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6 January 2015 Weighting and Imputation for Missing Data in a Cost and Earnings Fishery Survey
Daniel K. Lew
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Abstract

Surveys of fishery participants are often voluntary and, as a result, commonly have missing data associated with them. The two primary causes of missing data that generate concern are unit non-response and item non-response. Unit non-response occurs when a potential respondent does not complete and return a survey, resulting in a missing respondent. Item non-response occurs in returned surveys when an individual question is unanswered. Both may lead to issues with extrapolating results to the population. We explain how to adjust data to estimate population parameters from surveys using two of the principal approaches available for addressing missing data, weighting and data imputation, and illustrate the effects they have on estimates of costs and earnings in the Alaska charter boat sector using data from a recent survey. The results suggest that ignoring missing data will lead to markedly different results than those estimated when controlling for the missing data.

JEL Codes: Q22, C8.

© 2015 MRE Foundation, Inc. All rights reserved.
Daniel K. Lew "Weighting and Imputation for Missing Data in a Cost and Earnings Fishery Survey," Marine Resource Economics 30(2), 219-230, (6 January 2015). https://doi.org/10.1086/679975
Received: 26 February 2014; Accepted: 1 October 2014; Published: 6 January 2015
JOURNAL ARTICLE
12 PAGES

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KEYWORDS
Alaska
charter boat fishing
data imputation
missing data
non-response bias
sample weighting
survey methods
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