Workshop
Second Workshop on Quantum Tensor Networks in Machine Learning
Xiao-Yang Liu · Qibin Zhao · Ivan Oseledets · Yufei Ding · Guillaume Rabusseau · Jean Kossaifi · Khadijeh Najafi · Anwar Walid · Andrzej Cichocki · Masashi Sugiyama
Tue 14 Dec, 6 a.m. PST
Quantum tensor networks in machine learning (QTNML) are envisioned to have great potential to advance AI technologies. Quantum machine learning [1][2] promises quantum advantages (potentially exponential speedups in training [3], quadratic improvements in learning efficiency [4]) over classical machine learning, while tensor networks provide powerful simulations of quantum machine learning algorithms on classical computers. As a rapidly growing interdisciplinary area, QTNML may serve as an amplifier for computational intelligence, a transformer for machine learning innovations, and a propeller for AI industrialization.
Tensor networks [5], a contracted network of factor core tensors, have arisen independently in several areas of science and engineering. Such networks appear in the description of physical processes and an accompanying collection of numerical techniques have elevated the use of quantum tensor networks into a variational model of machine learning. These techniques have recently proven ripe to apply to many traditional problems faced in deep learning [6,7,8]. More potential QTNML technologies are rapidly emerging, such as approximating probability functions, and probabilistic graphical models [9,10,11,12]. Quantum algorithms are typically described by quantum circuits (quantum computational networks) that are indeed a class of tensor networks, creating an evident interplay between classical tensor network contraction algorithms and executing tensor contractions on quantum processors. The modern field of quantum enhanced machine learning has started to utilize several tools from tensor network theory to create new quantum models of machine learning and to better understand existing ones. However, the topic of QTNML is relatively young and many open problems are still to be explored.
Schedule
Tue 6:00 a.m. - 6:05 a.m.
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Opening Remarks
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Opening
)
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SlidesLive Video |
Xiao-Yang Liu 🔗 |
Tue 6:05 a.m. - 6:35 a.m.
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Efficient Quantum Optimization via Multi-Basis Encodings and Tensor Rings
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Talk
)
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Anima Anandkumar 🔗 |
Tue 6:35 a.m. - 6:45 a.m.
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Anima Anandkumar
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Q&A
)
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🔗 |
Tue 6:45 a.m. - 7:15 a.m.
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High Performance Computation for Tensor Networks Learning
(
Talk
)
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SlidesLive Video |
Anwar Walid · Xiao-Yang Liu 🔗 |
Tue 7:15 a.m. - 7:25 a.m.
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Anwar Walid
(
Q&A
)
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Anwar Walid 🔗 |
Tue 7:25 a.m. - 7:55 a.m.
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Multi-graph Tensor Networks: Big Data Analytics on Irregular Domains
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Talk
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SlidesLive Video |
Danilo Mandic 🔗 |
Tue 7:55 a.m. - 8:05 a.m.
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Danilo P. Mandic
(
Q&A
)
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Danilo Mandic 🔗 |
Tue 8:05 a.m. - 8:35 a.m.
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Implicit Regularization in Quantum Tensor Networks
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Talk
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SlidesLive Video |
Nadav Cohen 🔗 |
Tue 8:35 a.m. - 8:45 a.m.
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Nadav Cohen
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Q&A
)
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Nadav Cohen 🔗 |
Tue 8:45 a.m. - 9:15 a.m.
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Stefanos Kourtis
(
Talk
)
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SlidesLive Video |
Stefanos Kourtis 🔗 |
Tue 9:15 a.m. - 9:25 a.m.
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Stefanos Kourtis
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Q&A
)
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🔗 |
Tue 9:30 a.m. - 11:30 a.m.
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Coffee Break + Poster Session (GatherTown) ( poster session ) > link | 🔗 |
Tue 11:30 a.m. - 11:35 a.m.
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Model based multi-agent reinforcement learning with tensor decompositions
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Oral
)
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SlidesLive Video |
Pascal van der Vaart · Anuj Mahajan · Shimon Whiteson 🔗 |
Tue 11:35 a.m. - 11:40 a.m.
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Improvements to gradient descent methods for quantum tensor network machine learning
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Oral
)
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SlidesLive Video |
James Dborin 🔗 |
Tue 11:40 a.m. - 11:45 a.m.
