@article{cocarascu-toni-2018-combining,
title = "Combining Deep Learning and Argumentative Reasoning for the Analysis of Social Media Textual Content Using Small Data Sets",
author = "Cocarascu, Oana and
Toni, Francesca",
journal = "Computational Linguistics",
volume = "44",
number = "4",
month = dec,
year = "2018",
address = "Cambridge, MA",
publisher = "MIT Press",
url = "https://aclanthology.org/J18-4011",
doi = "10.1162/coli_a_00338",
pages = "833--858",
abstract = "The use of social media has become a regular habit for many and has changed the way people interact with each other. In this article, we focus on analyzing whether news headlines support tweets and whether reviews are deceptive by analyzing the interaction or the influence that these texts have on the others, thus exploiting contextual information. Concretely, we define a deep learning method for relation{--}based argument mining to extract argumentative relations of attack and support. We then use this method for determining whether news articles support tweets, a useful task in fact-checking settings, where determining agreement toward a statement is a useful step toward determining its truthfulness. Furthermore, we use our method for extracting bipolar argumentation frameworks from reviews to help detect whether they are deceptive. We show experimentally that our method performs well in both settings. In particular, in the case of deception detection, our method contributes a novel argumentative feature that, when used in combination with other features in standard supervised classifiers, outperforms the latter even on small data sets.",
}
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%0 Journal Article
%T Combining Deep Learning and Argumentative Reasoning for the Analysis of Social Media Textual Content Using Small Data Sets
%A Cocarascu, Oana
%A Toni, Francesca
%J Computational Linguistics
%D 2018
%8 December
%V 44
%N 4
%I MIT Press
%C Cambridge, MA
%F cocarascu-toni-2018-combining
%X The use of social media has become a regular habit for many and has changed the way people interact with each other. In this article, we focus on analyzing whether news headlines support tweets and whether reviews are deceptive by analyzing the interaction or the influence that these texts have on the others, thus exploiting contextual information. Concretely, we define a deep learning method for relation–based argument mining to extract argumentative relations of attack and support. We then use this method for determining whether news articles support tweets, a useful task in fact-checking settings, where determining agreement toward a statement is a useful step toward determining its truthfulness. Furthermore, we use our method for extracting bipolar argumentation frameworks from reviews to help detect whether they are deceptive. We show experimentally that our method performs well in both settings. In particular, in the case of deception detection, our method contributes a novel argumentative feature that, when used in combination with other features in standard supervised classifiers, outperforms the latter even on small data sets.
%R 10.1162/coli_a_00338
%U https://aclanthology.org/J18-4011
%U https://doi.org/10.1162/coli_a_00338
%P 833-858
Markdown (Informal)
[Combining Deep Learning and Argumentative Reasoning for the Analysis of Social Media Textual Content Using Small Data Sets](https://aclanthology.org/J18-4011) (Cocarascu & Toni, CL 2018)
ACL