Understanding complex societal events reported on the Web, such as military conflicts and political elections, is crucial in digital humanities, computational social science, and news analyses. While event extraction is a well-studied problem in natural language processing (NLP), there remains a gap in semantic event extraction methods that leverage event ontologies for capturing multifaceted events in knowledge graphs. In this article, we aim to compare two paradigms to address this task of semantic event extraction: the fine-tuning of traditional transformer-based models versus the use of large language models (LLMs). We exemplify these paradigms with two newly developed approaches: T-SEE for transformer-based and L-SEE for LLM-based semantic event extraction. We discuss their complementary strengths and shortcomings to understand the needs and solutions required for semantic event extraction. For comparison, both approaches employ the same dual-stage architecture; the first stages focus on multilabel event classification, and the second on relation extraction. While T-SEE utilises a span prediction transformer model, L-SEE prompts an LLM for event classification and relation extraction, providing the potential event classes and properties. We assess the performances of T-SEE and L-SEE on two novel datasets sourced from DBpedia and Wikidata, and we perform an extensive error analysis. Our work makes substantial contributions to (i) the integration of Semantic Web technologies and NLP, particularly in the underexplored domain of semantic event extraction, and (ii) the understanding of how LLMs can further enhance semantic event extraction and what challenges need to be considered in comparison to traditional approaches.
Kuculo et al. (Thu,) studied this question.
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