@article{MAKHILLIJSSCEA201912428793, title = {GA Algorithm Optimizing SVM Multi-Class Kernel Parameters Applied in Arabic Speech Recognition}, journal = {International Journal of System Signal Control and Engineering Application}, volume = {12}, number = {4}, pages = {85-92}, year = {2019}, issn = {1997-5422}, doi = {ijssceapp.2019.85.92}, url = {https://makhillpublications.co/view-article.php?issn=1997-5422&doi=ijssceapp.2019.85.92}, author = {Aymen,Adnane and}, keywords = {Automatic speech recognition,supports vector machines,mel frequency cepstrum coefficients,genetic algorithm}, abstract = {In order to improve the accuracy of Arabic speech recognition, this study proposes a novel recognition technique (ASR) based on GA optimized SVM multi-class algorithm. The Kernel parameters of support vector machine are very important problems that have a great influence on the performance of recognition rate. Thus, GA is adapted to optimize the penalty parameter C and the kernel parameter γ for SVM multi-class which leads to improved classification performance. Finally, the proposed model is tested experimentally using eleven Arabic words mono-locutor. Each word of them is improved by Mel Frequency Cepstral Coefficients (MFCCs) and used as an input to the SVM multi-class classifier. The proposed method enhances the recognition rate which is performed to 100% within short duration training time.} }