--- license: mit configs: - config_name: table data_files: tatqa_table.jsonl - config_name: test_query data_files: tatqa_query.jsonl task_categories: - table-question-answering --- 📄 [Paper](https://arxiv.org/abs/2504.01346) | 👨🏻‍💻 [Code](https://github.com/jiaruzouu/T-RAG) ## 🔍 Introduction Retrieval-Augmented Generation (RAG) has become a key paradigm to enhance Large Language Models (LLMs) with external knowledge. While most RAG systems focus on **text corpora**, real-world information is often stored in **tables** across web pages, Wikipedia, and relational databases. Existing methods struggle to retrieve and reason across **multiple heterogeneous tables**. This repository provides the implementation of **T-RAG**, a novel table-corpora-aware RAG framework featuring: - **Hierarchical Memory Index** – organizes heterogeneous table knowledge at multiple granularities. - **Multi-Stage Retrieval** – coarse-to-fine retrieval combining clustering, subgraph reasoning, and PageRank. - **Graph-Aware Prompting** – injects relational priors into LLMs for structured tabular reasoning. - **MultiTableQA Benchmark** – a large-scale dataset with **57,193 tables** and **23,758 questions** across various tabular tasks. For MultiTableQA, we release a comprehensive benchmark, including five different datasets covering table fact-checking, single-hop QA, and multi-hop QA: | Dataset | Link | |-----------------------|------| | MultiTableQA-TATQA | 🤗 [dataset link](https://huggingface.co/datasets/jiaruz2/MultiTableQA_TATQA) | | MultiTableQA-TabFact | 🤗 [dataset link](https://huggingface.co/datasets/jiaruz2/MultiTableQA_TabFact) | | MultiTableQA-SQA | 🤗 [dataset link](https://huggingface.co/datasets/jiaruz2/MultiTableQA_SQA) | | MultiTableQA-WTQ | 🤗 [dataset link](https://huggingface.co/datasets/jiaruz2/MultiTableQA_WTQ) | | MultiTableQA-HybridQA | 🤗 [dataset link](https://huggingface.co/datasets/jiaruz2/MultiTableQA_HybridQA)| MultiTableQA extends the traditional single-table QA setting into a multi-table retrieval and question answering benchmark, enabling more realistic and challenging evaluations. --- ## ✨ Sample Usage To get started with the T-RAG framework and the MultiTableQA benchmark, follow these steps. ### 🚀 Installation ```bash git clone https://github.com/jiaruzouu/T-RAG.git cd T-RAG conda create -n trag python=3.11.9 conda activate trag # Install dependencies pip install -r requirements.txt ``` ### 1. MultiTableQA Data Preparation To download and preprocess the **MultiTableQA** benchmark: ```bash cd table2graph bash scripts/prepare_data.sh ``` This script will automatically fetch the source tables, apply decomposition (row/column splitting), and generate the benchmark splits. ### 2. Run T-RAG Retrieval To run hierarchical index construction and multi-stage retrieval: **Stage 1 & 2: Table to Graph Construction & Coarse-grained Multi-way Retrieval** Stages 1 & 2 include: - Table Linearization - Multi-way Feature Extraction - Hypergraph Construction by Multi-way Clustering - Typical Node Selection for Efficient Table Retrieval - Query-Cluster Assignment To run this, ```bash cd src cd table2graph bash scripts/table_cluster_run.sh # or python scripts/table_cluster_run.py ``` **Stage 3: Fine-grained sub-graph Retrieval** Stage 3 includes: - Local Subgraph Construction - Iterative Personalized PageRank for Retrieval. To run this, ```bash cd src cd table2graph python scripts/subgraph_retrieve_run.py ``` *Note: Our method supports different embedding methods such as E5, contriever, sentence-transformer, etc.** ### 3. Downstream Inference with LLMs Evaluate T-RAG with an (open/closed-source) LLM of your choice (e.g., GPT-4o, Claude-3.5, Qwen): For Closed-source LLM, please first insert your key under `key.json` ```json { "openai": "", "claude": "" } ``` To run end-to-end model inference and evaluation, ```bash cd src cd downstream_inference bash scripts/overall_run.sh ``` --- # Citation If you find our work useful, please cite: ```bibtex @misc{zou2025rag, title={RAG over Tables: Hierarchical Memory Index, Multi-Stage Retrieval, and Benchmarking}, author={Jiaru Zou and Dongqi Fu and Sirui Chen and Xinrui He and Zihao Li and Yada Zhu and Jiawei Han and Jingrui He}, year={2025}, eprint={2504.01346}, archivePrefix={arXiv}, primaryClass={cs.CL}, url={https://arxiv.org/abs/2504.01346}, } ```