Semantic Space Theory
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Semantic Space Theory
Overview :
Semantic Space Theory (SST) is the foundation of Hume AI research. It employs computational and data-driven methods to map the full spectrum of human emotions. Through natural data and advanced statistical methods, SST treats emotions as high-dimensional semantic spaces, revealing the complexity and subtle nuances of emotions.
Target Users :
Suitable for research in affective science, emotion computation, and human-computer interaction.
Total Visits: 227.1K
Top Region: US(30.24%)
Website Views : 61.5K
Use Cases
Applying SST in cross-cultural studies to understand the expression and experience of emotions across different cultures
Using SST to improve emotion recognition algorithms for more accurate capture of human emotions
Applying SST theory in human-computer interaction design to create more natural and empathetic interaction experiences
Features
Quantitatively describe large datasets using natural data and statistical modeling
Go beyond low-dimensional emotion theories by treating emotions as high-dimensional semantic spaces
Capture and understand the complexity of emotions through data-driven methods
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