Please use this identifier to cite or link to this item: https://repository.sustech.edu/handle/123456789/13932
Title: Modeling Risk Assessment in Computational Grid Using Machine Learning Techniques
Other Titles: نمذجة تقييم المخاطر في منظومة الشبكة الحوسبية باستخدام طرق تعلم الآلة
Authors: Ghorashi, Sara Abdelwahab Abdelghani
Supervisor, Ajith Abraham
Keywords: Computer Science
Learning Techniques
Modeling Risk Assessment
Computational Grid
Issue Date: 10-Jul-2016
Publisher: Sudan University of Science and Technology
Citation: Ghorashi, Sara Abdelwahab Abdelghani . Modeling Risk Assessment in Computational Grid Using Machine Learning Techniques / Sara Abdelwahab Abdelghani Ghorashi ; Ajith Abraham .- khartoum : Sudan University of Science and Technology , College of Computer Science and Information Technology , 2016 .- 149p. :ill. ;28cm .-PhD.
Abstract: Assessing risk in a computational grid environment is an essential need for a user who runs applications from a remote machine on the grid, where resource sharing is the main concern. As grid computing is the ultimate solution believed to meet the ever-expanding computational needs of organizations, analysis of the various possible risks to evaluate and develop solutions to resolve these risks is needed. For correctly predicting the risk environment, we made a comparative analysis of various machine learning modeling methods on a dataset of risk factors. First we conducted a survey with International experts about the various risk factors associated with grid computing. Second we assigned numerical ranges to each risk factor based on a generic grid environment. We utilized data mining tools to pick the contributing attributes that improve the quality of the risk assessment prediction process. Finally,we modeled the prediction process of risk assessment in grid computing utilizing Meta learning approaches in order to improve the performance of the individual predictive models. Prediction of risk assessment is demanding because it is one of the most important contributory factors towards grid computing. Hence, researchers were motivated for developing and deploying grids on diverse computers, which is responsible for spreading resources across administrative domains so that resource sharing becomes effective. We present an adaptive neurofuzzy inference system that can provide an insight of predicting the risk environment. Also, we used a function approximation tool, namely, flexible neural tree for risk prediction and risk (factors) identification. Flexible neural tree is a feed forward neural network model, where network architecture was evolved like a tree. Our comprehensive experiment finds score for each risk factor in grid computing together with a general tree-based model for predicting risk.The empirical results illustrate that the proposed framework is able to provide risk assessment with a good accuracy. We concluded that data mining tools can provide further steps in building a risk assessment model in a Grid environment with good accuracy, according to the obtained empirical results.
Description: Thesis
URI: http://repository.sustech.edu/handle/123456789/13932
Appears in Collections:PhD theses : Computer Science and Information Technology

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