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WSDM-2024/03-Table Meets LLM: Can Large Language Models Understand Structured Table Data? A Benchmark and Empirical Study #371

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BrambleXu opened this issue Mar 13, 2024 · 0 comments
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LLM(M) Large language models Survey Survey/Review

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BrambleXu commented Mar 13, 2024

Summary:

What input designs and choices are the most effective in enabling LLMs to understand tables?

Resource:

  • blog
  • pdf
  • [code](
  • [paper-with-code](

Paper information:

  • Author:
  • Dataset:
  • keywords:

Notes:

What input designs and choices are the most effective in enabling LLMs to understand tables?

image image image
  • Merged Cell Detection
  • Cell Lookup & Reverse Lookup
  • Column & Row Retrieval
image

Model Graph:

Result:

Thoughts:

Next Reading:

@BrambleXu BrambleXu added Survey Survey/Review LLM(M) Large language models labels Mar 13, 2024
@BrambleXu BrambleXu self-assigned this Mar 13, 2024
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