“…Machine learning methods are seen as an appropriate tool to analyze large (and often unstructured) data (Faraway and Augustin, 2018). These methods can find complex (e.g., non-linear) patterns in data and have enabled accurate predictions of a number of different behaviors, for example, suicide attempts (Walsh et al, 2017); environmental behaviors (Lavelle-Hill et al, 2020), life outcomes (e.g., education achievement (Lavelle-Hill et al, 2023b); marital hardship (Salganik et al, 2020)), psychological constructs (e.g., personality traits (Youyou et al, 2015;Stachl et al, 2020)), developmental trajectories (Van Lissa et al, 2023;Van Lissa, 2022), clinical diagnoses (e.g., Alzheimer's disease (Lei et al, 2022)) as well as treatment outcomes (Chekroud et al, 2016). Contrary to the traditional statistical approach, which usually focuses on a single theoretically formalized statistical model, (supervised) machine learning follows an "algorithmic modeling" approach (Breiman, 2001b), which makes no assumptions about the underlying data generating mechanism, and seeks to find the function that best predicts the outcome from a set of possible predictors.…”