What Makes Data Suitable for a Locally Connected Neural Network? A Necessary and Sufficient Condition Based on Quantum Entanglement

03/20/2023
by   Yotam Alexander, et al.
0

The question of what makes a data distribution suitable for deep learning is a fundamental open problem. Focusing on locally connected neural networks (a prevalent family of architectures that includes convolutional and recurrent neural networks as well as local self-attention models), we address this problem by adopting theoretical tools from quantum physics. Our main theoretical result states that a certain locally connected neural network is capable of accurate prediction over a data distribution if and only if the data distribution admits low quantum entanglement under certain canonical partitions of features. As a practical application of this result, we derive a preprocessing method for enhancing the suitability of a data distribution to locally connected neural networks. Experiments with widespread models over various datasets demonstrate our findings. We hope that our use of quantum entanglement will encourage further adoption of tools from physics for formally reasoning about the relation between deep learning and real-world data.

READ FULL TEXT
research
09/27/2021

Strong entanglement distribution of quantum networks

Large-scale quantum networks have been employed to overcome practical co...
research
07/11/2022

Synergy and Symmetry in Deep Learning: Interactions between the Data, Model, and Inference Algorithm

Although learning in high dimensions is commonly believed to suffer from...
research
08/27/2019

Learning Algebraic Models of Quantum Entanglement

We give a thorough overview of supervised learning and network design fo...
research
09/26/2019

Quantum Graph Neural Networks

We introduce Quantum Graph Neural Networks (QGNN), a new class of quantu...
research
04/12/2020

From Holant to Quantum Entanglement and Back

Holant problems are intimately connected with quantum theory as tensor n...
research
04/05/2017

Deep Learning and Quantum Entanglement: Fundamental Connections with Implications to Network Design

Deep convolutional networks have witnessed unprecedented success in vari...
research
03/26/2018

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

The harnessing of modern computational abilities for many-body wave-func...

Please sign up or login with your details

Forgot password? Click here to reset