A Dynamical Systems Approach to Machine Learning

IF 1.4 4区 工程技术 Q2 ENGINEERING, MULTIDISCIPLINARY International Journal of Computational Methods Pub Date : 2023-03-29 DOI:10.1142/s021987622350007x
S. Pourmohammad Azizi, A. Neisy, Sajad Ahmad Waloo
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Abstract

Employing various mathematical tools in machine learning is crucial since it may enhance the learning problem’s efficiency. Dynamic systems are among the most effective tools. In this study, an effort is made to examine a kind of machine learning from the perspective of a dynamic system, i.e., we apply it to learning problems whose input data is a time series. Using the discretization approach and radial basis functions, a new data set is created to adapt the data to a dynamic system framework. A discrete dynamic system is modeled as a matrix that, when multiplied by the data of each time, yields the data of the next time, or, in other words, can be used to predict the future value based on the present data, and the gradient descent technique was used to train this matrix. Eventually, using Python software, the efficacy of this approach relative to other machine learning techniques, such as neural networks, was analyzed.
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机器学习的动态系统方法
在机器学习中使用各种数学工具是至关重要的,因为它可以提高学习问题的效率。动态系统是最有效的工具之一。在这项研究中,我们试图从动态系统的角度来研究一种机器学习,即我们将其应用于输入数据为时间序列的学习问题。利用离散化方法和径向基函数,建立了一个新的数据集,使数据适应动态的系统框架。将离散动态系统建模为矩阵,与每次的数据相乘得到下一次的数据,也就是说,可以根据当前数据预测未来的值,并使用梯度下降技术来训练该矩阵。最后,使用Python软件,分析了这种方法相对于其他机器学习技术(如神经网络)的有效性。
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来源期刊
International Journal of Computational Methods
International Journal of Computational Methods ENGINEERING, MULTIDISCIPLINARY-MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
CiteScore
3.30
自引率
17.60%
发文量
84
审稿时长
15 months
期刊介绍: The purpose of this journal is to provide a unique forum for the fast publication and rapid dissemination of original research results and innovative ideas on the state-of-the-art on computational methods. The methods should be innovative and of high scholarly, academic and practical value. The journal is devoted to all aspects of modern computational methods including mathematical formulations and theoretical investigations; interpolations and approximation techniques; error analysis techniques and algorithms; fast algorithms and real-time computation; multi-scale bridging algorithms; adaptive analysis techniques and algorithms; implementation, coding and parallelization issues; novel and practical applications. The articles can involve theory, algorithm, programming, coding, numerical simulation and/or novel application of computational techniques to problems in engineering, science, and other disciplines related to computations. Examples of fields covered by the journal are: Computational mechanics for solids and structures, Computational fluid dynamics, Computational heat transfer, Computational inverse problem, Computational mathematics, Computational meso/micro/nano mechanics, Computational biology, Computational penetration mechanics, Meshfree methods, Particle methods, Molecular and Quantum methods, Advanced Finite element methods, Advanced Finite difference methods, Advanced Finite volume methods, High-performance computing techniques.
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