@inproceedings{c3d4090e41fe4308b484ea6425d93583,
title = "Turiya at DialAM-2024: Inference Anchoring Theory Based LLM Parsers",
abstract = "Representing discourse as argument graphs facilitates robust analysis. Although computational frameworks for constructing graphs from monologues exist, there is a lack of frameworks for parsing dialogue. Inference Anchoring Theory (IAT) is a theoretical framework for extracting graphical argument structures and relationships from dialogues. Here, we introduce computational models for implementing the IAT framework for parsing dialogues. We experiment with a classification-based biaffine parser and Large Language Model (LLM)-based generative methods and compare them. Our results demonstrate the utility of finetuning LLMs for constructing IAT-based argument graphs from dialogues, which is a nuanced task.",
author = "Sougata Saha and Rohini Srihari",
note = "Publisher Copyright: {\textcopyright} 2024 Association for Computational Linguistics.; 11th Workshop on Argument Mining, ArgMining 2024 ; Conference date: 15-08-2024",
year = "2024",
language = "English",
series = "ArgMining 2024 - 11th Workshop on Argument Mining, Proceedings of the Workshop",
publisher = "Association for Computational Linguistics (ACL)",
pages = "124--129",
editor = "Yamen Ajjour and Roy Bar-Haim and \{El Baff\}, Roxanne and Zhexiong Liu and Gabriella Skitalinskaya",
booktitle = "ArgMining 2024 - 11th Workshop on Argument Mining, Proceedings of the Workshop",
}