Some proposals for combining ensemble classifiers

نویسنده

  • Nima Hatami
چکیده

Acknowledgements It is a great pleasure to thank those people whose company I enjoyed in my lovely PhD journey. It is difficult to overstate my gratitude to my friend and Ph.D. supervisor, Prof. Giuliano Armano. During these three years, he gave me an opportunity to learn not only how to be a thinker but most importantly be a life lover. Working with him was an honor which remains with me for ever. Living away from family and hometown for the first time is a nice challenge. But you will learn to find new mates. Filippo Ledda was one who generously accepted me as a friend and helped me like un amico. My friends and colleagues in the IASC group, in particular Rattani who were there any time I needed. "Grazie a tutti voi!" I would like to take this opportunity to thank Prof. Ludmila Kuncheva and Prof. Fabio Roli for their valuable time and trust on me; Prof. for their nice reviews and comments on my thesis. This thesis is partially supported by Hoplo Srl.; in particular I would like to express my appreciation to Ferdinando Licheri and Roberto Murgia. Lastly, and most importantly, I am indebted to my parents and grandma, Behnaz, Ali and Nazmaman. They supported me, taught me, trusted me, inspired me and loved me. Nina and Reza who are the hope and the reason. And to Camelia who will remain for ever. To them I dedicate this thesis. "Yashasin!!!"

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تاریخ انتشار 2012