Please use this identifier to cite or link to this item: http://hdl.handle.net/20.500.12188/25434
Title: Speaker Attitudes Detection through Discourse Markers Analysis
Authors: Valūnaitė Oleškevičienė, Giedrė
Liebeskind, Chaya
Trajanov, Dimitar 
Silvano, Purificação
Chiarcos, Christian
Damova, Mariana
Keywords: discourse markers, speaker attitudes detection, annotation, linguistic linked open data, transformer models, machine learning
Issue Date: 30-Sep-2021
Journal: Deep Learning and Neural Approaches for Linguistic Data
Abstract: Speaker attitude detection is important for processing opinionated text. Survey data as such provide a valuable source of information and research for different scientific disciplines. They are also of interest to practitioners such as policymakers, politicians, government bodies, educators, journalists, and all other stakeholders with occupations related to people and society. Survey data provide evidence about particular language phenomena and public attitudes to provide a broader picture about the clusters of social attitudes. In this regard, attitudinal discourse markers play a central role in the sense that they are pointers to the speaker's attitudes. These single word or multiword expressions (MWE) are mainly drawn from syntactic classes of conjunctions, adverbials, and prepositional phrases (Fraser, 2009), as well as expressions such as you know, you see, and I mean (Schiffrin, 2001; Hasselgren, 2002; Maschler & Schiffrin, 2015). Discourse markers are regarded as significant discourse relations’ triggers, and, consequently, are largely studied (eg Sanders et al. 1992; Knott & Dale 1994; Wellner et al 2006; Taboada & Das 2013; Das 2014; Das & Taboada 2019; Silvano 2011). Recently, discourse relations and discourse marker research has gained certain impetus with corpora annotation for exploring discourse structure in texts, for example, RST-DT English corpus (Carlson, Marcu & Okurowski 2003); Penn Discourse Tree Bank (PDTB)(Prasad et al. 2008); SDRT Annodis French corpus (Afantenos et al., 2012).
URI: http://hdl.handle.net/20.500.12188/25434
Appears in Collections:Faculty of Computer Science and Engineering: Journal Articles
Faculty of Computer Science and Engineering: Journal Articles

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