*Result*: Golden eagle based improved Att-BiLSTM model for big data classification with hybrid feature extraction and feature selection techniques.

Title:
Golden eagle based improved Att-BiLSTM model for big data classification with hybrid feature extraction and feature selection techniques.
Authors:
Kotikam G; Research Scholar, Department of Information and Communication Engineering, Anna University, Chennai, India., Selvaraj L; Department of Computer Science and Engineering, PSG Institute of Technology and Applied Research, Coimbatore, India.
Source:
Network (Bristol, England) [Network] 2024 May; Vol. 35 (2), pp. 154-189. Date of Electronic Publication: 2023 Dec 28.
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: Informa Healthcare Country of Publication: England NLM ID: 9431867 Publication Model: Print-Electronic Cited Medium: Internet ISSN: 1361-6536 (Electronic) Linking ISSN: 0954898X NLM ISO Abbreviation: Network Subsets: MEDLINE
Imprint Name(s):
Publication: London : Informa Healthcare
Original Publication: Bristol : IOP Pub., c1990-
Contributed Indexing:
Keywords: Big data; bidirectional classifier; feature extraction; feature selection; golden eagle algorithm; machine learning
Substance Nomenclature:
0 (1-(4-methylthiophenyl)-2-aminopropane)
0 (Propylamines)
0 (Sulfides)
Entry Date(s):
Date Created: 20231229 Date Completed: 20240416 Latest Revision: 20250815
Update Code:
20260130
DOI:
10.1080/0954898X.2023.2293895
PMID:
38155542
Database:
MEDLINE

*Further Information*

*The remarkable development in technology has led to the increase of massive big data. Machine learning processes provide a way for investigators to examine and particularly classify big data. Besides, several machine learning models rely on powerful feature extraction and feature selection techniques for their success. In this paper, a big data classification approach is developed using an optimized deep learning classifier integrated with hybrid feature extraction and feature selection approaches. The proposed technique uses local linear embedding-based kernel principal component analysis and perturbation theory, respectively, to extract more representative data and select the appropriate features from the big data environment. In addition, the feature selection task is fine-tuned by using perturbation theory through heuristic search based on their output accuracy. This feature selection heuristic search method is analysed with five recent heuristic optimization algorithms for deciding the final feature subset. Finally, the data are categorized through an attention-based bidirectional long short-term memory classifier that is optimized with a golden eagle-inspired algorithm. The performance of the proposed model is experimentally verified on publicly accessible datasets. From the experimental outcomes, it is demonstrated that the proposed framework is capable of classifying large datasets with more than 90% accuracy.*