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Tensor Rings for Learning Circular Hidden Markov Models
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Oral
)
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SlidesLive Video |
Mohammad Ali Javidian · Vaneet Aggarwal · Zubin Jacob 🔗 |
Tue 11:45 a.m. - 11:50 a.m.
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ContracTN: A Tensor Network Library Designed for Machine Learning
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Oral
)
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SlidesLive Video |
Jacob Miller · Guillaume Rabusseau 🔗 |
Tue 11:50 a.m. - 11:55 a.m.
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Tensor Ring Parametrized Variational Quantum Circuits for Large Scale Quantum Machine Learning
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Oral
)
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SlidesLive Video |
Dheeraj Peddireddy · Vipul Bansal · Zubin Jacob · Vaneet Aggarwal 🔗 |
Tue 11:55 a.m. - 12:00 p.m.
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Nonparametric tensor estimation with unknown permutations
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Oral
)
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SlidesLive Video |
Chanwoo Lee · Miaoyan Wang 🔗 |
Tue 12:00 p.m. - 12:05 p.m.
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Bayesian Tensor Networks
(
Oral
)
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SlidesLive Video |
Kriton Konstantinidis · Yao Lei Xu · Qibin Zhao · Danilo Mandic 🔗 |
Tue 12:05 p.m. - 12:10 p.m.
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A Tensorized Spectral Attention Mechanism for Efficient Natural Language Processing
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Oral
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SlidesLive Video |
Yao Lei Xu · Kriton Konstantinidis · Shengxi Li · Danilo Mandic 🔗 |
Tue 12:10 p.m. - 12:15 p.m.
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Rademacher Random Projections with Tensor Networks
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Oral
)
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SlidesLive Video |
Beheshteh Rakhshan · Guillaume Rabusseau 🔗 |
Tue 12:15 p.m. - 12:20 p.m.
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Reinforcement Learning in Factored Action Spaces using Tensor Decompositions
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Oral
)
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SlidesLive Video |
Anuj Mahajan · Mikayel Samvelyan · Lei Mao · Viktor Makoviichuk · Animesh Garg · Jean Kossaifi · Shimon Whiteson · Yuke Zhu · Anima Anandkumar 🔗 |
Tue 12:20 p.m. - 12:25 p.m.
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Towards a Trace-Preserving Tensor Network Representation of Quantum Channels
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Oral
)
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SlidesLive Video |
Siddarth Srinivasan · Sandesh Adhikary · Jacob Miller · Guillaume Rabusseau · Byron Boots 🔗 |
Tue 12:25 p.m. - 12:30 p.m.
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Distributive Pre-training of Generative Modeling Using Matrix Product States
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Oral
)
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SlidesLive Video |
Sheng-Hsuan Lin 🔗 |
Tue 12:30 p.m. - 2:30 p.m.
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Discussion Pannel
(
Discussion Pannel
)
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SlidesLive Video |
Xiao-Yang Liu · Qibin Zhao · Chao Li · Guillaume Rabusseau 🔗 |
Tue 2:30 p.m. - 2:35 p.m.
