A Set-Theoretical Foundation of Qualitative Reasoning and its Application to the Modeling of Economics and Business Management Problems

被引:0
作者
Aimo Hinkkanen
Karl R. Lang
Andrew B. Whinston
机构
[1] University of Illinois,Department of Mathematics
[2] Baruch College City University of New York (CUNY),Department of Computer Information Systems, Zicklin School of Business
[3] The University of Texas at Austin,Department of Management Science and Information Systems, McCombs School of Business
来源
Information Systems Frontiers | 2003年 / 5卷
关键词
qualitative reasoning; qualitative modeling; incomplete information; simulation; epistemology;
D O I
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中图分类号
学科分类号
摘要
The qualitative reasoning (QR) field has developed various representation and reasoning methods for the modeling with incomplete information or incomplete knowledge. While most uncertain reasoning approaches describe uncertain or imprecisely known information as probability distribution functions, qualitative reasoning bases its model specification on qualitative descriptions that are derived from known qualitative system properties. Problems are formulated as sets of qualitative constraints and their analysis is performed by applying a qualitative calculus. This paper presents a general, unifying theory of the various existing qualitative reasoning systems that includes, as special cases, reasoning methods that use representations of qualitative differential equations and qualitative difference equations. Based on set theory, our QR framework describes fundamental concepts such as qualitative models and solutions, and relates them to the quantitative analogues of its underlying quantitative reference system. Our motivation arises from the types of models found in the management sciences. Thus we emphasize the significance of discrete, dynamic models and optimization models in the business management and economics fields, both of which have received less attention in current QR research. Finally, we extend our theoretical framework to include an approach to qualitative optimization.
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页码:379 / 399
页数:20
相关论文
共 41 条
[1]  
Alpar P(1995)Market share analysis and prognosis using qualitative reasoning Decision Support Systems 15 133-146
[2]  
Dilger W.(1997)Enterprise decision support using intranet technology Decision Support Systems 20 99-134
[3]  
Ba S(1995)Controlling the complexity of investment decisions using qualitative reasoning techniques Decision Support Systems 15 115-132
[4]  
Lang KR(1998)Qualitative and quantitative simulation: Bridging the gap Artificial Intelligence 95 215-255
[5]  
Whinston AB(1998)Qualitative models in interactive learning environment Interactive Learning Environments 5 1-18
[6]  
Benaroch M(1984)A qualitative physics based on confluences Artificial Intelligence 24 7-83
[7]  
Dhar V.(1992)Mathematical problems arising in qualitative simulation of a differential equation Artificial Intelligence 55 61-86
[8]  
Berleant D(1990)Qualitative reasoning in economics Journal of Economic Dynamics and Control 14 465-490
[9]  
Kuipers B.(1984)Qualitative process theory Artificial Intelligence 24 85-168
[10]  
Bredeweg B(1997)Using qualitative physics to create articulate educational software IEEE Expert 12 32-41