Abstract
Abstract
Phone calls are an essential communication channel in today’s contact centers, but they are more difficult to
analyze than written or form-based interactions. To that end, companies have traditionally used surveys to gather feedback and
gauge customer satisfaction. In this work, we study the relationship between self-reported customer satisfaction (CSAT) and
automatic utterance-level indicators of emotion produced by affect recognition models, using a real dataset of contact center
calls. We find (1) that positive valence is associated with higher CSAT scores, while the presence of anger is associated with
lower CSAT scores; (2) that automatically detected affective events and CSAT response rate are linked, with calls containing
anger/positive valence exhibiting respectively a lower/higher response rate; (3) that the dynamics of detected emotions are linked
with both CSAT scores and response rate, and that emotions detected at the end of the call have a greater weight in the
relationship. These findings highlight a selection bias in self-reported CSAT leading respectively to an over/under-representation
of positive/negative affect.
Publisher
John Benjamins Publishing Company
Subject
Human-Computer Interaction,Linguistics and Language,Animal Science and Zoology,Language and Linguistics,Communication