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A further development in social marketing application of the MOA framework and behavioral implications

journal contribution
posted on 2003-01-01, 00:00 authored by Wayne Binney, J Hall, M Shaw
This social marketing study discusses the application of Rothschild’s MOA framework (Motivation, Opportunity, and Ability) in a land-use management context. The authors hypothesize that landholders with higher levels of MOA are positively associated with behavior that would result in the effective control of a vertebrate pest (the European rabbit). A random sample of 566 land managers in southeastern Australia was obtained. The development of scales associated with this study were the result of intensive qualitative research, including focus groups, in-depth interviews, and a thorough review of secondary resources. The scales were developed through a factor analytic process and were piloted and pre-tested before being used. <br><br>From the study it is ascertained that about one-third of land managers fall into the highest level of effective behavior, and for the remainder, social marketing interventions, using marketing, education, and the law, could be applied to changebehavior. The study provides evidence that Rothschild’s theoretical MOA framework can be applied to a social market and thus provides guidance on the types of interventions that may be effective in altering behavior. The MOA framework also provides a mechanism for segmentation that can be used to describe various markets and gives direction to the interventions that may be effective in altering behavior. <br>

History

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Location

Thousand Oaks, Calif.

Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Copyright notice

2003, Sage

Journal

Marketing theory

Volume

3

Pagination

387 - 408

ISSN

1470-5931

eISSN

1741-301X

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