The Mixed Resolution Modeling Aide (MRMAide) technology is an effort to semi-automate the implementation of Mixed Resolution Modeling (MRM). MRMAide suggests ways of resolving differences in fidelity and resolution across diverse modeling paradigms. The goal of MRMAide is to provide a technology that will allow developers to incorporate model components into scenarios other than those for which they were designed. Currently, MRM is implemented by hand. This is a tedious, error-prone, and non-portable process. MRMAide, in contrast, will automatically suggest to a developer where and how to connect different components and/or simulations. MRMAide has three phases of operation: pre-processing, data abstraction, and validation. During pre-processing the components to be linked together are evaluated in order to identify appropriate mapping points. During data abstraction those mapping points are linked via data abstraction algorithms. During validation developers receive feedback regarding their newly created models relative to existing baselined models. The current work presents an overview of the various problems encountered during MRM and the various technologies utilized by MRMAide to overcome those problems.
Clustering algorithms are useful whenever one needs to classify an excessive amount of information into a set of manageable and meaningful subsets. Using an analogy from vector analysis, a clustering algorithm can be said to divide up state space into discrete chunks such that each vector lies within one chunk. These vectors can best be thought of as sets of features. A canonical vector for each region of state space is chosen to represent all vectors which are located within that region. The following paper presents a survey of clustering algorithms. It pays particular attention to those algorithms that require the least amount of a priori knowledge about the domain being clustered. In the current work, an algorithm is compelling to the extent that it minimizes any assumptions about the distribution of vectors being classified.
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