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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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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