--- configs: - config_name: default data_files: - split: train path: data/train-* - split: validation path: data/validation-* dataset_info: features: - name: query dtype: string - name: question dtype: string - name: table_names sequence: string - name: tables sequence: string - name: answer dtype: string - name: source dtype: string - name: target dtype: string splits: - name: train num_bytes: 2203191673 num_examples: 6715 - name: validation num_bytes: 434370435 num_examples: 985 download_size: 535322409 dataset_size: 2637562108 task_categories: - table-question-answering --- # Dataset Card for "spider-tableQA" # Usage ```python import pandas as pd from datasets import load_dataset spider_tableQA = load_dataset("vaishali/spider-tableQA") for sample in spider_tableQA['train']: question = sample['question'] sql_query = sample['query'] input_table_names = sample["table_names"] input_tables = [pd.read_json(table, orient='split') for table in sample['tables']] answer = pd.read_json(sample['answer'], orient='split') # flattened input/output input_to_model = sample["source"] target = sample["target"] ``` # BibTeX entry and citation info ``` @inproceedings{pal-etal-2023-multitabqa, title = "{M}ulti{T}ab{QA}: Generating Tabular Answers for Multi-Table Question Answering", author = "Pal, Vaishali and Yates, Andrew and Kanoulas, Evangelos and de Rijke, Maarten", booktitle = "Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)", month = jul, year = "2023", address = "Toronto, Canada", publisher = "Association for Computational Linguistics", url = "https://aclanthology.org/2023.acl-long.348", doi = "10.18653/v1/2023.acl-long.348", pages = "6322--6334", abstract = "Recent advances in tabular question answering (QA) with large language models are constrained in their coverage and only answer questions over a single table. However, real-world queries are complex in nature, often over multiple tables in a relational database or web page. Single table questions do not involve common table operations such as set operations, Cartesian products (joins), or nested queries. Furthermore, multi-table operations often result in a tabular output, which necessitates table generation capabilities of tabular QA models. To fill this gap, we propose a new task of answering questions over multiple tables. Our model, MultiTabQA, not only answers questions over multiple tables, but also generalizes to generate tabular answers. To enable effective training, we build a pre-training dataset comprising of 132,645 SQL queries and tabular answers. Further, we evaluate the generated tables by introducing table-specific metrics of varying strictness assessing various levels of granularity of the table structure. MultiTabQA outperforms state-of-the-art single table QA models adapted to a multi-table QA setting by finetuning on three datasets: Spider, Atis and GeoQuery.", } ``` [More Information needed](https://github.com/huggingface/datasets/blob/main/CONTRIBUTING.md#how-to-contribute-to-the-dataset-cards)