电离层雷达回波分类各种优化算法的比较分析

J. Vijaya, Muskan Jain, Nandita Yadav
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引用次数: 0

摘要

机器学习作为一个不断扩大的领域正在迅速发展。近年来,它的发展迅速,并取得了许多理论突破。由于其作为机器学习的一部分的重要性,智能优化算法有望变得越来越多。数据量的指数级增长和模型复杂性的增加对机器学习优化策略提出了越来越大的挑战。已经推出了许多计划来改进机器学习优化方法或解决与优化相关的问题。未来的优化和机器学习研究可以通过从机器学习的角度对优化策略进行详细的评估和分析来指导。机器学习使用各种优化策略,这使得比较和分析它们在各种情况下的运行情况变得更加容易。在本研究中,我们分析和比较了七种著名的生物启发数据工程技术及其有效性。我们将这些技术应用于电离层数据集的雷达回波,并使用一系列评估指标评估结果。
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Comparison Analysis of Various Optimization Algorithms for Classification of Radar Returns from the Ionosphere
Machine learning is developing swiftly as an everexpanding field. The development of the same is occurring rapidly and has made many theoretical breakthroughs in recent times. Due to its importance as a part of machine learning, intelligent optimization algorithms are expected to become increasingly. The exponential growth of data volume and the increase in model complexity present increasing challenges for machine learning optimization strategies. Numerous initiatives have been launched to improve machine learning optimization approaches or address optimization-related problems. Future optimization and machine-learning research can be guided by a detailed evaluation and analysis of optimization strategies from a machine-learning perspective. Machine learning uses a variety of optimization strategies, which makes it easier to compare and analyze how well they function in various situations. In this study, we analyze and contrast seven well-known bio-inspired data engineering techniques and their effectiveness. We apply these techniques to the Radar Returns from the Ionosphere data-set and assess the results with a range of assessment metrics.
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