Which Factors Actually Move the Outcome?
Key driver analysis
The Auto-Build analyses rank which factors predict the outcome. This takes that same set and asks a sharper question: which of those key predictors actually move the outcome when you act on them — the levers — versus which only ride along. It also adds direction the ranked lists don't: whether each factor acts directly or only indirectly, through other factors. A total complement to the main analyses, with a what-if simulator to test scenarios.
Bayesian Network Key Driver Analysis
BETAA network over the modeled factors. Lines show which factors depend on which; a line's thickness is how consistently that link holds up across resamples. Factors are ranked by how much the outcome changes when a factor is set to a different value — the two values shown on each row — once the rest of the network is accounted for. The effects are valid under the structure shown; treat thin (low-confidence) links as unsettled. These are the factors Auto-Build selected for this outcome — change the set or refit there.
How much each factor lifts the outcome
A model projection — the whole network responds, not a raw crosstab: how far the outcome would rise above its current level if that factor were maxed for everyone. Direct = feeds straight into the outcome; indirect = through other factors; no path = no route to the outcome.