Emerging Topics in Evolutionary Machine Learning for Big Data Processing and Analytics

A special issue of Applied Sciences (ISSN 2076-3417). This special issue belongs to the section "Computing and Artificial Intelligence".

Deadline for manuscript submissions: closed (20 January 2024) | Viewed by 733

Special Issue Editors


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Guest Editor
Department of Electrical and Computer Engineering, Mississippi State University, Mississippi State, MS 39762, USA
Interests: evolutionary computation; evolutionary optimization; robotics; autonomous systems; applied machine learning for autonomous systems and robotics; big data processing

Special Issue Information

Dear Colleagues,

With the explosion of the Internet and social media technologies, a large amount of data is generated from various devices, systems and applications. Big data is being used to better understand consumer habits and target marketing campaigns, improve operational efficiency and lower costs, and reduce risk.

However, challenges, including both data processing and data analysis exist in large-scale practical applications with few solutions to handle processing large amounts of data. Specifically, in data fusion, multi-modal data with multi-source and heterogeneous characteristics, including text, image and video, and data features with high-dimensional redundancy in feature selection represent a challenge to the current processing and analysis capabilities. In most situations, a variety of techniques have been applied to multi-model data and data feature selection, such as classification algorithm, gradient descent algorithm, and heuristic search. However, most existing methods still require human expert knowledge and high computational cost.

Therefore, an efficient adaptive learning and parameter training technique is needed to better solve these problems in big data processing and analytics. Recently, a kind of automatic design technology, termed as the evolutionary machine learning (EML) method, is attracting more and more attention from global researchers. As an enhanced ML, EML integrates the advantages of both ML and evolutionary computation (EC) to have the powerful potential to show excellent automatic design for addressing the big data analytic problems. On the one hand, EML, as an excellent automatic fusion of heterogeneous data and processing of multimodal and multidimensional data methods, shows significant merits in automatic algorithm optimization and framework design. On the other hand, EML can not only help obtain the optimal network parameter setting as the input of different data features but makes exploring complicated search data more excellent than the traditional algorithm. More than that, the EML algorithm shows good scalability and an easy to parallelize nature when a dataset increases in size. Therefore, it is of great interest to investigate the role of the EML technique in solving different data features and structures in big data processing and analytic problems.

This Special Issue aims to bring together both experts and newcomers from either academia or industry to discuss new and existing issues concerning EML and big data, in particular, to the integration between academic research and industry applications, and to stimulate further engagement with the user community. Potential topics include, but are not limited to: 

  • EML system modeling and optimization; 
  • Scalable EML architecture for big data; 
  • EML for multi-objective optimization; 
  • EML for hyperparameters optimization; 
  • EML for high-dimensional and large-scale big data analytics; 
  • EML for expert systems optimization; 
  • EML for big data management for different scenarios; 
  • EML by big data-driven; 
  • EML for feature engineering; 
  • Evolutionary search-based neural network architecture search; 
  • EML for big data visualization and visual data analytics.

Prof. Dr. Lianbo Ma
Dr. Shangce Gao
Dr. Chaomin Luo
Guest Editors

Manuscript Submission Information

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Keywords

  • EML for business intelligence
  • healthcare
  • bioinformatics
  • intelligent transportation
  • smart city
  • smart sensor networks
  • cybersecurity
  • other critical application areas

Published Papers (1 paper)

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Research

26 pages, 2902 KiB  
Article
High-Dimensional Ensemble Learning Classification: An Ensemble Learning Classification Algorithm Based on High-Dimensional Feature Space Reconstruction
by Miao Zhao and Ning Ye
Appl. Sci. 2024, 14(5), 1956; https://doi.org/10.3390/app14051956 - 27 Feb 2024
Viewed by 527
Abstract
When performing classification tasks on high-dimensional data, traditional machine learning algorithms often fail to filter out valid information in the features adequately, leading to low levels of classification accuracy. Therefore, this paper explores the high-dimensional data from both the data feature dimension and [...] Read more.
When performing classification tasks on high-dimensional data, traditional machine learning algorithms often fail to filter out valid information in the features adequately, leading to low levels of classification accuracy. Therefore, this paper explores the high-dimensional data from both the data feature dimension and the model ensemble dimension. We propose a high-dimensional ensemble learning classification algorithm focusing on feature space reconstruction and classifier ensemble, called the HDELC algorithm. First, the algorithm considers feature space reconstruction and then generates a feature space reconstruction matrix. It effectively achieves feature selection and reconstruction for high-dimensional data. An optimal feature space is generated for the subsequent ensemble of the classifier, which enhances the representativeness of the feature space. Second, we recursively determine the number of classifiers and the number of feature subspaces in the ensemble model. Different classifiers in the ensemble system are assigned mutually exclusive non-intersecting feature subspaces for model training. The experimental results show that the HDELC algorithm has advantages compared with most high-dimensional datasets due to its more efficient feature space ensemble capability and relatively reliable ensemble operation performance. The HDELC algorithm makes it possible to solve the classification problem for high-dimensional data effectively and has vital research and application value. Full article
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