IR Home
MEPS
Home
Editors
Forthcoming
Information
Subscribe
Journals
Home
MEPS
AME
CR
DAO
ESEP
Search
Subscribe
Book Series
EE Books
Top Books
ESEP Books
Order
EEIU Brochures
(pdf format)
Discussion Forums
Home
Research
Endangered Species Programs
Institutions
International Ecology Institute
Eco-Ethics International Union
Foundation
Otto Kinne Foundation
 |  |
MEPS 247:17-25 (2003)
|
Abstract
|

Do experts make mistakes? A comparison of human and machine indentification of dinoflagellates
Phil F. Culverhouse1,*, Robert Williams2, Beatriz Reguera3, Vincent Herry1, Sonsoles González-Gil3
1Centre for Intelligent Systems, University of Plymouth, Plymouth PL4 8AA, United Kingdom
2Plymouth Marine Laboratory, Prospect Place, The Hoe, Plymouth PL1 3DH, United Kingdom
3Instituto Español de Oceanografía Apartado 1552, 36280 Vigo, Spain
*Email: p.culverhouse@plymouth.ac.uk

ABSTRACT: The authors present evidence of the difficulties facing human taxonomists/ecologists in identifying marine dinoflagellates. This is especially important for work on harmful algal blooms in marine aquaculture. It is shown that it is difficult for
people to categorise specimens from species with significant morphological variation, perhaps with morphologies overlapping with those of other species. Trained personnel can be expected to achieve 67 to 83% self-consistency and 43%
consensus between people in an expert taxonomic labelling task. Experts who are routinely engaged in particular discriminations can return accuracies in the range of 84 to 95%. In general, neither human nor machine can be expected to give highly accurate
or repeatable labelling of specimens. It is also shown that automation methods can perform as well as humans on these complex categorisations.
KEY WORDS: Classification · HAB dinoflagellates · Neural networks · Expert judgement · Categorisation · Marine ecology
Full text in pdf format

Published in MEPS Vol.
247
(2003) on February 4
Print ISSN: 0171-8630; Online ISSN: 1616-1599.
Copyright © Inter-Research, Oldendorf/Luhe, 2003
|