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Multimodal interaction / Cognition / Neural networks / Learning / Machine learning / Speech recognition / Modality / Boltzmann machine / Deep learning / Human–computer interaction / Education / Perception
Date: 2013-03-25 14:53:10
Multimodal interaction
Cognition
Neural networks
Learning
Machine learning
Speech recognition
Modality
Boltzmann machine
Deep learning
Human–computer interaction
Education
Perception

Multimodal Deep Learning Jiquan Ngiam1 Aditya Khosla1

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Source URL: machinelearning.wustl.edu

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