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Fractional Calculus-Based Slime Mould Algorithm for Feature Selection Using Rough Set
Faculty
Science
Year:
2021
Type of Publication:
ZU Hosted
Pages:
Authors:
Rehab Aly Ibrahim Muhammed
Staff Zu Site
Abstract In Staff Site
Journal:
IEEE Access IEEE
Volume:
Keywords :
Fractional Calculus-Based Slime Mould Algorithm , Feature Selection
Abstract:
Features Selection (FS) techniques have been applied to several real-world applications which contain high dimension data. These FS techniques have main objectives that aim to achieve them, such as removing irrelevant features and increasing classication accuracy. This is considered a bi-objectives optimization problem that requires a suitable technique that can balance between the objectives. So, different sets of FS techniques have been developed, and those techniques that depend on meta-heuristic (MH) established their performance overall traditional FS techniques. However, these MH approaches still require more enhancement to neutralize their exploration and exploitation abilities during the searching process. Enhancing the meta-heuristic optimization algorithm using the perspective of fractional calculus (FC) is an attractive and novel approach. In this paper, the slime mould algorithm (SMA) is modied using the FC for handling the optimizer drawback of the inefcient diversication phase. As a result, a fractional-order SMA is proposed to avoid the local solutions and discover the search landscape efciently via considering a historic memorize of agents' positions. The proposed FOSMA is applied to extract features from a set of real-world data and increase classication accuracy. For boosting the optimizer performance while processing with these datasets, the rough set (RS) is used as the tness function to handle the uncertainty inside the realworld data. Finally, the proposed FOSMA's results are compared with a set of well-known FS techniques to investigate its performance. The comparison illustrates the superiority of FOSMA in providing high accuracy.
Author Related Publications
Rehab Aly Ibrahim Muhammed, "Image Denoising using K-SVD Algorithm based on Gabor Wavelet Dictionary", International Journal of Computer Applications, 2012
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Rehab Aly Ibrahim Muhammed, "Cooperative Meta-heuristic Algorithms for Global Optimization Problems", Elseveir, 2021
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Rehab Aly Ibrahim Muhammed, "Efficient artificial intelligence forecasting models for COVID-19outbreak in Russia and Brazil", Elseveir, 2021
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Rehab Aly Ibrahim Muhammed, "Automatic clustering method to segment COVID-19 CT images", ٍٍSpringer, 2021
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Rehab Aly Ibrahim Muhammed, "IoT Workflow Scheduling Using Intelligent Arithmetic Optimization Algorithm in Fog Computing", Hindawi, 2021
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Department Related Publications
Mohamed Ahmed ElsayedAly, "comment on"the effect of fractional parameters of the conducting elastic half-in generalized magneto thermoplasticy"", امريكا, 2013
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Elsayed Mahsoub Ahmed Nigm, "Extreme value modeling under power normalization", أمريكا, 2013
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Fawzia Mahmoud Salim Mustafa, "a gradation ditopological tespacexture", american-Eurasian network for scientific information publisher, 2014
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Hassan Mostafa Metwally, "New Rough Set Approximation Spaces", Hindawi Publishing Corporation, 2013
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Hassan Mostafa Metwally, "Common Fixed Point Theorems in 2-Metric Spaces", HIKARI Ltd, 2011
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