Fusing Nature with Computational Science for Optimal Signal Extraction

Date

2021-01-19

Advisors

Journal Title

Journal ISSN

ISSN

2571-905X

Volume Title

Publisher

MDPI

Type

Article

Peer reviewed

Yes

Abstract

Fusing nature with computational science has been proved paramount importance and researchers have also shown growing enthusiasm on inventing and developing nature inspired algorithms for solving complex problems across subjects. Inevitably, these advancements have rapidly promoted the development of data science, where nature-inspired algorithms are changing the traditional way of data processing. This paper proposes the hybrid approach, namely SSA-GA, which incorporates the optimization merits of genetic algorithm (GA) for the advancements of Singular Spectrum Analysis (SSA). This approach further boosts the performance of SSA forecasting via better and more efficient grouping. Given the performances of SSA-GA on 100 real-time series data across various subjects, this newly proposed SSA-GA approach is proved to be computationally efficient and robust with improved forecasting performance.

Description

open access article

Keywords

forecasting, singular spectrum analysis, genetic algorithm

Citation

Hassani, H., Yeganegi, M.R., Huang, X. (2021) Fusing Nature with Computational Science for Optimal Signal Extraction. Stats, 4, pp.71–85.

Rights

Research Institute