Big Data Classification Using Enhanced Dynamic KPCA and Convolutional Multi-Layer Bi-LSTM Network

Lokesh, S (2023) Big Data Classification Using Enhanced Dynamic KPCA and Convolutional Multi-Layer Bi-LSTM Network. IETE Journal of Research, 69 (12). pp. 8686-8704. ISSN 0377-2063

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Abstract

Over the last few years, Big Data has sparked a lot of interest in a variety of engineering and scientific fields. Despite its numerous advantages, big data presents several issues such as big data management, big data analytics, big data security, and privacy which must be addressed to improve service quality. The proposed method focuses on data preprocessing, feature extraction, and classification. At first, data preprocessing has been performed and the weights have been assigned by the automated weight assignment model. In addition, the feature extraction model applies Principal Component Analysis (PCA) which employs feature correlation at the initial level, with best Information Gain (IG) and time-series data’s similarity search with Kernel Dynamic Time Wrapping (DTW) method. On this basis, an Enhanced dynamic KPCA algorithm is introduced by integrating the kernel trick, DTW algorithm, PCA, and information gain. Then Convolutional multi-layer Bi-LSTM algorithms have been applied for classification. To analyze the big data performance, 8 types of datasets such as 32-pendigits, Bank-Marketing, Click Prediction, EEG, Electricity-normalized, Jm1, Magic telescope, and Amazon employee access are used. The performances are evaluated by different metrics with existing methods of LSTM, BRNN, MFC, and DL methods.

Item Type: Article
Uncontrolled Keywords: Convolutional multi-layer bi-LSTM; Data classification; Data preprocessing; Dynamic time wrapping; Engineering fields; Information gain; Kernel dynamic time wrapping; Multi-layers; Multilayer self-attention; Principal-component analysis
Subjects: A Artificial Intelligence and Data Science > Big Data
C Computer Science and Engineering > Data Mining
C Computer Science and Engineering > Big Data Analytics
Divisions: Computer Science and Engineering
Depositing User: Users 5 not found.
Date Deposited: 26 Jul 2024 09:57
Last Modified: 14 Aug 2024 10:59
URI: https://ir.psgitech.ac.in/id/eprint/822

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