Abstract

With the progressing amount of data every day, Time series classification acts as a vital role in the real life environment. Raised data volume for the time periods will make hard for the researchers to examine as well as assess the data. Therefore time series classification is taken as a significant research problem for the examining as well as identifying the time series dataset. On the other hand the previous research might carry out low in case of existence of weak classifiers. It is solved by introducing the Weak Classifier aware Time Series Data Classification Algorithm (WCTSD). In this proposed technique, with the help of the Burrows-Wheeler Transform (BWT), primarily frequency domain based data transformation is carried out. After that, by means of presenting the technique called spectral window based transformation, time series based data transformation is performed. With the help of the Hybrid K Nearest Neighbour, Hybrid decision tree algorithm, Linear Multiclass Support Vector Machine, these transformed data is classified. Here, to enhance the classification accuracy, the weak classifier is eliminated by utilizing hybrid particle swarm with firefly algorithm. In the MATLAB simulation environment, the total implementation of the presented research technique is carried out and it is confirmed that the presented research technique WCTSD results in providing the best possible outcome compared to the previous research methods.

Highlights

  • Time series data is omnipresent [1]

  • To improve the classification accuracy, the weak classifier is eliminated by utilizing hybrid particle swarm with firefly algorithm

  • The name is BIDMC Congestive Heart Failure Database (CHFDB) and it is record "chf07". It pre-processed the data by the following two steps: (1) Drew-out each heartbeat, (2) produce each heartbeat of equivalent length by using the interpolation. This dataset is used in paper" A common framework for never-ending learning from time series streams", DAMI 29(6)

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Summary

Introduction

Time series data is omnipresent [1]. Human activities as well as nature generates time series (data) day by day and all over the place, such as financial recordings, weather readings, industrial observations and physiological signals [2]. Since the modest kind of time series data, univariate time series offers a sensibly good starting point to analyze these temporal signals [3]. The representation learning as well as classification research has identified numerous possible applications in the areas such as industry, finance, and health care. On the other hand, learning representations as well as classifying time series are even fascinating more consideration [4].

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