Learning Circular Hidden Quantum Markov Models: A Tensor Network Approach

10/29/2021
by   Mohammad ali Javidian, et al.
0

In this paper, we propose circular Hidden Quantum Markov Models (c-HQMMs), which can be applied for modeling temporal data in quantum datasets (with classical datasets as a special case). We show that c-HQMMs are equivalent to a constrained tensor network (more precisely, circular Local Purified State with positive-semidefinite decomposition) model. This equivalence enables us to provide an efficient learning model for c-HQMMs. The proposed learning approach is evaluated on six real datasets and demonstrates the advantage of c-HQMMs on multiple datasets as compared to HQMMs, circular HMMs, and HMMs.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/30/2022

A quantum learning approach based on Hidden Markov Models for failure scenarios generation

Finding the failure scenarios of a system is a very complex problem in t...
research
10/24/2017

Learning Hidden Quantum Markov Models

Hidden Quantum Markov Models (HQMMs) can be thought of as quantum probab...
research
12/02/2019

Expressiveness and Learning of Hidden Quantum Markov Models

Extending classical probabilistic reasoning using the quantum mechanical...
research
09/09/2023

Visual Material Characteristics Learning for Circular Healthcare

The linear take-make-dispose paradigm at the foundations of our traditio...
research
04/03/2023

A mixture transition distribution modeling for higher-order circular Markov processes

The stationary higher-order Markov process for circular data is consider...
research
04/23/2018

On the circular correlation coefficients for bivariate von Mises distributions on a torus

This paper studies circular correlations for the bivariate von Mises sin...

Please sign up or login with your details

Forgot password? Click here to reset