Identifying Fault Prone Modules: An Empirical Study in Telecommunication System
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چکیده
Message from the Program Co-Chair Conference Committee Program Committee Supported by Patroned by Continuous Engineering of Information and Communication Infrastructures Architecture and Functions of a Commercial Software Reengineering Workbench p. 2 Control Flow Normalization for COBOL/CICS Legacy System p. 11 A Generic Approach for Data Reverse Engineering taking into Account Application Domain Knowledge p. 21
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تاریخ انتشار 1998