Tensor-based Second-order Causal Discovery Algorithm
TSCD uses covariance matrices from observational and interventional data to identify causal structures in linear structural equation models on DAGs. It requires only uncorrelated noise and achieves identifiable causal orders and parameters with logarithmic intervention counts, scaling to hundreds of variables while remaining robust to noise and competitive with existing methods.