The promise of open survey questions-The validation of text-based job satisfaction measures.

Recent advances in computer-aided text analysis (CATA) have allowed organizational scientists to construct reliable and convenient measures from open texts. As yet, there is a lack of research into using CATA to analyze responses to open survey questions and constructing text-based measures of psych...

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Main Authors: Indy Wijngaards, Martijn Burger, Job van Exel
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0226408
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spelling doaj-5f2904fad3c240799d4de7fe7d5a96a12021-03-03T21:43:59ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-011412e022640810.1371/journal.pone.0226408The promise of open survey questions-The validation of text-based job satisfaction measures.Indy WijngaardsMartijn BurgerJob van ExelRecent advances in computer-aided text analysis (CATA) have allowed organizational scientists to construct reliable and convenient measures from open texts. As yet, there is a lack of research into using CATA to analyze responses to open survey questions and constructing text-based measures of psychological constructs. In our study, we demonstrated the potential of CATA methods for the construction of text-based job satisfaction measures based on responses to a completely open and semi-open question. To do this, we employed three sentiment analysis techniques: Linguistic Inquiry and Word Count 2015, SentimentR and SentiStrength, and quantified the forms of measurement error they introduced: specific factor error, algorithm error and transient error. We conducted an initial test of the text-based measures' validity, assessing their convergence with closed-question job satisfaction measures. We adopted a time-lagged survey design (Nwave 1 = 996; Nwave 2 = 116) to test our hypotheses. In line with our hypotheses, we found that specific factor error is higher in the open question text-based measure than in the semi-open question text-based measure. As expected, algorithm error was substantial for both the open and semi-open question text-based measures. Transient error in the text-based measures was higher than expected, as it generally exceeded the transient error in the human-coded and the closed job satisfaction question measures. Our initial test of convergent and discriminant validity indicated that the semi-open question text-based measure is especially suitable for measuring job satisfaction. Our article ends with a discussion of limitations and an agenda for future research.https://doi.org/10.1371/journal.pone.0226408
collection DOAJ
language English
format Article
sources DOAJ
author Indy Wijngaards
Martijn Burger
Job van Exel
spellingShingle Indy Wijngaards
Martijn Burger
Job van Exel
The promise of open survey questions-The validation of text-based job satisfaction measures.
PLoS ONE
author_facet Indy Wijngaards
Martijn Burger
Job van Exel
author_sort Indy Wijngaards
title The promise of open survey questions-The validation of text-based job satisfaction measures.
title_short The promise of open survey questions-The validation of text-based job satisfaction measures.
title_full The promise of open survey questions-The validation of text-based job satisfaction measures.
title_fullStr The promise of open survey questions-The validation of text-based job satisfaction measures.
title_full_unstemmed The promise of open survey questions-The validation of text-based job satisfaction measures.
title_sort promise of open survey questions-the validation of text-based job satisfaction measures.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description Recent advances in computer-aided text analysis (CATA) have allowed organizational scientists to construct reliable and convenient measures from open texts. As yet, there is a lack of research into using CATA to analyze responses to open survey questions and constructing text-based measures of psychological constructs. In our study, we demonstrated the potential of CATA methods for the construction of text-based job satisfaction measures based on responses to a completely open and semi-open question. To do this, we employed three sentiment analysis techniques: Linguistic Inquiry and Word Count 2015, SentimentR and SentiStrength, and quantified the forms of measurement error they introduced: specific factor error, algorithm error and transient error. We conducted an initial test of the text-based measures' validity, assessing their convergence with closed-question job satisfaction measures. We adopted a time-lagged survey design (Nwave 1 = 996; Nwave 2 = 116) to test our hypotheses. In line with our hypotheses, we found that specific factor error is higher in the open question text-based measure than in the semi-open question text-based measure. As expected, algorithm error was substantial for both the open and semi-open question text-based measures. Transient error in the text-based measures was higher than expected, as it generally exceeded the transient error in the human-coded and the closed job satisfaction question measures. Our initial test of convergent and discriminant validity indicated that the semi-open question text-based measure is especially suitable for measuring job satisfaction. Our article ends with a discussion of limitations and an agenda for future research.
url https://doi.org/10.1371/journal.pone.0226408
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