IAT/ML: A Domain-Specific Approach for Discourse Analysis and Processing

Published: 01 Jan 2023, Last Modified: 20 May 2025BPMDS/EMMSAD@CAiSE 2023EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Language technologies are gaining momentum as textual information saturates social networks and media outlets, compounded by the growing role of fake news and disinformation. In this context, approaches to represent and analyse discourses are becoming crucial. Although there is a large body of literature on text-based machine learning, it tends to focus on lexical and syntactical issues rather than semantic or pragmatic. These advances cannot tackle the complex and highly context-dependent problems of discourse evaluation that society demands. In this paper, we present IAT/ML, a modelling approach to represent and analyse discourses. IAT/ML focus on semantic and pragmatic issues, thus tackling a little researched area in language technologies. It does so by combining three analysis approaches: ontological, which focuses on what the discourse talks about, argumentation, which deals with how the text justifies what it says, and critical, which provides insights into the speakers’ beliefs and intentions, and is still being implemented. Together, these three modelling and analysis approaches make IAT/ML a comprehensive solution to represent and analyse complex discourses towards their evaluation and fact checking.
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