Journal article
Positive psychology is better served by a bivariate rather than bipolar conceptualization of mental health and mental illness: a commentary on Zhao & Tay (2022)
The Journal of Positive Psychology, Vol.19(2), pp.337-341
2024
Abstract
The nature of the relationship between mental health and mental illness is complex and depends on the way we measure and define each concept. A recent article in the Journal of Positive Psychology raises an important question: will positive psychology be better served by a bipolar or bivariate conceptualization of the relationship between well-being and ill-being? Here, bipolar refers to a conceptualization where mental health and mental illness are opposite anchors of the same continuum and bivariate considers each concept related yet distinct. We argue that the bivariate conceptualization offers academic opportunities that are not possible under a bipolar view. We argue that the bipolar conceptualization limits academic progress, diminishes the opportunity for personal recovery, and is not supported by the literature. We further summarize the measurement considerations that would improve the 'separability' between mental health and mental illness, to realize the academic opportunities that the bivariate model offers positive psychology.
Details
- Title
- Positive psychology is better served by a bivariate rather than bipolar conceptualization of mental health and mental illness: a commentary on Zhao & Tay (2022)
- Authors
- M. Iasiello (Corresponding Author) - South Australian Health and Medical Research InstituteJ. van Agteren (Author) - South Australian Health and Medical Research InstituteK. Ali (Author) - Flinders UniversityD. B Fassnacht (Author) - Flinders University
- Publication details
- The Journal of Positive Psychology, Vol.19(2), pp.337-341
- Publisher
- Routledge
- DOI
- 10.1080/17439760.2023.2179935
- ISSN
- 1743-9779
- Organisation Unit
- School of Health - Psychology
- Language
- English
- Record Identifier
- 99726820002621
- Output Type
- Journal article
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- Domestic collaboration
- Web Of Science research areas
- Psychology, Multidisciplinary
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Source: InCites