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Information loss and bias in likert survey responses
by
Westland, J. Christopher
in
Analysis
/ Approximation
/ Automation
/ Bias
/ Computer and Information Sciences
/ Control equipment
/ Data capture
/ Empirical analysis
/ Entropy
/ Epidemiology
/ Expected utility
/ Health behavior
/ Kurtosis
/ Mapping
/ Methods
/ Opinion polls
/ Physical Sciences
/ Polls & surveys
/ Preferences
/ Public opinion
/ Public opinion polls
/ Questionnaires
/ Random variables
/ Research and Analysis Methods
/ Skewness
/ Statistical analysis
/ Surveys
2022
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Information loss and bias in likert survey responses
by
Westland, J. Christopher
in
Analysis
/ Approximation
/ Automation
/ Bias
/ Computer and Information Sciences
/ Control equipment
/ Data capture
/ Empirical analysis
/ Entropy
/ Epidemiology
/ Expected utility
/ Health behavior
/ Kurtosis
/ Mapping
/ Methods
/ Opinion polls
/ Physical Sciences
/ Polls & surveys
/ Preferences
/ Public opinion
/ Public opinion polls
/ Questionnaires
/ Random variables
/ Research and Analysis Methods
/ Skewness
/ Statistical analysis
/ Surveys
2022
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Do you wish to request the book?
Information loss and bias in likert survey responses
by
Westland, J. Christopher
in
Analysis
/ Approximation
/ Automation
/ Bias
/ Computer and Information Sciences
/ Control equipment
/ Data capture
/ Empirical analysis
/ Entropy
/ Epidemiology
/ Expected utility
/ Health behavior
/ Kurtosis
/ Mapping
/ Methods
/ Opinion polls
/ Physical Sciences
/ Polls & surveys
/ Preferences
/ Public opinion
/ Public opinion polls
/ Questionnaires
/ Random variables
/ Research and Analysis Methods
/ Skewness
/ Statistical analysis
/ Surveys
2022
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Journal Article
Information loss and bias in likert survey responses
2022
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Overview
Likert response surveys are widely applied in marketing, public opinion polls, epidemiological and economic disciplines. Theoretically, Likert mapping from real-world beliefs could lose significant amounts of information, as they are discrete categorical metrics. Similarly, the subjective nature of Likert-scale data capture, through questionnaires, holds the potential to inject researcher biases into the statistical analysis. Arguments and counterexamples are provided to show how this loss and bias can potentially be substantial under extreme polarization or strong beliefs held by the surveyed population, and where the survey instruments are poorly controlled. These theoretical possibilities were tested using a large survey with 14 Likert-scaled questions presented to 125,387 respondents in 442 distinct behavioral-demographic groups. Despite the potential for bias and information loss, the empirical analysis found strong support for an assumption of minimal information loss under Normal beliefs in Likert scaled surveys. Evidence from this study found that the Normal assumption is a very good fit to the majority of actual responses, the only variance from Normal being slightly platykurtic (kurtosis ~ 2) which is likely due to censoring of beliefs after the lower and upper extremes of the Likert mapping. The discussion and conclusions argue that further revisions to survey protocols can assure that information loss and bias in Likert-scaled data are minimal.
Publisher
Public Library of Science,Public Library of Science (PLoS)
Subject
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