JoLT: Enhancing Tabular Data Analysis with LLMs

JoLT: Enhancing Tabular Data Analysis with LLMs

A novel approach for joint probabilistic predictions on structured data

JoLT leverages the in-context learning capabilities of Large Language Models to create powerful joint probability distributions for tabular data, enabling more accurate predictions with uncertainty quantification.

  • Joint predictions across multiple target variables, handling heterogeneous data types
  • Context-aware analysis that incorporates domain knowledge embedded in LLMs
  • Flexible conditioning on user-specified side information
  • Uncertainty quantification through probabilistic predictions

This engineering advancement matters because it provides a streamlined method for complex tabular data analysis without requiring specialized model architectures or extensive domain expertise.

JoLT: Joint Probabilistic Predictions on Tabular Data Using LLMs

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