Proceedings of the 2nd Workshop on Argumentation Mining 2015
DOI: 10.3115/v1/w15-0515
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And That's A Fact: Distinguishing Factual and Emotional Argumentation in Online Dialogue

Abstract: We investigate the characteristics of factual and emotional argumentation styles observed in online debates. Using an annotated set of FACTUAL and FEELING debate forum posts, we extract patterns that are highly correlated with factual and emotional arguments, and then apply a bootstrapping methodology to find new patterns in a larger pool of unannotated forum posts. This process automatically produces a large set of patterns representing linguistic expressions that are highly correlated with factual and emotio… Show more

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Cited by 36 publications
(24 citation statements)
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“…We do a grid-search, testing the performance of our patterns thresholds from θ f = {2-6} in intervals of 1, θ p ={0.60-0.85} in intervals of 0.05. Once we extract the subset of patterns passing our thresholds, we search for these patterns in the posts in our development set, classifying a post as a given class if it contains θ n ={1, (Riloff, 1996;Oraby et al, 2015). An advantage of AutoSlog-TS is that it supports systematic exploration of recall and precision tradeoffs, by selecting pattern sets using different parameters.…”
Section: Learning Experimentsmentioning
confidence: 99%
“…We do a grid-search, testing the performance of our patterns thresholds from θ f = {2-6} in intervals of 1, θ p ={0.60-0.85} in intervals of 0.05. Once we extract the subset of patterns passing our thresholds, we search for these patterns in the posts in our development set, classifying a post as a given class if it contains θ n ={1, (Riloff, 1996;Oraby et al, 2015). An advantage of AutoSlog-TS is that it supports systematic exploration of recall and precision tradeoffs, by selecting pattern sets using different parameters.…”
Section: Learning Experimentsmentioning
confidence: 99%
“…Likewise, in order to avoid stale and repetitive utterances, we can alter and repurpose the candidate utterances; for example, we can use paraphrase or summarization to create new ways of saying the same thing, or to select utterance candidates according to the desired sentiment [12,13]. The style of an utterance can be altered based on requirements; introducing elements of sarcasm, or aspects of factual and emotional argumentation styles [15,14]. Changes in the perceived speaker personality can also make more personable conversations [11].…”
Section: Data-driven Models Of Human Languagementioning
confidence: 99%
“…We take advantage of the annotations provided for subsets of the IAC, in particular the subcorpus that distinguishes FACTUAL posts from EMOTIONAL posts (Abbott et al, 2016;Oraby et al, 2015). 4 Table 3 , with GoogleNews Word2Vec (W2V) features.…”
Section: Rqs Vs Information-seeking Qsmentioning
confidence: 99%