Work place: University of Sciences and Technology Mohamed Boudiaf USTO-MB, Faculty of Mathematics and Computer Science, Oran, 31000, Algeria
E-mail: aek.benyettou@univ-usto.dz
Website:
Research Interests: Neural Networks, Image Manipulation, Computer Networks, Image Processing, Speech Recognition, Speech Synthesis
Biography
Abdelkader Benyettou received his BSc of engineering in 1982 from the Institute of Telecommunications of Oran, and the MSc degree in 1986 from the University of Sciences and Technology of Oran, Algeria. In 1987, he joined the Computer
Sciences Research Center of Nancy, France, where he worked until 1991 on Arabic speech recognition by expert systems and received his PhD in electrical engineering in 1993 from the University of Sciences and Technology of Oran. Since 2003, he has been a professor at the University of Sciences and Technology of Oran. His interests are in the area of speech and image processing, Arabic speech recognition, neural networks, and machine learning. He has been the director of the Signal-Speech-Image— SIMPA Laboratory, Department of Computer Sciences, Faculty of Sciences, University of Sciences and Technology of Oran, since 2002.
By Seyyid Ahmed Medjahed Tamazouzt Ait Saadi Abdelkader Benyettou
DOI: https://doi.org/10.5815/ijisa.2015.05.01, Pub. Date: 8 Apr. 2015
The urinary system is the organ system responsible for the production, storage and elimination of urine. This system includes kidneys, bladder, ureters and urethra. It represents the major system which filters the blood and any imbalance of this organ can increases the rate of being infected with diseases. The aim of this paper is to evaluate the performance of different variants of Support Vector Machines and k-Nearest Neighbor with different distances and try to achieve a satisfactory rate of diagnosis (infected or non-infected urinary system). We consider both diseases that affect the urinary system: inflammation of urinary bladder and nephritis of renal pelvis origin. Our experimentation will be conducted on the database “Acute Inflammations Data Set” obtained from UCI Machine Learning Repository. We use the following measures to evaluate the results: classification accuracy rate, classification time, sensitivity, specificity, positive and negative predictive values.
[...] Read more.By Seyyid Ahmed Medjahed Mohammed Ouali Tamazouzt Ait Saadi Abdelkader Benyettou
DOI: https://doi.org/10.5815/ijitcs.2015.05.01, Pub. Date: 8 Apr. 2015
In this paper, feature selection and parameters determination in SVM are cast as an energy minimization procedure. The problem of feature selection and parameters determination is a very difficult problem where the number of feature is very large and where the features are highly correlated. We define the problem of feature selection and parameters determination in SVM as a combinatorial problem and we use a stochastic method that, theoretically, guarantees to reach the global optimum. Several public datasets are employed to evaluate the performance of our approach. Also, we propose to use the DNA Microarray Datasets which are characterized by the large number of features. To validate our approach, we apply it to image classification. The feature descriptors of the images were extracted by using the Pyramid Histogram of Oriented Gradients. The proposed approach was compared with twenty feature selection methods. Experimental results indicate that the classification accuracy rates of the proposed approach exceed those of other approaches.
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