One-step DCCA fusing BERT text with audio and video embeddings outperforms prior multi-modal methods for sentiment classification on two benchmarks and a new Debate Emotion dataset.
Multi-attention Recurrent Network for Human Communication Comprehension
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abstract
Human face-to-face communication is a complex multimodal signal. We use words (language modality), gestures (vision modality) and changes in tone (acoustic modality) to convey our intentions. Humans easily process and understand face-to-face communication, however, comprehending this form of communication remains a significant challenge for Artificial Intelligence (AI). AI must understand each modality and the interactions between them that shape human communication. In this paper, we present a novel neural architecture for understanding human communication called the Multi-attention Recurrent Network (MARN). The main strength of our model comes from discovering interactions between modalities through time using a neural component called the Multi-attention Block (MAB) and storing them in the hybrid memory of a recurrent component called the Long-short Term Hybrid Memory (LSTHM). We perform extensive comparisons on six publicly available datasets for multimodal sentiment analysis, speaker trait recognition and emotion recognition. MARN shows state-of-the-art performance on all the datasets.
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cs.IR 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Multi-modal Sentiment Analysis using Deep Canonical Correlation Analysis
One-step DCCA fusing BERT text with audio and video embeddings outperforms prior multi-modal methods for sentiment classification on two benchmarks and a new Debate Emotion dataset.