A Deep Study of Fuzzy Implications

نویسندگان

  • Yun Shi
  • Etienne E. Kerre
چکیده

Acknowledgements I sincerely thank my promotor Prof. Etienne Kerre for leading me to the world of research and for his strong support and guidance all the time. I appreciate always his suggestions and comments. I also truly thank my co-promotor Prof. Da Ruan for his constant help and new ideas. Next, I would like to thank Bart Van Gasse for his co-authorship. I am grateful to him for his cooperation and helpful suggestions. I thank all my colleagues and ex-colleagues in the department for a very pleasant woking environment. I am also very grateful to my parents for their love, and my aunt and her family for their great help during my study and life in Ghent.

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تاریخ انتشار 2009