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Articles

Changing self-reported physical activity using different types of affectively and cognitively framed health messages, in a student population

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Pages 198-207 | Received 10 Nov 2013, Accepted 27 Nov 2014, Published online: 09 Jan 2015
 

Abstract

The present research focused upon the power of different messages to increase self-reported physical activity (PA). Five hundered and ninety six participants were randomised to one of five conditions that varied in the content of message: short-term affective, short-term cognitive, long-term affective, long-term cognitive and a no message control. PA was measured at baseline and follow-up (seven days later) was done using the Godin Leisure Time Exercise Questionnaire over the subsequent seven day period. The affective short-term message (ASM) was shown to be equally effective at increasing self-reported PA as a cognitive long-term message. Furthermore, when controlling for baseline activity levels, the ASM emerged as being the message that produced the highest levels of self-reported PA at follow-up. The findings point to the value of distinguishing between health messages in terms of the focus on affective and cognitive outcomes and the temporal nature of the outcomes (short-term or long-term).

Additional information

Funding

This work was part of a PhD funded by Unilever Research and the Institute of Psychological Sciences, University of Leeds.

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