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Main Authors: Thakur, Dheeraja, Mohan, Athul, Ambika, G., Meena, Chandrakala
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.10298
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author Thakur, Dheeraja
Mohan, Athul
Ambika, G.
Meena, Chandrakala
author_facet Thakur, Dheeraja
Mohan, Athul
Ambika, G.
Meena, Chandrakala
contents We integrate machine learning approaches with nonlinear time series analysis, specifically utilizing recurrence measures to classify various dynamical states emerging from time series. We implement three machine learning algorithms Logistic Regression, Random Forest, and Support Vector Machine for this study. The input features are derived from the recurrence quantification of nonlinear time series and characteristic measures of the corresponding recurrence networks. For training and testing we generate synthetic data from standard nonlinear dynamical systems and evaluate the efficiency and performance of the machine learning algorithms in classifying time series into periodic, chaotic, hyper-chaotic, or noisy categories. Additionally, we explore the significance of input features in the classification scheme and find that the features quantifying the density of recurrence points are the most relevant. Furthermore, we illustrate how the trained algorithms can successfully predict the dynamical states of two variable stars, SX Her and AC Her from the data of their light curves.
format Preprint
id arxiv_https___arxiv_org_abs_2401_10298
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Machine learning approach to detect dynamical states from recurrence measures
Thakur, Dheeraja
Mohan, Athul
Ambika, G.
Meena, Chandrakala
Data Analysis, Statistics and Probability
Machine Learning
We integrate machine learning approaches with nonlinear time series analysis, specifically utilizing recurrence measures to classify various dynamical states emerging from time series. We implement three machine learning algorithms Logistic Regression, Random Forest, and Support Vector Machine for this study. The input features are derived from the recurrence quantification of nonlinear time series and characteristic measures of the corresponding recurrence networks. For training and testing we generate synthetic data from standard nonlinear dynamical systems and evaluate the efficiency and performance of the machine learning algorithms in classifying time series into periodic, chaotic, hyper-chaotic, or noisy categories. Additionally, we explore the significance of input features in the classification scheme and find that the features quantifying the density of recurrence points are the most relevant. Furthermore, we illustrate how the trained algorithms can successfully predict the dynamical states of two variable stars, SX Her and AC Her from the data of their light curves.
title Machine learning approach to detect dynamical states from recurrence measures
topic Data Analysis, Statistics and Probability
Machine Learning
url https://arxiv.org/abs/2401.10298