Entrainment-Metrics: An Open-Source Toolkit for Quantifying Acoustic-Prosodic Entrainment in Spoken Dialogue
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Show full item recordAuthor/s:
Ernst, Erik
Gálvez, Ramiro
Gravano, Agustín
Date:
2024-11Abstract
Speech entrainment, particularly acoustic-prosodic (a/p) entrainment,
has gained significant interest in recent years for its implications
on social interaction and dialogue systems. However, measuring
a/p entrainment is challenging, mainly due to the scarce consensus on
its characterization, and the lack of software libraries readily available
to non-expert programmers. This paper presents Entrainment-Metrics,
an open-source Python toolkit for quantifying a/p entrainment in spoken
dialogue. It allows users to quantify different characterizations of
a/p entrainment, measure its occurrence along different a/p features,
and choose between different measurement strategies. The toolkit was
designed for researchers and practitioners from a wide range of fields,
with no need for a strong computational background, who are interested
in studying a/p entrainment and its relation to other phenomena. This
paper provides a concise introduction to using Entrainment-Metrics and
presents an illustrative empirical study that highlights its capabilities.
Este documento fue presentado IBERAMIA 2024. 18th Ibero-American Conference on Artificial Intelligence, en los días 13 al 15 de noviembre del año 2024 ///Puede accederse a la Biblioteca Python en el segundo link en este registro