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Deconstructing the literature of fisheries oceanography

or. Deconstructing the literature of fisheries oceanography. Joan Parker MLML/MBARI Research Library. Methods: Database Selection. ASFA Zoological Record Biosis. Web of Science Google Scholar Fish and Fisheries Worldwide Scopus. Methods: Search Strategy.

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Deconstructing the literature of fisheries oceanography

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  1. or Deconstructing the literature of fisheries oceanography Joan Parker MLML/MBARI Research Library

  2. Methods: Database Selection ASFA Zoological Record Biosis Web of Science Google Scholar Fish and Fisheries Worldwide Scopus

  3. Methods: Search Strategy Why not fisheries oceanography? Only ASFA uses this phrase as a descriptor. Mesoscale variability Sst Sea surface temperature* Oceanic conditions Oceanographic features El nino La nina ENSO Regime shift* Recruitment Community structure Larval assemblages Population dynamics Larval aggregations and Limited to publication years 2000-2004 to avoid currency issue

  4. Methods: Quantitative Index Analysis of overlap using Index of Similarity Si = a/a+b+c Where: a = common to a and b b= found in a but not b c= found in b not a

  5. Methods: Overlap of What? Sources Citations Dropped citations Controlled vocabulary Unique sources Less work Matched citations. Double-checked unmatched citations in each database. Arrived at two measures of similarity: absolute and apparent.

  6. Results: Similarity Index Sample Size Total citations 602 Citations in ASFA 205 Citations in Biosis 99 Citations in ZR 298 Similarity Index Values Absolute Apparent ASFA – Biosis .51 Biosis - Zoo Record .62 ASFA - Zoo Record .66 ASFA – Biosis .47 Biosis - Zoo Record .46 ASFA - Zoo Record .44 Statistically significant?

  7. Results: Unmatched Citations Took unmatched citations and noted source. Categorized as book, grey literature, unique journal or unique citation i.e. issue/article missing from database. 36% of unique items from ASFA 36% of unique items *not* from ASFA 61% of unique items due to missing issue 10% due to unique sources

  8. Results: Unmatched Citations Examined 89 citations, noting source and database. Blank space means citation not found in database.

  9. Results: Unmatched Citations

  10. Results: Core literature

  11. Results: Core literature

  12. more than Discussion Databases more similar than different using the absolute SI values, but not the apparent values. Why? Does Zoological Record have a new indexing policy? How can we help plug holes in ASFA’s coverage of the core? Why not recommend Google Scholar? Are metasearch engines an answer?

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