AICYSCJan 19, 2024

EFO: the Emotion Frame Ontology

arXiv:2401.10751v13 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of inconsistent emotion modeling for researchers in AI, linguistics, and psychology, but it is incremental as it builds on existing ontology design and emotion theories.

The paper tackles the lack of consensus in modeling emotions by proposing the Emotion Frames Ontology (EFO), an OWL frame-based ontology that treats emotions as semantic frames with roles, and demonstrates its application through automated inferences and integration with multimodal datasets.

Emotions are a subject of intense debate in various disciplines. Despite the proliferation of theories and definitions, there is still no consensus on what emotions are, and how to model the different concepts involved when we talk about - or categorize - them. In this paper, we propose an OWL frame-based ontology of emotions: the Emotion Frames Ontology (EFO). EFO treats emotions as semantic frames, with a set of semantic roles that capture the different aspects of emotional experience. EFO follows pattern-based ontology design, and is aligned to the DOLCE foundational ontology. EFO is used to model multiple emotion theories, which can be cross-linked as modules in an Emotion Ontology Network. In this paper, we exemplify it by modeling Ekman's Basic Emotions (BE) Theory as an EFO-BE module, and demonstrate how to perform automated inferences on the representation of emotion situations. EFO-BE has been evaluated by lexicalizing the BE emotion frames from within the Framester knowledge graph, and implementing a graph-based emotion detector from text. In addition, an EFO integration of multimodal datasets, including emotional speech and emotional face expressions, has been performed to enable further inquiry into crossmodal emotion semantics.

Foundations

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