Task Expansion and Cross Refinement for Open-World Conditional Modeling
arXiv cs.LG / 3/17/2026
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Key Points
- TEXR introduces Task Expansion and Cross Refinement (TEXR) to expand open-world conditional modeling by generating diverse, uninstantiated dataset schemas and weakly instantiating them with structured probabilistic generators guided by large language models.
- It performs cross-model refinement by training on disjoint data partitions and revising synthetic values across splits to reduce confirmation bias and improve pseudo-value quality.
- The refined synthetic datasets are aggregated with real data to train a unified conditional model, boosting zero-, few-, and many-shot performance across heterogeneous tabular benchmarks.
- Across multiple backbones, TEXR demonstrates consistent improvements, highlighting the value of structured task expansion and cross refinement for open-world conditional modeling.
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