人工智能驱动的健康信息检索中的空间智能和上下文相关性

IF 4 2区 地球科学 Q1 GEOGRAPHY
Niko Yiannakoulias
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引用次数: 0

摘要

大型语言模型(LLM)的发展已经对在线健康信息检索产生了重大影响。随着这些模型得到越来越广泛的使用,了解它们根据空间和地理信息进行语境化回复的能力就显得尤为重要。本研究调查了 LLM 是否能根据地理和空间背景改变回答。使用提交给 ChatGPT 的一组结构化提示,对回复进行了分析,以便根据提示问题和查询中包含的地理标识符找出模式。分析中使用了词频分析和来自变换器的双向编码器表示(BERT)嵌入来评估回复中有关地理特异性的变化。结果提供了一些证据,表明当查询指定了这种需求时,LLM 可以生成按地理位置定制的回复,从而支持本地化信息检索。此外,提示回复显示出空间距离与文本之间的词频/句子嵌入差异之间的关联。这一结果表明了空间信息的细微差别,可以根据用户的位置提供更多相关的健康信息,从而影响用户体验。这项研究为进一步探索 LLM 的空间智能及其对在线健康信息可访问性的影响奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial intelligence and contextual relevance in AI-driven health information retrieval

The evolution of large language models (LLMs) has already significantly influenced online health information retrieval. As these models gain more widespread use, it is important to understand their ability to contextualize responses based on spatial and geographic information. This study investigates whether LLMs can vary responses based on geographic and spatial context. Using a structured set of prompts submitted to ChatGPT, responses were analyzed to discern patterns based on prompt question and geographic identifiers included in queries. The analysis used word frequency analysis and bidirectional encoder representations from transformers (BERT) embeddings to evaluate the variation in responses concerning geographic specificity. The results provide some evidence that LLMs can generate geographically tailored responses when the query specifies such a need, thereby supporting localized information retrieval. Moreover, prompt responses exhibit an association between spatial distance and word frequency/sentence embedding differences between texts. This result suggests a nuanced representation of spatial information, which could impact user experience by providing more relevant health information based on the user's location. This study lays the groundwork for further exploration into the spatial intelligence of LLMs and their impact on the accessibility of health information online.

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来源期刊
Applied Geography
Applied Geography GEOGRAPHY-
CiteScore
8.00
自引率
2.00%
发文量
134
期刊介绍: Applied Geography is a journal devoted to the publication of research which utilizes geographic approaches (human, physical, nature-society and GIScience) to resolve human problems that have a spatial dimension. These problems may be related to the assessment, management and allocation of the world physical and/or human resources. The underlying rationale of the journal is that only through a clear understanding of the relevant societal, physical, and coupled natural-humans systems can we resolve such problems. Papers are invited on any theme involving the application of geographical theory and methodology in the resolution of human problems.
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