Advances in Information and Computer Security ; 1st International Workshop on Security, IWSEC 2006, Kyoto, Japan, October 23-24, 2006, Proceedings

Advances in Information and Computer Security ; 1st International Workshop on Security, IWSEC 2006, Kyoto, Japan, October 23-24, 2006, Proceedings


this year in Kyoto and to publish the proceedings as a volume of the Lecture Notes in Computer Science series. The workshop was our ?rst trial in that two major academic society groups on security in Japan, viz. ISEC and CSEC, jointly organized it; ISEC is a te- nical group on information security of the Institute of Electronics, Information and Communication Engineers (IEICE), and CSEC is a special interest group on computer security of the Information Processing Society of Japan (IPSJ). It was Ryoichi Sasaki, the former head of CSEC, who proposed holding such an international workshop in Japan for the ?rst time, two years ago. The two groups supported his idea and started organizing the workshop. CSEC has its annual domestic symposium, the Computer Security Symposium (CSS), in - tober for three days, and we decided to organize the workshop prior to CSS this year.



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