Interpreting Bayesian linear regression in JASP
It is my first time I analyze data with JASP. Thank you very much for this intuitive tool! I have a question concerning Bayesian linear regression. In an exploratory fashion, I computed 3 hierarchical linear regressions: As predictor variables, I have included all four subscales of my construct of interest (S1-S4) and I have 3 different DVs (DV1, DV2, DV3).
For DV1, I suppose that models S2+S4, S3+S4 or S2+S3+S4 work the best as they show the highest BF10 (still, no big difference between the three models). But concerning DV2, I am a little bit lost. First, there were no supported correlations (preliminary analyses) between the DV2 and the four subscales. Still, I computed the regression that revealed the following output. Now I am wondering how to interpret the output. Can somebody help me out?
Thank you very much!