Annotation of Emotion Carriers in Personal Narratives
- URL: http://arxiv.org/abs/2002.12196v3
- Date: Fri, 15 May 2020 19:52:35 GMT
- Title: Annotation of Emotion Carriers in Personal Narratives
- Authors: Aniruddha Tammewar, Alessandra Cervone, Eva-Maria Messner, Giuseppe
Riccardi
- Abstract summary: We are interested in the problem of understanding personal narratives (PN) - spoken or written - recollections of facts, events, and thoughts.
In PN, emotion carriers are the speech or text segments that best explain the emotional state of the user.
This work proposes and evaluates an annotation model for identifying emotion carriers in spoken personal narratives.
- Score: 69.07034604580214
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We are interested in the problem of understanding personal narratives (PN) -
spoken or written - recollections of facts, events, and thoughts. In PN,
emotion carriers are the speech or text segments that best explain the
emotional state of the user. Such segments may include entities, verb or noun
phrases. Advanced automatic understanding of PNs requires not only the
prediction of the user emotional state but also to identify which events (e.g.
"the loss of relative" or "the visit of grandpa") or people ( e.g. "the old
group of high school mates") carry the emotion manifested during the personal
recollection. This work proposes and evaluates an annotation model for
identifying emotion carriers in spoken personal narratives. Compared to other
text genres such as news and microblogs, spoken PNs are particularly
challenging because a narrative is usually unstructured, involving multiple
sub-events and characters as well as thoughts and associated emotions perceived
by the narrator. In this work, we experiment with annotating emotion carriers
from speech transcriptions in the Ulm State-of-Mind in Speech (USoMS) corpus, a
dataset of German PNs. We believe this resource could be used for experiments
in the automatic extraction of emotion carriers from PN, a task that could
provide further advancements in narrative understanding.
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