Nieminen, Timo A. and Choi, Serene Hyun-Jin and Bahr, Mark and Bahr, Nan (2002) Improving behaviour classification consistency: a technique from biological taxonomy. [Conference Paper]
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Abstract
Quantitative behaviour analysis requires the classification of behaviour to produce the basic data. In practice, much of this work will be performed by multiple observers, and maximising inter-observer consistency is of particular importance. Another discipline where consistency in classification is vital is biological taxonomy. A classification tool of great utility, the binary key, is designed to simplify the classification decision process and ensure consistent identification of proper categories. We show how this same decision-making tool - the binary key - can be used to promote consistency in the classification of behaviour. The construction of a binary key also ensures that the categories in which behaviour is classified are complete and non-overlapping. We discuss the general principles of design of binary keys, and illustrate their construction and use with a practical example from education research.
| Item Type: | Conference Paper |
|---|---|
| Keywords: | classification; behaviour analysis; binary keys |
| Subjects: | Psychology > Behavioral Analysis |
| ID Code: | 3963 |
| Deposited By: | Nieminen, Dr Timo A. |
| Deposited On: | 29 Nov 2004 |
| Last Modified: | 12 Sep 2007 17:54 |
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