SHAMASH a Knowledge-Based System for Business Process Reengineering

作者: David Camacho , Daniel Borrajo , Ricardo Aler , Jose Ignacio Giraldez , Almudena Sierra

DOI: 10.1007/978-1-4471-0465-0_17

关键词:

摘要: In this paper we present an initial overview of SHAMASH, a process modeling tool for Business Process Reengineering. The main features that differentiate it from most current related tools are its ability to define and use organisation standards, make automatic model simulation optimisation them. SHAMASH is knowledge based system, include discussion on how acquisition should be possible, furthemore introduce high level description architecture other importants modules the system.

参考文章(10)
Daniel S. Weld, J. Scott Penberthy, UCPOP: a sound, complete, partial order planner for ADL principles of knowledge representation and reasoning. pp. 103- 114 ,(1992)
James Champy, Michael Hammer, Reengineering the Corporation ,(1993)
Daniel Borrajo, Ricardo Aler, Pedro Isasi, Genetic Programming and Deductive-Inductive Learning: A Multi-Strategy Approach international conference on machine learning. pp. 10- 18 ,(1998)
MANUELA VELOSO, JAIME CARBONELL, ALICIA PÉREZ, DANIEL BORRAJO, EUGENE FINK, JIM BLYTHE, Integrating planning and learning: the PRODIGY architecture Journal of Experimental and Theoretical Artificial Intelligence. ,vol. 7, pp. 81- 120 ,(1995) , 10.1080/09528139508953801
Ken Currie, Austin Tate, O-Plan: The open planning architecture Artificial Intelligence. ,vol. 52, pp. 49- 86 ,(1991) , 10.1016/0004-3702(91)90024-E
Mike Uschold, Michael Gruninger, Ontologies: principles, methods and applications Knowledge Engineering Review. ,vol. 11, pp. 93- 136 ,(1996) , 10.1017/S0269888900007797
B. W. Boehm, A spiral model of software development and enhancement IEEE Computer. ,vol. 21, pp. 61- 72 ,(1988) , 10.1109/2.59
Grady Booch, James Rumbaugh, Ivar Jacobson, The Unified Modeling Language User Guide ,(1999)
Richard E. Fikes, Nils J. Nilsson, Strips: A new approach to the application of theorem proving to problem solving Artificial Intelligence. ,vol. 2, pp. 189- 208 ,(1971) , 10.1016/0004-3702(71)90010-5