Title

Operations analysis of behavioral observation procedures: a taxonomy for modeling in an expert training system

Authors

Authors

R. D. Ray; J. M. Ray; D. A. Eckerman; L. M. Milkosky;L. J. Gillins

Comments

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Abbreviated Journal Title

Behav. Res. Methods

Keywords

Behavioral observation; Observation procedures; Observer training; Computer based training; Observer agreement; Expert training systems; INTEROBSERVER AGREEMENT; RELIABILITY; ACCURACY; CODE; Psychology, Mathematical; Psychology, Experimental

Abstract

This article introduces a taxonomy based on a procedural operations analysis (Verplanck, 1996) of various method descriptions found in the behavior observation research literature. How these alternative procedures impact the recording and subsequent analysis of behavioral events on the basis of the type of time and behavior recordings made is also discussed. The taxonomy was generated as a foundation for the continuing development of an expert training system called Train-to-Code (TTC; J. M. Ray & Ray, (Behavior Research Methods 40: 673-693, 2008)). Presently in its second version, TTC V2.0 is software designed for errorless training (Terrace, (Journal of the Experimental Analysis of Behavior 6:1-27, 1963)) of student accuracy and fluency in the direct observation and coding of behavioral or verbal events depicted via digital video. Two of 16 alternative procedures classified by the taxonomy are presently modeled in TTC's structural interface and functional services. These two models are presented as illustrations of how the taxonomy guides software user interface and algorithm development. The remaining 14 procedures are described in sufficient operational detail to allow similar model-oriented translation.

Journal Title

Behavior Research Methods

Volume

43

Issue/Number

3

Publication Date

1-1-2011

Document Type

Article

Language

English

First Page

616

Last Page

634

WOS Identifier

WOS:000300095300003

ISSN

1554-351X

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