Saved in:
Bibliographic Details
Main Authors: Wang, Jian, Zhao, Zhuo, Wang, Zeng Jie, Da Cheng, Bo, Nie, Lei, Luo, Wen, Yu, Zhao Yuan, Yuan, Ling Wang
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.01458
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909563192606720
author Wang, Jian
Zhao, Zhuo
Wang, Zeng Jie
Da Cheng, Bo
Nie, Lei
Luo, Wen
Yu, Zhao Yuan
Yuan, Ling Wang
author_facet Wang, Jian
Zhao, Zhuo
Wang, Zeng Jie
Da Cheng, Bo
Nie, Lei
Luo, Wen
Yu, Zhao Yuan
Yuan, Ling Wang
contents Geographic Question Answering (GeoQA) addresses natural language queries in geographic domains to fulfill complex user demands and improve information retrieval efficiency. Traditional QA systems, however, suffer from limited comprehension, low retrieval accuracy, weak interactivity, and inadequate handling of complex tasks, hindering precise information acquisition. This study presents GeoRAG, a knowledge-enhanced QA framework integrating domain-specific fine-tuning and prompt engineering with Retrieval-Augmented Generation (RAG) technology to enhance geographic knowledge retrieval accuracy and user interaction. The methodology involves four components: (1) A structured geographic knowledge base constructed from 3267 corpora (research papers, monographs, and technical reports), categorized via a multi-agent approach into seven dimensions: semantic understanding, spatial location, geometric morphology, attribute characteristics, feature relationships, evolutionary processes, and operational mechanisms. This yielded 145234 classified entries and 875432 multi-dimensional QA pairs. (2) A multi-label text classifier based on BERT-Base-Chinese, trained to analyze query types through geographic dimension classification. (3) A retrieval evaluator leveraging QA pair data to assess query-document relevance, optimizing retrieval precision. (4) GeoPrompt templates engineered to dynamically integrate user queries with retrieved information, enhancing response quality through dimension-specific prompting. Comparative experiments demonstrate GeoRAG's superior performance over conventional RAG across multiple base models, validating its generalizability. This work advances geographic AI by proposing a novel paradigm for deploying large language models in domain-specific contexts, with implications for improving GeoQA systems scalability and accuracy in real-world applications.
format Preprint
id arxiv_https___arxiv_org_abs_2504_01458
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle GeoRAG: A Question-Answering Approach from a Geographical Perspective
Wang, Jian
Zhao, Zhuo
Wang, Zeng Jie
Da Cheng, Bo
Nie, Lei
Luo, Wen
Yu, Zhao Yuan
Yuan, Ling Wang
Information Retrieval
Geographic Question Answering (GeoQA) addresses natural language queries in geographic domains to fulfill complex user demands and improve information retrieval efficiency. Traditional QA systems, however, suffer from limited comprehension, low retrieval accuracy, weak interactivity, and inadequate handling of complex tasks, hindering precise information acquisition. This study presents GeoRAG, a knowledge-enhanced QA framework integrating domain-specific fine-tuning and prompt engineering with Retrieval-Augmented Generation (RAG) technology to enhance geographic knowledge retrieval accuracy and user interaction. The methodology involves four components: (1) A structured geographic knowledge base constructed from 3267 corpora (research papers, monographs, and technical reports), categorized via a multi-agent approach into seven dimensions: semantic understanding, spatial location, geometric morphology, attribute characteristics, feature relationships, evolutionary processes, and operational mechanisms. This yielded 145234 classified entries and 875432 multi-dimensional QA pairs. (2) A multi-label text classifier based on BERT-Base-Chinese, trained to analyze query types through geographic dimension classification. (3) A retrieval evaluator leveraging QA pair data to assess query-document relevance, optimizing retrieval precision. (4) GeoPrompt templates engineered to dynamically integrate user queries with retrieved information, enhancing response quality through dimension-specific prompting. Comparative experiments demonstrate GeoRAG's superior performance over conventional RAG across multiple base models, validating its generalizability. This work advances geographic AI by proposing a novel paradigm for deploying large language models in domain-specific contexts, with implications for improving GeoQA systems scalability and accuracy in real-world applications.
title GeoRAG: A Question-Answering Approach from a Geographical Perspective
topic Information Retrieval
url https://arxiv.org/abs/2504.01458