Adil Soubki


2023

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Finding Common Ground: Annotating and Predicting Common Ground in Spoken Conversations
Magdalena Markowska | Mohammad Taghizadeh | Adil Soubki | Seyed Mirroshandel | Owen Rambow
Findings of the Association for Computational Linguistics: EMNLP 2023

When we communicate with other humans, we do not simply generate a sequence of words. Rather, we use our cognitive state (beliefs, desires, intentions) and our model of the audience’s cognitive state to create utterances that affect the audience’s cognitive state in the intended manner. An important part of cognitive state is the common ground, which is the content the speaker believes, and the speaker believes the audience believes, and so on. While much attention has been paid to common ground in cognitive science, there has not been much work in natural language processing. In this paper, we introduce a new annotation and corpus to capture common ground. We then describe some initial experiments extracting propositions from dialog and tracking their status in the common ground from the perspective of each speaker.

2022

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KOJAK: A New Corpus for Studying German Discourse Particle ja
Adil Soubki | Owen Rambow | Chong Kang
Proceedings of the 3rd Workshop on Computational Approaches to Discourse

In German, ja can be used as a discourse particle to indicate that a proposition, according to the speaker, is believed by both the speaker and audience. We use this observation to create KoJaK, a distantly-labeled English dataset derived from Europarl for studying when a speaker believes a statement to be common ground. This corpus is then analyzed to identify lexical choices in English that correspond with German ja. Finally, we perform experiments on the dataset to predict if an English clause corresponds to a German clause containing ja and achieve an F-measure of 75.3% on a balanced test corpus.