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📄 Abstract
Abstract: Large Language Models (LLMs) have rapidly reshaped financial NLP, enabling
new tasks and driving a proliferation of datasets and diversification of data
sources. Yet, this transformation has outpaced traditional surveys. In this
paper, we present MetaGraph, a generalizable methodology for extracting
knowledge graphs from scientific literature and analyzing them to obtain a
structured, queryable view of research trends. We define an ontology for
financial NLP research and apply an LLM-based extraction pipeline to 681 papers
(2022-2025), enabling large-scale, data-driven analysis. MetaGraph reveals
three key phases: early LLM adoption and task/dataset innovation; critical
reflection on LLM limitations; and growing integration of peripheral techniques
into modular systems. This structured view offers both practitioners and
researchers a clear understanding of how financial NLP has evolved -
highlighting emerging trends, shifting priorities, and methodological
shifts-while also demonstrating a reusable approach for mapping scientific
progress in other domains.