Search Results for author: Shi-Ju Ran

Found 22 papers, 7 papers with code

Tensor networks for interpretable and efficient quantum-inspired machine learning

no code implementations19 Nov 2023 Shi-Ju Ran, Gang Su

It is a critical challenge to simultaneously gain high interpretability and efficiency with the current schemes of deep machine learning (ML).

Tensor Networks

Persistent Ballistic Entanglement Spreading with Optimal Control in Quantum Spin Chains

no code implementations21 Jul 2023 Ying Lu, Pei Shi, Xiao-Han Wang, Jie Hu, Shi-Ju Ran

In this work, we uncover that the ``variational entanglement-enhancing'' field (VEEF) robustly induces a persistent ballistic spreading of entanglement in quantum spin chains.

Compressing neural network by tensor network with exponentially fewer variational parameters

no code implementations10 May 2023 Yong Qing, Peng-Fei Zhou, Ke Li, Shi-Ju Ran

Neural network (NN) designed for challenging machine learning tasks is in general a highly nonlinear mapping that contains massive variational parameters.

Tensor Networks

Deep Machine Learning Reconstructing Lattice Topology with Strong Thermal Fluctuations

no code implementations8 Aug 2022 Xiao-Han Wang, Pei Shi, Bin Xi, Jie Hu, Shi-Ju Ran

In this work, we demonstrate the validity of the deep convolutional neural network (CNN) on reconstructing the lattice topology (i. e., spin connectivities) in the presence of strong thermal fluctuations and unbalanced data.

Open-Ended Question Answering

Unsupervised Recognition of Informative Features via Tensor Network Machine Learning and Quantum Entanglement Variations

no code implementations13 Jul 2022 Sheng-Chen Bai, Yi-Cheng Tang, Shi-Ju Ran

Here we investigate such a ``white shoe'' recognition problem from the perspective of tensor network (TN) machine learning and quantum entanglement.

Image Segmentation object-detection +2

Quantum compiling with a variational instruction set for accurate and fast quantum computing

no code implementations29 Mar 2022 Ying Lu, Peng-Fei Zhou, Shao-Ming Fei, Shi-Ju Ran

The quantum instruction set (QIS) is defined as the quantum gates that are physically realizable by controlling the qubits in quantum hardware.

Non-parametric Semi-Supervised Learning in Many-body Hilbert Space with Rescaled Logarithmic Fidelity

no code implementations1 Jul 2021 Wei-Ming Li, Shi-Ju Ran

In quantum and quantum-inspired machine learning, the very first step is to embed the data in quantum space known as Hilbert space.

Active Learning BIG-bench Machine Learning +1

Predicting Quantum Potentials by Deep Neural Network and Metropolis Sampling

no code implementations6 Jun 2021 Rui Hong, Peng-Fei Zhou, Bin Xi, Jie Hu, An-Chun Ji, Shi-Ju Ran

The hybridizations of machine learning and quantum physics have caused essential impacts to the methodology in both fields.

Benchmarking

Preparation of Many-body Ground States by Time Evolution with Variational Microscopic Magnetic Fields and Incomplete Interactions

no code implementations3 Jun 2021 Ying Lu, Yue-Min Li, Peng-Fei Zhou, Shi-Ju Ran

State preparation is of fundamental importance in quantum physics, which can be realized by constructing the quantum circuit as a unitary that transforms the initial state to the target, or implementing a quantum control protocol to evolve to the target state with a designed Hamiltonian.

Automatically Differentiable Quantum Circuit for Many-qubit State Preparation

no code implementations30 Apr 2021 Peng-Fei Zhou, Rui Hong, Shi-Ju Ran

Taking the ground states of quantum lattice models and random matrix product states as examples, with the number of qubits where processing the full coefficients is unlikely, ADQC obtains high fidelities with small numbers of layers $N_L \sim O(1)$.

Residual Matrix Product State for Machine Learning

no code implementations22 Dec 2020 Ye-Ming Meng, Jing Zhang, Peng Zhang, Chao GAO, Shi-Ju Ran

Tensor network, which originates from quantum physics, is emerging as an efficient tool for classical and quantum machine learning.

BIG-bench Machine Learning Quantum Machine Learning +1

Deep learning Local Reduced Density Matrices for Many-body Hamiltonian Estimation

1 code implementation5 Dec 2020 Xinran Ma, Z. C. Tu, Shi-Ju Ran

In this work, we demonstrate that convolutional neural network (CNN) can learn from the coefficients of local reduced density matrices to estimate the physical parameters of the many-body Hamiltonians, such as coupling strengths and magnetic fields, provided the states as the ground states.

Tangent-Space Gradient Optimization of Tensor Network for Machine Learning

1 code implementation10 Jan 2020 Zheng-Zhi Sun, Shi-Ju Ran, Gang Su

The gradient-based optimization method for deep machine learning models suffers from gradient vanishing and exploding problems, particularly when the computational graph becomes deep.

BIG-bench Machine Learning

Bayesian Tensor Network with Polynomial Complexity for Probabilistic Machine Learning

1 code implementation30 Dec 2019 Shi-Ju Ran

To testify its validity for exponentially many events, BTN is implemented to the image recognition, where the classification is mapped to capturing the conditional probabilities in an exponentially large sample space.

BIG-bench Machine Learning

Quantum Compressed Sensing with Unsupervised Tensor-Network Machine Learning

no code implementations24 Jul 2019 Shi-Ju Ran, Zheng-Zhi Sun, Shao-Ming Fei, Gang Su, Maciej Lewenstein

To transfer a specific piece of information with $|\Psi \rangle$, our proposal is to encode such information in the separable state with the minimal distance to the measured state $|\Phi \rangle$ that is obtained by partially measuring on $|\Psi \rangle$ in a designed way.

BIG-bench Machine Learning

Generative Tensor Network Classification Model for Supervised Machine Learning

no code implementations26 Mar 2019 Zheng-Zhi Sun, Cheng Peng, Ding Liu, Shi-Ju Ran, Gang Su

By investigating the distances in the many-body Hilbert space, we find that (a) the samples are naturally clustering in such a space; and (b) bounding the bond dimensions of the TN's to finite values corresponds to removing redundant information in the image recognition.

BIG-bench Machine Learning Classification +2

Quantum simulation for thermodynamics of infinite-size many-body systems by O(10) sites

1 code implementation3 Oct 2018 Shi-Ju Ran, Bin Xi, Cheng Peng, Gang Su, Maciej Lewenstein

In this work we propose to simulate many-body thermodynamics of infinite-size quantum lattice models in one, two, and three dimensions, in terms of few-body models of only O(10) sites, which we coin as quantum entanglement simulators (QES's).

Strongly Correlated Electrons Computational Physics Quantum Physics

Entanglement-guided architectures of machine learning by quantum tensor network

1 code implementation24 Mar 2018 Yuhan Liu, Xiao Zhang, Maciej Lewenstein, Shi-Ju Ran

In this work, we implement simple numerical experiments, related to pattern/images classification, in which we represent the classifiers by many-qubit quantum states written in the matrix product states (MPS).

BIG-bench Machine Learning

Review of Tensor Network Contraction Approaches

1 code implementation30 Aug 2017 Shi-Ju Ran, Emanuele Tirrito, Cheng Peng, Xi Chen, Gang Su, Maciej Lewenstein

One goal is to provide a systematic introduction of TN contraction algorithms (motivations, implementations, relations, implications, etc.

Computational Physics Statistical Mechanics Strongly Correlated Electrons Applied Physics Quantum Physics

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