The Emotion-Memory Link: Do Memorability Annotations Matter for Intelligent Systems?
Maria Tsfasman, Ramin Ghorbani, Catholijn M. Jonker, Bernd Dudzik

TL;DR
This study investigates whether emotional annotations can predict memorability in conversational AI settings, finding that the relationship is not statistically distinguishable from chance, challenging assumptions in affective computing.
Contribution
It provides empirical evidence questioning the link between perceived emotions and memorability in real-world conversational contexts.
Findings
No significant correlation between emotion and memorability annotations.
Implications for affective computing applications and user modeling.
Highlights need for alternative approaches to predict memorability.
Abstract
Humans have a selective memory, remembering relevant episodes and forgetting the less relevant information. Possessing awareness of event memorability for a user could help intelligent systems in more accurate user modelling, especially for such applications as meeting support systems, memory augmentation, and meeting summarisation. Emotion recognition has been widely studied, since emotions are thought to signal moments of high personal relevance to users. The emotional experience of situations and their memorability have traditionally been considered to be closely tied to one another: moments that are experienced as highly emotional are considered to also be highly memorable. This relationship suggests that emotional annotations could serve as proxies for memorability. However, existing emotion recognition systems rely heavily on third-party annotations, which may not accurately…
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Taxonomy
TopicsEmotion and Mood Recognition · Speech and dialogue systems · Personal Information Management and User Behavior
