age, and personality across the five methods using an existing dataset of Facebook status updates and self-reported survey data from 65,896 users. Results are fairly consistent across methods. The closed-vocabulary approaches efficiently summarize concepts and are helpful for understanding how people think, with LIWC2015 yielding the strongest, most parsimonious results. Open-vocabulary approaches reveal more specific and concrete patterns across a broad range of content domains, better address ambiguous word senses, and are less prone to misinterpretation, suggesting that they are well-suited for capturing the nuances of everyday psychological processes. We detail several errors that can occur in closed-vocabulary analyses, the impact of sample size, number of words per user and number of topics included in open-vocabulary analyses, and implications of different analytical decisions. We conclude with recommendations for researchers, advocating for a complementary approach that combines closed- and open-vocabulary methods. (PsycInfo Database Record (c) 2021 APA, all rights reserved).

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