Data-driven Social Mood Analysis through the Conceptualization of Emotional Fingerprints
Academic Article
Publication Date:
2018
abstract:
A body of knowledge shows the emerging of an evidence according to a better account for the emotional spectrum is achievable by employing a detailed selection of emotion keywords. Basic emotions, such as Ekman's ones, cannot be considered universal, but are related to with implicit thematic affairs within the corpus under analysis. The paper tracks some preliminary experiments obtained employing a data-driven methodology that captures emotions, relying on domain data that you want to model. The experimentation consists of investigating the corresponding conceptual space based on a set of terms (i.e., keywords) that are representative of the domain and the determination. Furthermore, the conceptual space is exploited as a bridge between the textual content and its sub-symbolic mapping as an "emotional fingerprint" into a six dimensional hyperspace.
Iris type:
01.01 Articolo in rivista
Keywords:
Emotion Detection from Text Data Driven Conceptual Spaces Social Sensing
List of contributors:
D'Avanzo, Ernesto; Pilato, Giovanni
Published in: