Text2Analysis: A Benchmark of Table Question Answering with Advanced Data Analysis and Unclear Queries
- Xinyi He ,
- Mengyu Zhou ,
- Xinrun Xu ,
- Xiaojun Ma ,
- Rui Ding ,
- Lun Du ,
- Yan Gao ,
- Ran Jia ,
- Xu Chen ,
- Shi Han ,
- Zejian Yuan ,
- Dongmei Zhang
The 38th Annual AAAI Conference on Artificial Intelligence (AAAI '24) |
Tabular data analysis is crucial in various fields, and large language models show promise in this area. However, current research mostly focuses on rudimentary tasks like Text2SQL and TableQA, neglecting advanced analysis like forecasting and chart generation. To address this gap, we developed the Text2Analysis benchmark, incorporating advanced analysis tasks that go beyond the SQL-compatible operations and require more in-depth analysis. We also develop five innovative and effective annotation methods, harnessing the capabilities of large language models to enhance data quality and quantity. Additionally, we include unclear queries that resemble real-world user questions to test how well models can understand and tackle such challenges. Finally, we collect 2249 query-result pairs with 347 tables. We evaluate five state-of-the-art models using three different metrics and the results show that our benchmark presents introduces considerable challenge in the field of tabular data analysis, paving the way for more advanced research opportunities.