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Machine learning facilitated business intelligence (Part Ⅱ) Neural networks optimization techniques and applications

机译:机器学习便利商业智能(第二部分)神经网络优化技术与应用

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Purpose The purpose of this paper is three-fold: to review the categories explaining mainly optimization algorithms (techniques) in that needed to improve the generalization performance and learning speed of the Feedforward Neural Network (FNN); to discover the change in research trends by analyzing all six categories (i.e. gradient learning algorithms for network training, gradient free learning algorithms, optimization algorithms for learning rate, bias and variance (underfitting and overfitting) minimization algorithms, constructive topology neural networks, metaheuristic search algorithms) collectively; and recommend new research directions for researchers and facilitate users to understand algorithms real-world applications in solving complex management, engineering and health sciences problems. Design/methodology/approach The FNN has gained much attention from researchers to make a more informed decision in the last few decades. The literature survey is focused on the learning algorithms and the optimization techniques proposed in the last three decades. This paper (Part II) is an extension of Part I. For the sake of simplicity, the paper entitled "Machine learning facilitated business intelligence (Part I): Neural networks learning algorithms and applications" is referred to as Part I. To make the study consistent with Part I, the approach and survey methodology in this paper are kept similar to those in Part I. Findings Combining the work performed in Part I, the authors studied a total of 80 articles through popular keywords searching. The FNN learning algorithms and optimization techniques identified in the selected literature are classified into six categories based on their problem identification, mathematical model, technical reasoning and proposed solution. Previously, in Part I, the two categories focusing on the learning algorithms (i.e. gradient learning algorithms for network training, gradient free learning algorithms) are reviewed with their real-world applications in management, engineering, and health sciences. Therefore, in the current paper, Part II, the remaining four categories, exploring optimization techniques (i.e. optimization algorithms for learning rate, bias and variance (underfitting and overfitting) minimization algorithms, constructive topology neural networks, metaheuristic search algorithms) are studied in detail. The algorithm explanation is made enriched by discussing their technical merits, limitations, and applications in their respective categories. Finally, the authors recommend future new research directions which can contribute to strengthening the literature. Research limitations/implications - The FNN contributions are rapidly increasing because of its ability to make reliably informed decisions. Like learning algorithms, reviewed in Part I, the focus is to enrich the comprehensive study by reviewing remaining categories focusing on the optimization techniques. However, future efforts may be needed to incorporate other algorithms into identified six categories or suggest new category to continuously monitor the shift in the research trends. Practical implications - The authors studied the shift in research trend for three decades by collectively analyzing the learning algorithms and optimization techniques with their applications. This may help researchers to identify future research gaps to improve the generalization performance and learning speed, and user to understand the applications areas of the FNN.For instance, research contribution in FNN in the last three decades has changed from complex gradient-based algorithms to gradient free algorithms, trial and error hidden units fixed topology approach to cascade topology, hyperparameters initial guess to analytically calculation and converging algorithms at a global minimum rather than the local minimum. Originality/value The existing literature surveys include comparative study of the algorithms, identifying algorithms application areas and focusing on specific techniques in that it may not be able to identify algorithms categories, a shift in research trends over time, application area frequently analyzed, common research gaps and collective future directions. Part I and II attempts to overcome the existing literature surveys limitations by classifying articles into six categories covering a wide range of algorithm proposed to improve the FNN generalization performance and convergence rate. The classification of algorithms into six categories helps to analyze the shift in research trend which makes the classification scheme significant and innovative.
机译:目的本文的目的是三倍:审查主要解释优化算法(技术)所需的类别,以提高前馈神经网络(FNN)的泛化性能和学习速度;通过分析所有六个类别(即用于网络训练,梯度自由学习算法,用于学习率,偏差和方差(施工和过度装备)最小化算法,建设性拓扑神经网络,成逐术语搜索的梯度学习算法算法统称;并为研究人员推荐新的研究方向,并促进用户了解解决复杂管理,工程和健康科学问题的算法实际应用。设计/方法/方法FNN从研究人员获得了很多关注,在过去的几十年中进行了更明智的决定。文献调查集中在过去三十年中提出的学习算法和优化技术。本文(第二部分)是第一部分的延伸。为了简单起见,题为“机器学习便利的商业智能(第I部分):神经网络学习算法和应用程序”被称为I.制作与第I部分的研究符合,本文的方法和调查方法与第一部分中的方法相似。调查结果结合在第一部分中所执行的工作,通过流行的关键字搜索,共使用80篇文章。基于其问题识别,数学模型,技术推理和提出的解决方案,在所选文献中识别的FNN学习算法和优化技术被分为六个类别。以前,在第一部分中,专注于学习算法(即网络培训的梯度学习算法,渐变自由学习算法)的两种类别通过其实际应用在管理,工程和健康科学中进行了审查。因此,详细研究了本发明的第II部分,剩余的四个类别,探索优化技术(即用于学习率的优化算法,偏差和过度拟合)最小化算法,建设性拓扑神经网络,成群质训练搜索算法) 。通过在其各自的类别中讨论其技术优点,限制和应用来讨论算法的算法。最后,提交人建议未来的新研究方向,这有助于加强文学。研究限制/含义 - 由于能够使决策可靠地做出,FNN贡献迅速增加。像学习算法一样,在第一部分中审查,重点是通过审查重点关注优化技术的剩余类别来丰富综合研究。但是,可能需要将来的努力将其他算法纳入确定的六个类别或建议新类别以不断监测研究趋势的转变。实际意义 - 作者通过统称使用应用程序的学习算法和优化技术来研究三十年的研究趋势转变。这可能有助于研究人员确定未来的研究差距,以提高泛化性能和学习速度,并且用户了解FNN的应用领域。对于“过去三十年的FNN在FNN中的研究贡献”已从基于复杂的梯度的算法发生变化渐变自由算法,试验和错误隐藏单元固定拓扑方法级联拓扑方法,Quand参数初始猜测,以在全局最小而不是局部最小值的分析计算和融合算法。原创性/值现有的文献调查包括对算法的比较研究,识别算法应用领域并专注于特定技术,因为它可能无法识别算法类别,随着时间的推移,应用领域的研究趋势转变,常见的研究差距和集体的未来方向。第I和II部分试图通过将文章分类为覆盖各种算法的六个类别来克服现有文献调查限制,提出提高FNN泛化性能和收敛速度。算法分为六个类别的分类有助于分析研究趋势的转变,这使得分类方案显着和创新。

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