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1
Intro
2
Machine Learning and Many-Body Physics
3
Baseline Architecture - Convolutional Arithmetic Circuit
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Baseline Architecture. Convolutional Arithmetic Circuit
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Baseline Architecture - Recurrent Arithmetic Circuit
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Measures of Entanglement for Deep Learning Archs
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Controlling Dependencies -Layer Widths
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Start-End Entanglement in Recurrent Networks
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Exponential Memory Capacity for Deep Networks
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TN Constructions of Prominent Deep Learning Archs
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Information Re-Use Vs. Loops
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Results - Deep Learning Archs Support High Entanglement
Description:
Explore the intersection of deep learning and many-body quantum physics through tensor networks in this 24-minute APS Physics video. Delve into convolutional and recurrent arithmetic circuits, measures of entanglement for deep learning architectures, and controlling dependencies through layer widths. Examine start-end entanglement in recurrent networks and the exponential memory capacity of deep networks. Discover tensor network constructions of prominent deep learning architectures, and analyze the balance between information re-use and loops. Gain insights into how deep learning architectures support high entanglement, bridging the gap between these complex fields of study.

Bridging Deep Learning and Many-Body Quantum Physics via Tensor Networks

APS Physics
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