Loneliness - an important indicator of social health - is increasingly recognized to derive from
factors operating at multiple levels. However, simultaneously examining the role of factors at
multiple levels implies using large samples and testing multiple factors at the same time, which
traditional statistical methods cannot ...
Loneliness - an important indicator of social health - is increasingly recognized to derive from
factors operating at multiple levels. However, simultaneously examining the role of factors at
multiple levels implies using large samples and testing multiple factors at the same time, which
traditional statistical methods cannot accommodate. We used machine learning techniques to
address this problem. We identify the most important out of 32 correlates of loneliness frequency
in a large sample of people ages 16+ years, residing all over the world, who took part in the BBC
Loneliness Experiment. Factors spanned individual, relational, socio-cultural, and demographical
areas. The most statistically important associate of loneliness was daily experiences with
prejudice (or stigma), followed by couple satisfaction, neuroticism (emotional stability), personal
self-esteem, average hours spent alone daily, extraversion, social capital, and relational mobility.
Interaction effects were also evident, showing that experiences with prejudice were most
negatively associated with loneliness when individuals spent a lot of time alone, and the least
when individuals were emotionally stable, had high personal self-esteem, or had high levels of
couple satisfaction. This research highlights what factors need to be considered when developing
effective interventions to mitigate loneliness.
Clinical Impact Statement -
This research points out the relative importance of multiple correlates of loneliness for people
over 16 years old, residing all over the world. Some of the factors that emerged as most
important are already often considered when developing interventions (e.g. low self-esteem), but
others are less so (e.g., experiences with social stigma and poor couple satisfaction). These need
to be considered by those developing interventions to prevent or address loneliness.