03.12.2025 12:15 Francesco Montagna (Institute of Science and Technology Austria (ISTA)): Causal discovery with score matching and multiple environments
Suppose we are given some data and we hypothesize a structural causal model to describe them: how can we narrow the set of causal graphs compatible with our observations? The theory of identifiability aims to answer this question. We show that in the case of additive noise models, the score function of the data contains all the information about the causal graph. However, this requires strong and, crucially, hard-to-verify modeling assumptions, like additivity of the noise. When direct experiments to infer causality are not feasible, this raises the question: how can we move past these restrictions? Borrowing ideas from independent component analysis, we show how multiple environments (read: non i.i.d. data) can overcome these limitations: for structural causal models with arbitrary causal mechanisms, data from only three environments uniquely identify the causal graph from the Jacobian of the score function. Thus, non-i.i.d.-ness turns from a curse into a blessing for causal discovery.
Quelle
12.01.2026 14:15 Thomas Mikosch ( https://web.math.ku.dk/~mikosch/ ) : TBA
TBA
Quelle