Emergency resources demand prediction using case-based reasoning

Abstract The demand prediction on emergency resources is the premise and basis of optimal allocation of emergency resources. Nowadays, there are only few researches on this aspect in China and abroad. For this reason, the paper aims at the characteristics of emergency resource demand prediction and presents a method for emergency resource demand prediction using case-based reasoning (CBR), which is also a method based on risk analysis. This prediction method cannot only provide a basis for emergency resource reserve and allocation in future, but also provide a method and model support for the emergency resources allocation decision-making system to be constructed in future.

[1]  Derek H. Sleeman,et al.  REFINER: A Case-Based Differential Diagnosis Aide for Knowledge Acquisition and Knowledge Refinement , 1988, EWSL.

[2]  David H. Helman,et al.  Analogical Reasoning: Perspectives of Artificial Intelligence, Cognitive Science, and Philosophy , 2009 .

[3]  David Robertson,et al.  Case Based Reasoning: Prospects for Applications (Digest No. 1994/057), IEE Colloquium on , 1994 .

[4]  Ian Watson,et al.  The client‐centred approach: expert system development , 1992 .

[5]  David Robertson,et al.  A case-based reasoning system for regulatory information , 1994 .

[6]  Ian Watson,et al.  Developing case-based reasoning systems: a case study in diagnosing building defects , 1994 .

[7]  Rivka Oxman,et al.  PRECEDENTS: memory structure in design case libraries , 1993 .

[8]  Janet L. Kolodner,et al.  Maintaining Organization in a Dynamic Long-Term Memory , 1983, Cogn. Sci..

[9]  Ian Watson,et al.  The client‐centred approach: expert system maintenance , 1992 .

[10]  Bruce Porter,et al.  Protos: a unified approach to concept representation, classification, and learning , 1988 .

[11]  Janet L. Kolodner,et al.  Reconstructive Memory: A Computer Model , 1983, Cogn. Sci..

[12]  Roger C. Schank,et al.  SCRIPTS, PLANS, GOALS, AND UNDERSTANDING , 1988 .

[13]  C SchankRoger,et al.  Dynamic Memory: A Theory of Reminding and Learning in Computers and People , 1983 .

[14]  C. J. Moore,et al.  Case based reasoning for decision support in engineering design , 1994 .

[15]  Stefan Wess,et al.  Similarity, Uncertainty and Case-Based Reasoning in Patdex , 1991, Automated Reasoning: Essays in Honor of Woody Bledsoe.

[16]  John P. McDermott,et al.  R1 Revisited: Four Years in the Trenches , 1984, AI Mag..

[17]  Mark T. Keane Where's the Beef? The Absence of Pragmatic Factors in Pragmatic Theories of Analogy , 1988, ECAI.

[18]  Hiroaki Kitano,et al.  Challenges of massive parallelism , 1993, IJCAI 1993.

[19]  Agnar Aamodt,et al.  A knowledge-intensive, integrated approach to problem solving and sustained learning , 1992 .

[20]  Roger C. Schank,et al.  Creativity and Learning in a Case-Based Explainer , 1989, Artif. Intell..

[21]  Janet L. Kolodner,et al.  Case-Based Reasoning , 1989, IJCAI 1989.

[22]  Kevin D. Ashley Arguing by Analogy in Law: A Case-Based Model , 1988 .