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Efficient and Rapid Machine Learning Algorithms for Big Data and Dynamic Varying Systems

机译:大数据和动态变化系统的高效快速机器学习算法

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摘要

With the exponential growth of data and complexity of systems, fast machine learning/artificial intelligence and computational intelligence techniques are highly required. Many conventional computational intelligence techniques face bottlenecks in learning (e.g., intensive human intervention and convergence time) [item 1) in the Appendix]. However, efficient learning algorithms alternatively offer significant benefits including fast learning speed, ease of implementation, and minimal human intervention. The need for efficient and fast implementation of machine learning techniques in big data and dynamic varying systems poses many research challenges. This special issue highlights some latest development in the related areas.
机译:随着数据的指数增长和系统的复杂性,迫切需要快速的机器学习/人工智能和计算智能技术。许多传统的计算智能技术在学习中面临瓶颈(例如,附录中的大量人工干预和收敛时间)[项目1]。但是,高效的学习算法可以提供很多好处,包括学习速度快,易于实现以及最少的人工干预。在大数据和动态变化的系统中高效,快速地实施机器学习技术的需求带来了许多研究挑战。本期特刊着重介绍了相关领域的一些最新进展。

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