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Closing Remarks
(
Closing
)
>
SlidesLive Video |
🔗 |
-
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Bayesian Tensor Networks
(
Poster
)
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Kriton Konstantinidis · Yao Lei Xu · Qibin Zhao · Danilo Mandic 🔗 |
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A Tensorized Spectral Attention Mechanism for Efficient Natural Language Processing
(
Poster
)
>
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Yao Lei Xu · Kriton Konstantinidis · Shengxi Li · Danilo Mandic 🔗 |
-
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Model based multi-agent reinforcement learning with tensor decompositions
(
Poster
)
>
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Pascal van der Vaart · Anuj Mahajan · Shimon Whiteson 🔗 |
-
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Improvements to gradient descent methods for quantum tensor network machine learning
(
Poster
)
>
|
James Dborin 🔗 |
-
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Rademacher Random Projections with Tensor Networks
(
Poster
)
>
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Beheshteh Rakhshan · Guillaume Rabusseau 🔗 |
-
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Reinforcement Learning in Factored Action Spaces using Tensor Decompositions
(
Poster
)
>
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Anuj Mahajan · Mikayel Samvelyan · Lei Mao · Viktor Makoviichuk · Animesh Garg · Jean Kossaifi · Shimon Whiteson · Yuke Zhu · Anima Anandkumar 🔗 |
-
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Tensor Rings for Learning Circular Hidden Markov Models
(
Poster
)
>
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Mohammad Ali Javidian · Vaneet Aggarwal · Zubin Jacob 🔗 |
-
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Towards a Trace-Preserving Tensor Network Representation of Quantum Channels
(
Poster
)
>
|
Siddarth Srinivasan · Sandesh Adhikary · Jacob Miller · Guillaume Rabusseau · Byron Boots 🔗 |
-
|
Distributive Pre-training of Generative Modeling Using Matrix Product States
(
Poster
)
>
|
Sheng-Hsuan Lin 🔗 |
-
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ContracTN: A Tensor Network Library Designed for Machine Learning
(
Poster
)
>
|
Jacob Miller · Guillaume Rabusseau 🔗 |
-
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Tensor Ring Parametrized Variational Quantum Circuits for Large Scale Quantum Machine Learning
(
Poster
)
>
|
Dheeraj Peddireddy · Vipul Bansal · Zubin Jacob · Vaneet Aggarwal 🔗 |
-
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Nonparametric tensor estimation with unknown permutations
(
Poster
)
>
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Chanwoo Lee · Miaoyan Wang 🔗 |
-
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Low-Rank Tensor Completion via Coupled Framelet Transform
(
Poster
)
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Jian-Li Wang · Ting-Zhu Huang · Xi-Le Zhao · Tai-Xiang Jiang · Michael Ng 🔗 |
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Matrix product state for quantum-inspired feature extraction and compressed sensing
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Poster
)
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Wen-Jun Li · Zheng-Zhi Sun · Shi-Ju Ran · Gang Su 🔗 |
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Bayesian Latent Factor Model for Higher-order Data: an Extended Abstract
(
Poster
)
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Zerui Tao · Xuyang ZHAO · Toshihisa Tanaka · Qibin Zhao 🔗 |
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Is Rank Minimization of the Essence to Learn Tensor Network Structure?
(
Poster
)
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Chao Li · Qibin Zhao 🔗 |
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Born Machines for Periodic and Open XY Quantum Spin Chains
(
Poster
)
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Abigail McClain Gomez · Susanne Yelin · Khadijeh Najafi 🔗 |
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Probabilistic Graphical Models and Tensor Networks: A Hybrid Framework
(
Poster
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Jacob Miller · Geoffrey Roeder 🔗 |
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QTN-VQC: An End-to-End Learning Framework for Quantum Neural Networks
(
Poster
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Jun Qi · Huck Yang · Pin-Yu Chen 🔗 |
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Multiway Spherical Clustering via Degree-Corrected Tensor Block Models
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Poster
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Jiaxin Hu · Miaoyan Wang 🔗 |
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Graph-Tensor Singular Value Decomposition for Data Recovery
(
Poster
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Lei Deng · Haifeng Zheng · Xiao-Yang Liu 🔗 |
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DTAE: Deep Tensor Autoencoder for 3-D Seismic Data Interpolation
(
Poster
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Feng Qian 🔗 |
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High Performance Hierarchical Tucker Tensor Learning Using GPU Tensor Cores
(
Poster
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hao huang · Xiao-Yang Liu · Weiqin Tong · Tao Zhang · Anwar Walid 🔗 |
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Fully-Connected Tensor Network Decomposition
(
Poster
)
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Yu-Bang Zheng · Ting-Zhu Huang · Xi-Le Zhao · Qibin Zhao · Tai-Xiang Jiang 🔗 |
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Codee: A Tensor Embedding Scheme for Binary Code Search
(
Poster
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Jia Yang · Cai Fu · Xiao-Yang Liu 🔗 |
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Deep variational reinforcement learning by optimizing Hamiltonian equation
(
Poster
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Zeliang Zhang · Xiao-Yang Liu 🔗 |
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Quantum Machine Learning for Earth Observation Images
(
Poster
)
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Su Yeon Chang · Bertrand Le Saux · SOFIA VALLECORSA 🔗 |
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Spectral Tensor Layer for Model-Parallel Deep Neural Networks
(
Poster
)
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Zhiyuan Wang · Xiao-Yang Liu 🔗 |