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Exploring Spatial Representations in the Historical Lake District Texts with LLM-based Relation Extraction

Erum Haris, Anthony G. Cohn, John G. Stell

TL;DR

The Corpus of the Lake District Writing is employed, employing a generative pre-trained transformer model, to understand the spatial dimensions inherent in historical narratives comprehensively and provide an approach to uncovering spatial relations within diverse historical contexts.

Abstract

Navigating historical narratives poses a challenge in unveiling the spatial intricacies of past landscapes. The proposed work addresses this challenge within the context of the English Lake District, employing the Corpus of the Lake District Writing. The method utilizes a generative pre-trained transformer model to extract spatial relations from the textual descriptions in the corpus. The study applies this large language model to understand the spatial dimensions inherent in historical narratives comprehensively. The outcomes are presented as semantic triples, capturing the nuanced connections between entities and locations, and visualized as a network, offering a graphical representation of the spatial narrative. The study contributes to a deeper comprehension of the English Lake District's spatial tapestry and provides an approach to uncovering spatial relations within diverse historical contexts.

Exploring Spatial Representations in the Historical Lake District Texts with LLM-based Relation Extraction

TL;DR

The Corpus of the Lake District Writing is employed, employing a generative pre-trained transformer model, to understand the spatial dimensions inherent in historical narratives comprehensively and provide an approach to uncovering spatial relations within diverse historical contexts.

Abstract

Navigating historical narratives poses a challenge in unveiling the spatial intricacies of past landscapes. The proposed work addresses this challenge within the context of the English Lake District, employing the Corpus of the Lake District Writing. The method utilizes a generative pre-trained transformer model to extract spatial relations from the textual descriptions in the corpus. The study applies this large language model to understand the spatial dimensions inherent in historical narratives comprehensively. The outcomes are presented as semantic triples, capturing the nuanced connections between entities and locations, and visualized as a network, offering a graphical representation of the spatial narrative. The study contributes to a deeper comprehension of the English Lake District's spatial tapestry and provides an approach to uncovering spatial relations within diverse historical contexts.
Paper Structure (10 sections, 2 figures, 4 tables)

This paper contains 10 sections, 2 figures, 4 tables.

Figures (2)

  • Figure 1: Proposed framework for relation extraction and visualization. Template style (https://learn.microsoft.com/en-us/azure/architecture/ai-ml/guide/query-based-summarization).
  • Figure 2: Network visualization of "near"semantic triples for place"Keswick".