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Legal GraphRAG Benchmark Dataset

Benchmark dataset of 10K questions for testing RAG models on law, regulation, forensic evidence, and legal rights reasoning tasks.

    • Labeling Type: answer
    • Data Format: Tabular
    • Data Type: Benchmark

Main Product

Data Quantity (Samples)

Total Price

$ 30,900

(VAT Included)

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Data Information

About
Test
Model
Meta Data
Data Samples
Benchmark Path
01.Data Introduction
This dataset evaluates RAG-based models on legal and regulatory QA pairs derived from case law, state statutes, medical-legal protocols, and federal agency responsibilities. It emphasizes reasoning across voting rights, criminal justice, forensic evidence, and healthcare-related legal processes.
02.Data Utilization
Ideal for benchmarking Naive RAG vs. Graph RAG architectures in QA tasks. Supports evaluation of reasoning over legal precedents, regulatory frameworks, institutional responsibilities, and the integration of law with healthcare and forensic practice.
03.Key Features
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10K Legal and Regulatory QA Pairs
Includes topics such as voting rights restoration, forensic medical protocols, sexual assault case procedures, roles of election commissions, and landmark cases like Midwest Fence Corp. v. U.S. Dep't of Transp. Tests reasoning across constitutional rights, forensic law, healthcare law, and government regulations.

This dataset was created by ⓒ CUBIG, based in part on publicly available data.

Unauthorized reproduction, redistribution, or resale of the dataset is prohibited.

Sources

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    Pick a question to see how Naive RAG and Graph RAG perform on this benchmark.
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    01.Naive RAG
    • Vector DB: FAISS
    • Embedding model: text-embedding-3-small
    • LLM model: GPT-4.1
    Naive RAG Pipeline
    #1.
    Question
    #2.
    Vector Store
    #3.
    Retrieved Docs
    #4.
    Prompt
    #5.
    LLM Generation
    #6.
    Response
    02.Graph RAG
    • Graph Construction: NetworkX
    • Embedding model: text-embedding-3-small
    • LLM model: GPT-4.1
    Graph RAG Pipeline
    #1.
    Question
    #2.
    Entity Extraction
    #3.
    Subgraph
    #4.
    Combined Context
    #5.
    LLM Generation
    #6.
    Response
    03.Naive RAG vs Graph RAG

    Out of 10000 benchmark questions,

    • Graph RAG achieved 98% accuracy (9763 correct answers),
    • Naive RAG reached only 4% accuracy (445 correct answers).

    Accuracy Comparison

    Graph RAG
    Naive RAG
    050%100%
    Domain
    etc
    Zoodata Volume
    1000 items
    Zoodata Type
    Benchmark data
    Labeling Type
    answer
    Zoodata Formats
    Tabular
    Registration Date
    2025-09-26
    Existence of labeling
    Exist
    Labeling Formats
    JSON
    Sample Data
    Sample data can be viewed after logging in.

    See how this benchmark
    could work for your model.