Adaptive Kernel Firefly Algorithm Based Feature Selection and Q-Learner Machine Learning Models in Cloud

被引:0
作者
Mary I.M. [1 ]
Karuppasamy K. [2 ]
机构
[1] Department of Information Technology, Sri Ramakrishna Engineering College, Tamilnadu, Coimbatore
[2] Department of Computer Science & Engineering, RVS College of Engineering and Technology, Tamilnadu, Coimbatore
来源
Computer Systems Science and Engineering | 2023年 / 46卷 / 03期
关键词
Adaptive Kernel Firefly Algorithm (AKFA); auto selection; auto tuning decision feedback; classification; Cloud analytics; cloud DevOps; clustering; distributed learning; ensemble learning; feature selection; machine learning; Q learning; wrapper feature selection;
D O I
10.32604/csse.2023.031114
中图分类号
学科分类号
摘要
CC's (Cloud Computing) networks are distributed and dynamic as signals appear/disappear or lose significance. MLTs (Machine learning Techniques) train datasets which sometime are inadequate in terms of sample for inferring information. A dynamic strategy, DevMLOps (Development Machine Learning Operations) used in automatic selections and tunings of MLTs result in significant performance differences. But, the scheme has many disadvantages including continuity in training, more samples and training time in feature selections and increased classification execution times. RFEs (Recursive Feature Eliminations) are computationally very expensive in its operations as it traverses through each feature without considering correlations between them. This problem can be overcome by the use of Wrappers as they select better features by accounting for test and train datasets. The aim of this paper is to use DevQLMLOps for automated tuning and selections based on orchestrations and messaging between containers. The proposed AKFA (Adaptive Kernel Firefly Algorithm) is for selecting features for CNM (Cloud Network Monitoring) operations. AKFA methodology is demonstrated using CNSD (Cloud Network Security Dataset) with satisfactory results in the performance metrics like precision, recall, F-measure and accuracy used. © 2023 CRL Publishing. All rights reserved.
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页码:2667 / 2685
页数:18
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