Unpacking Multimodal Fusion: SHAP's Role in Emotion and Sentiment Recognition
Multimodal fusion in AI gets a boost with SHAP-guided adaptive techniques, challenging traditional methods. Are we on the brink of more efficient emotion recognition?
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