A Quantitative Model for Ranking and Selecting Communities Most Involved in Commercial Fisheries
Dados Bibliográficos
AUTOR(ES) | |
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ANO | 2007 |
TIPO | Artigo |
PERIÓDICO | NAPA Bulletin |
ISSN | 1556-4789 |
E-ISSN | 1556-4797 |
EDITORA | Wiley-Blackwell |
DOI | 10.1525/napa.2007.28.1.43 |
ADICIONADO EM | 2025-08-18 |
MD5 |
bdafedc875c0473cb3d058d95ea37923
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Resumo
This article proposes a quantitative model for ranking commercial fisheries involvement by communities and describes our experience applying this model to North Pacific and West Coast fisheries. Analysis of recent fishing community profiling projects shows that there have been four basic approaches to selecting a manageable number of communities, including focusing on major ports, aggregated regions, representative examples, and the top of a ranked list. Data envelopment analysis (DEA) is presented as a nonparametric, multidimensional modeling method appropriate for evaluating and ranking fishing communities based on an array of quantitative indicators of fisheries involvement. The results of applying this model to communities involved in West Coast and North Pacific fisheries are summarized. Nineteen indicators of fisheries dependence and 92 indicators of fisheries engagement were modeled yielding ranked lists of 1,564 and 1,760 U.S. communities, respectively. Comparison of the DEA method's topranked communities in Alaska to those selected by an indicators‐based threshold‐trigger model for Alaska showed 71 percent overlap of selected communities. The strengths and weaknesses of the DEA modeling approach are discussed. DEA modeling is not a substitute for ethnographic analysis of communities based on fieldwork, but it does present an enticing way to consider which communities might be selected for fieldwork or profiling, or as fishing communities, based on quantitative indicators.