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Tensor network language model

Tensor network language model

27 October 2017
V. Pestun
Yiannis Vlassopoulos
ArXivPDFHTML

Papers citing "Tensor network language model"

10 / 10 papers shown
Title
Grokking phase transitions in learning local rules with gradient descent
Grokking phase transitions in learning local rules with gradient descent
Bojan Žunkovič
E. Ilievski
63
16
0
26 Oct 2022
Deep tensor networks with matrix product operators
Deep tensor networks with matrix product operators
Bojan Žunkovič
72
4
0
16 Sep 2022
Tensor network to learn the wavefunction of data
Tensor network to learn the wavefunction of data
A. Dymarsky
K. Pavlenko
21
6
0
15 Nov 2021
Entangled q-Convolutional Neural Nets
Entangled q-Convolutional Neural Nets
V. Anagiannis
Miranda C. N. Cheng
16
5
0
06 Mar 2021
Quantum Natural Language Processing on Near-Term Quantum Computers
Quantum Natural Language Processing on Near-Term Quantum Computers
K. Meichanetzidis
S. Gogioso
G. Felice
Nicolò Chiappori
Alexis Toumi
B. Coecke
44
67
0
08 May 2020
The Born Supremacy: Quantum Advantage and Training of an Ising Born
  Machine
The Born Supremacy: Quantum Advantage and Training of an Ising Born Machine
Brian Coyle
Daniel Mills
V. Danos
E. Kashefi
27
155
0
03 Apr 2019
Tree Tensor Networks for Generative Modeling
Tree Tensor Networks for Generative Modeling
Song Cheng
Lei Wang
Tao Xiang
Pan Zhang
15
129
0
08 Jan 2019
From probabilistic graphical models to generalized tensor networks for
  supervised learning
From probabilistic graphical models to generalized tensor networks for supervised learning
I. Glasser
Nicola Pancotti
J. I. Cirac
AI4CE
69
75
0
15 Jun 2018
Entanglement-guided architectures of machine learning by quantum tensor
  network
Entanglement-guided architectures of machine learning by quantum tensor network
Yuhan Liu
Xiao Zhang
M. Lewenstein
Shi-Ju Ran
26
32
0
24 Mar 2018
Information Perspective to Probabilistic Modeling: Boltzmann Machines
  versus Born Machines
Information Perspective to Probabilistic Modeling: Boltzmann Machines versus Born Machines
Song Cheng
J. Chen
Lei Wang
24
101
0
12 Dec 2017
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