Correct usage is discussed for concepts and terminology in various types of models, namely simulation, regression, and user's mental models. Therefore, a strict distinction is made between variables and parameters; also, different measurement scales are distinguished. Relationships with validation, risk analysis, sen sitivity analysis, optimization and control are investigated.
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