Using Quantum Mechanics to Cluster Time Series

05/04/2018
by   Clark Alexander, et al.
0

In this article we present a method by which we can reduce a time series into a single point in R^13. We have chosen 13 dimensions so as to prevent too many points from being labeled as "noise." When using a Euclidean (or Mahalanobis) metric, a simple clustering algorithm will with near certainty label the majority of points as "noise." On pure physical considerations, this is not possible. Included in our 13 dimensions are four parameters which describe the coefficients of a cubic polynomial attached to a Gaussian picking up a general trend, four parameters picking up periodicity in a time series, two each for amplitude of a wave and period of a wave, and the final five report the "leftover" noise of the detrended and aperiodic time series. Of the final five parameters, four are the centralized probabilistic moments, and the final for the relative size of the series. The first main contribution of this work is to apply a theorem of quantum mechanics about the completeness of the solutions to the quantum harmonic oscillator on L^2(R) to estimating trends in time series. The second main contribution is the method of fitting parameters. After many numerical trials, we realized that methods such a Newton-Rhaphson and Levenberg-Marquardt converge extremely fast if the initial guess is good. Thus we guessed many initial points in our parameter space and computed only a few iterations, a technique common in Keogh's work on time series clustering. Finally, we have produced a model which gives incredibly accurate results quickly. We ackowledge that there are faster methods as well of more accurate methods, but this work shows that we can still increase computation speed with little, if any, cost to accuracy in the sense of data clustering.

READ FULL TEXT

page 26

page 27

research
10/27/2018

Time series clustering based on the characterisation of segment typologies

Time series clustering is the process of grouping time series with respe...
research
08/25/2022

Time Series Clustering with an EM algorithm for Mixtures of Linear Gaussian State Space Models

In this paper, we consider the task of clustering a set of individual ti...
research
09/28/2022

On Computing Exact Means of Time Series Using the Move-Split-Merge Metric

Computing an accurate mean of a set of time series is a critical task in...
research
05/26/2023

Clustering Method for Time-Series Images Using Quantum-Inspired Computing Technology

Time-series clustering serves as a powerful data mining technique for ti...
research
11/01/2019

Research and application of time series algorithms in centralized purchasing data

Based on the online transaction data of COSCO group's centralized procur...
research
08/06/2021

Quantum Quantile Mechanics: Solving Stochastic Differential Equations for Generating Time-Series

We propose a quantum algorithm for sampling from a solution of stochasti...

Please sign up or login with your details

Forgot password? Click here to reset