基于最小-最大归一化和模糊直觉集的增强自适应LMS方法的数据集可行性分析方法

Q2 Engineering
S. Prasetyowati, Munaf Ismail, E. N. Budisusila, D. Setiadi, M. Purnomo
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引用次数: 1

摘要

在机器学习中,尤其是在预测中,需要一个好的数据集来达到良好的精度,因此预测精度很高。数据集不平衡或过小是机器学习中的常见问题。本研究提出了一种确定数据集质量的方法。如果数据集不可行,可以在进行预测之前进行预处理以提高数据集的质量。将自适应最小均方(LMS)与最小最大归一化(Min-max Normalization)和模糊直觉集(Fuzzy Intuitive Sets, FIS)算法相结合,形成了该方法。这种方法可能会评估不确定性和信息的价值,从而影响数据集的可行性。如果数据集的不确定性值接近1.5且信息值小于0.5,则该数据集可用。该方法已在公共和私人数据集上进行了测试。从所进行的实验来看,采用各种方法对所述阈值上的不确定度值和信息值的预测精度均在70%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dataset Feasibility Analysis Method based on Enhanced Adaptive LMS method with Min-max Normalization and Fuzzy Intuitive Sets
A good dataset was required for attaining good accuracy in machine learning, especially in prediction, so that prediction accuracy was high. The imbalanced or too small dataset was a common problem in machine learning. This study proposed a method for determining the dataset's quality. If the dataset is not feasible, preprocessing can be performed to improve the dataset's quality before making predictions. Adaptive Least Mean Square (LMS) was merged with Min-max Normalization and Fuzzy Intuitive Sets (FIS) algorithms to create the proposed technique. This method might assess the value of uncertainty and information, which will influence the dataset's feasibility. If the dataset has an uncertainty value closed 1.5 and an information value of less than 0.5, it is usable. The method has been tested on both public and private datasets. According to all experiments conducted, the uncertainty value and information value on the stated threshold can have prediction accuracy above 70% with various methodologies.
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来源期刊
CiteScore
2.70
自引率
0.00%
发文量
31
审稿时长
20 weeks
期刊介绍: International Journal on Electrical Engineering and Informatics is a peer reviewed journal in the field of electrical engineering and informatics. The journal is published quarterly by The School of Electrical Engineering and Informatics, Institut Teknologi Bandung, Indonesia. All papers will be blind reviewed. Accepted papers will be available on line (free access) and printed version. No publication fee. The journal publishes original papers in the field of electrical engineering and informatics which covers, but not limited to, the following scope : Power Engineering Electric Power Generation, Transmission and Distribution, Power Electronics, Power Quality, Power Economic, FACTS, Renewable Energy, Electric Traction, Electromagnetic Compatibility, Electrical Engineering Materials, High Voltage Insulation Technologies, High Voltage Apparatuses, Lightning Detection and Protection, Power System Analysis, SCADA, Electrical Measurements Telecommunication Engineering Antenna and Wave Propagation, Modulation and Signal Processing for Telecommunication, Wireless and Mobile Communications, Information Theory and Coding, Communication Electronics and Microwave, Radar Imaging, Distributed Platform, Communication Network and Systems, Telematics Services, Security Network, and Radio Communication. Computer Engineering Computer Architecture, Parallel and Distributed Computer, Pervasive Computing, Computer Network, Embedded System, Human—Computer Interaction, Virtual/Augmented Reality, Computer Security, VLSI Design-Network Traffic Modeling, Performance Modeling, Dependable Computing, High Performance Computing, Computer Security.
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