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CBR for Modeling Complex Systems

机译:用于复杂系统建模的CBR

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摘要

This paper describes how CBR can be used to compare, reuse, and adapt inductive models that represent complex systems. Complex systems are not well understood and therefore require models for their manipulation and understanding. We propose an approach to address the challenges for using CBR in this context, which relate to finding similar inductive models (solutions) to represent similar complex systems (problems). The purpose is to improve the modeling task by considering the quality of different models to represent a system based on the similarity to a system that was successfully modeled. The revised and confirmed suitability of a model can become additional evidence of similarity between two complex systems, resulting in an increased understanding of a domain. This use of CBR supports tasks (e.g., diagnosis, prediction) that inductive or mathematical models alone cannot perform. We validate our approach by modeling software systems, and illustrate its potential significance for biological systems.
机译:本文介绍了如何使用CBR来比较,重用和适应代表复杂系统的归纳模型。复杂的系统尚未得到很好的理解,因此需要模型来对其进行操作和理解。我们提出了一种方法来解决在这种情况下使用CBR的挑战,该方法涉及寻找代表相似复杂系统(问题)的相似归纳模型(解决方案)。目的是通过考虑与成功建模的系统的相似性来考虑代表系统的不同模型的质量,从而改善建模任务。修改并确认的模型适用性可能成为两个复杂系统之间相似性的额外证据,从而导致对域的更多了解。 CBR的这种使用支持​​仅归纳或数学模型无法完成的任务(例如,诊断,预测)。我们通过对软件系统进行建模来验证我们的方法,并说明其对生物系统的潜在意义。

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