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This paper proposes a reformulation to apply tabular foundation models (TFMs) to discrete choice estimation, addressing the structural gap of row-independent assumptions. The best reformulation outperforms hierarchical Bayesian estimation by 8% in holdout log-likelihood and 3.6% in hit rate while running 16 times faster.