Stance in Replies and Quotes (SRQ): A New Dataset For Learning Stance in Twitter Conversations

Cox, R V and Kumar, S and Babcock, M and Carley, K M (2020) Stance in Replies and Quotes (SRQ): A New Dataset For Learning Stance in Twitter Conversations. Working Paper. Carnegie Mellon University.

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Abstract

Automated ways to extract stance (denying vs. supporting opinions) from conversations on social media are essential to advance opinion mining research. Recently, there is a renewed excitement in the field as we see new models attempting to improve the state-of-the-art. However, for training and evaluating the models, the datasets used are often small. Additionally, these small datasets have uneven class distributions, i.e., only a tiny fraction of the examples in the dataset have favoring or denying stances, and most other examples have no clear stance. Moreover, the existing datasets do not distinguish between the different types of conversations on social media (e.g., replying vs. quoting on Twitter). Because of this, models trained on one event do not generalize to other events.

Item Type: Monograph (Working Paper)
Additional Information: The research article was published by the author with the affiliation of Carnegie Mellon University
Subjects: Information Systems
Date Deposited: 10 Sep 2023 17:27
Last Modified: 10 Sep 2023 17:27
URI: https://eprints.exchange.isb.edu/id/eprint/2117

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