Quantum-inspired tensor network for Earth science

01/15/2023
by   Soronzonbold Otgonbaatar, et al.
0

Deep Learning (DL) is one of many successful methodologies to extract informative patterns and insights from ever increasing noisy large-scale datasets (in our case, satellite images). However, DL models consist of a few thousand to millions of training parameters, and these training parameters require tremendous amount of electrical power for extracting informative patterns from noisy large-scale datasets (e.g., computationally expensive). Hence, we employ a quantum-inspired tensor network for compressing trainable parameters of physics-informed neural networks (PINNs) in Earth science. PINNs are DL models penalized by enforcing the law of physics; in particular, the law of physics is embedded in DL models. In addition, we apply tensor decomposition to HyperSpectral Images (HSIs) to improve their spectral resolution. A quantum-inspired tensor network is also the native formulation to efficiently represent and train quantum machine learning models on big datasets on GPU tensor cores. Furthermore, the key contribution of this paper is twofold: (I) we reduced a number of trainable parameters of PINNs by using a quantum-inspired tensor network, and (II) we improved the spectral resolution of remotely-sensed images by employing tensor decomposition. As a benchmark PDE, we solved Burger's equation. As practical satellite data, we employed HSIs of Indian Pine, USA and of Pavia University, Italy.

READ FULL TEXT

page 1

page 3

research
06/15/2018

Supervised learning with generalized tensor networks

Tensor networks have found a wide use in a variety of applications in ph...
research
04/28/2020

Quantum-inspired Machine Learning on high-energy physics data

One of the most challenging big data problems in high energy physics is ...
research
03/11/2021

Tensor networks and efficient descriptions of classical data

We investigate the potential of tensor network based machine learning me...
research
10/06/2021

QTN-VQC: An End-to-End Learning framework for Quantum Neural Networks

The advent of noisy intermediate-scale quantum (NISQ) computers raises a...
research
04/25/2023

The cross-sectional stock return predictions via quantum neural network and tensor network

In this paper we investigate the application of quantum and quantum-insp...
research
02/19/2018

Multi-resolution Tensor Learning for Large-Scale Spatial Data

High-dimensional tensor models are notoriously computationally expensive...
research
05/26/2021

An Explainable Probabilistic Classifier for Categorical Data Inspired to Quantum Physics

This paper presents Sparse Tensor Classifier (STC), a supervised classif...

Please sign up or login with your details

Forgot password? Click here to reset