iTAG generates natural text paired with accurate causal graph annotations by framing concept assignment as an inverse problem and refining selections via chain-of-thought reasoning until the text's relations align with the target causal structure.
(b) Remove the single lowest-support edge
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iTAG: Inverse Design for Natural Text Generation with Accurate Causal Graph Annotations
iTAG generates natural text paired with accurate causal graph annotations by framing concept assignment as an inverse problem and refining selections via chain-of-thought reasoning until the text's relations align with the target causal structure.