Contextual Dependencies in Time-Continuous Multidimensional Affect Recognition (L18-1)
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| Challenge: | despite of the research done in this area there is still no agreement on this issue. |
| Approach: | a paper compares the amount of context used in a model and performance of a time-continuous labelled spontaneous interaction. |
| Outcome: | a new study shows that the amount of context used in a model and performance is similar across models . the results show that knowledge about an appropriate context can reduce complexity and flexibility . |
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