Understanding Individual Differences in Happiness Sources and Implications for Health Technology Design: Exploratory Analysis of an Open Dataset

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Abstract

Psychologists have developed frameworks to understand many constructs, which have subsequently informed the design of digital mental health interventions (DMHIs) aimed at improving mental health outcomes. The science of happiness is one such domain that holds significant applied importance due to its links to well-being and evidence that happiness can be cultivated through interventions. However, as with many constructs, the unique ways in which individuals experience happiness present major challenges for designing personalized DMHIs. This paper aims to (1) present an analysis of how sex may interact with age, marital status, and parental status to predict individual differences in sources of happiness, and (2) to present a preliminary discussion of how open datasets may contribute to the process of designing health-related technology innovations. The HappyDB is an open database of 100,535 statements of what people consider to have made them happy, with some people asking to consider the past 24 hours (49,831 statements) and some considering the last 3 months (50,704 statements). Demographic information is also provided. Binary logistic regression analyses are used to determine whether various groups differed in their likelihood of selecting or not selecting a category as a source of their happiness. Sex and age interacted to influence what was selected as sources of happiness, with patterns being less consistent among female individuals in comparison with male individuals. For marital status, differences in sources of happiness were predominantly between married individuals and those who are divorced or separated, but these were the same for both sexes. Married, single, and widowed individuals were all largely similar in their likelihood of selecting each of the categories as a source of their happiness. However, there were some anomalies, and sex appeared to be important in these anomalies. Sex and parental status also interacted to influence what was selected as sources of happiness. Sex interacts with age, marital status, and parental status in the likelihood of reporting affection, bonding, leisure, achievement, or enjoying the moment as sources of happiness. The contribution of an open dataset to understanding individual differences in sources of happiness is discussed in terms of its potential role in addressing the challenges of designing DMHIs that are ethical, responsible, evidence based, acceptable, engaging, inclusive, and effective for users. The discussion considers how the content design of DMHIs in general may benefit from exploring new methods informed by diverse data sources. It is proposed that examining the extent to which insights from nondigital settings can inform requirements gathering for DMHIs is warranted. [Abstract copyright: ©Edel Ennis, Raymond Bond, Maurice Mulvenna, Colm Sweeney. Originally published in JMIR Formative Research (https://formative.jmir.org), 29.01.2025.]
Original languageEnglish
Pages (from-to)e65658
Number of pages23
JournalJMIR Formative Research
Volume9
Issue numbere65658
Early online date29 Jan 2025
DOIs
Publication statusPublished online - 29 Jan 2025

Bibliographical note

©Edel Ennis, Raymond Bond, Maurice Mulvenna, Colm Sweeney. Originally published in JMIR Formative Research (https://formative.jmir.org), 29.01.2025.

Keywords

  • Happiness
  • Gender
  • Age
  • Marital status
  • Parents
  • Affection
  • Achievement
  • Health Technology Design
  • Crowdsourcing
  • Datasets as Topic
  • Humans
  • Male
  • Biomedical Technology
  • Individuality
  • Aged, 80 and over
  • Female
  • Adult
  • Aged
  • Interpersonal Relations
  • achievements
  • regression analyses
  • mental health
  • datasets
  • sexes
  • happiness
  • marital status
  • digital mental health interventions
  • well-being
  • affections
  • digital health
  • evidence based
  • age
  • parents

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