Abstract

As the volume of recorded conversations continues to surge, so does the need for their automatic processing. Plenty of information beyond words may be extracted from the speech signal that could be valuable in domains such as call-center quality assurance. In particular, describing the dynamics of turn-taking exchanges allows for a deeper understanding of the development and outcome of a dialogue. In this paper, we investigate the construction of an automatic turn-taking annotation tool based on recordings of entire conversations (in offline mode) — an unexplored topic to our knowledge. We experiment with two supervised learning approaches, using recurrent neural networks and random forests, on a corpus of Argentine Spanish task-oriented dialogues annotated with 12 turn-taking categories following standard guidelines. Our models achieve promising results, with F1 scores ranging 0.7–0.9 for the most frequent labels (e.g., smooth switches, backchannels), but much lower for the least frequent ones (various kinds of interruptions), for which further research is needed. We also evaluate our best-performing models considering their generalizability in scenarios of growing difficulty, including dialogues in two different languages (English and Slovak). Finally, to address the typical data scarcity issue, we analyze the impact of combining training data from different corpora, again including cross-linguistic data.

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