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Motivated Metamodels
Paul K. Davis
J. H. Bigelow
其他書名
Synthesis of Cause-effect Reasoning and Statistical Metamodeling
出版
RAND
, 2003
主題
Computers / Computer Simulation
Education / Decision-Making & Problem Solving
Mathematics / Applied
Political Science / Political Process / General
Political Science / Political Freedom
Technology & Engineering / General
ISBN
0833033190
9780833033192
URL
http://books.google.com.hk/books?id=5_h24dHB9t8C&hl=&source=gbs_api
註釋
A metamodel is a relatively simple model that approximates the behavior of one that is more complex. A common and superficially attractive way to develop a metamodel is to generate large-model data and use off-the-shelf statistical methods without attempting to understand the model's internal workings. This monograph describes research illuminating why it can be important to improve the quality of such metamodels by using even modest phenomenological knowledge to help structure them. These "motivated metamodels" may convey an understandable, if only approximate, story-i.e., an explanation. Further, even if they provide little or no improvements to average goodness of fit, motivated metamodels can be much better for supporting decisions. For example, if the modeled system could fail if any of several critical components fail, then motivated models can build in the requisite nonlinearity, whereas naive metamodels are misleading. Naèive metamodeling may also be misleading about the relative "importance" of inputs, thereby skewing resource-allocation decisions. Motivated metamodels can greatly mitigate such problems. The work contributes to the emerging understanding of multiresolution, multiperspective modeling (MRMPM), as well as providing an interdisciplinary view of how to combine virtues of statistical methodology with virtues of more theory-based work.