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2009 Filtering Spam E-Mail from Mixed Arabic and
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[39] Zhang L., Zhu J., and Yao T., An Evaluation of Statistical Spam Filtering Techniques, ACM Transactions on Asian Language Information Processing (TALIP) , vol. 3, no. 4, pp. 243-269, 2004. Alaa El-Halees is an assistant professor in computing and dean of faculty of Information Technology Department at Islamic University of Gaza, Palestine. He holds PhD degree in data mining in 2004, MSc degree in software development in 1998 from Leeds Metropolitan University, UK. He received his BSc degree in computer engineering in 1989 from University of Arizona, USA. His research activities are in the area of data mining, in particular text mining, machine learning and e-learning.