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A New Approach to Compositional Adaptation Based on Optimizing the Global Distance Function and its application in an intelligent tutoring system

机译:基于优化全局距离功能及其在智能辅导系统中的应用的新方法

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In this paper, we propose a new approach to compositional adaptation based on the idea of constituting the final solution in a way that its global difference with a set of solutions belonging to the retrieved cases can get minimized. Within this respect, the normalized distance between the current problem and each retrieved case is taken into account, using a global distance function, which makes use of the normalized local distances between the candidate final solution and the retrieved cases' solutions as the variables, and some coefficients as its parameters. Here, an approach based on secondary CBR can be used to determine the optimal values of these coefficients based on their past experiences in characterization of the global distance function. An example is illustrated in the paper, which shows the utility of this approach for rearranging the necessary course-wares for students in the realm of intelligent tutoring systems.
机译:在本文中,我们提出了一种基于构成最终解决方案的构思适应的新方法,以使其全局差异与属于检索案例的一组解决方案可以最小化。在这方面,使用全局距离函数考虑当前问题和每个检索到的情况之间的归一化距离,这使得在候选最终解决方案和所检索的情况下的归一化本地距离作为变量,并且一些系数作为其参数。这里,基于次要CBR的方法可用于基于其过去的全局距离功能表征的过去的经验来确定这些系数的最佳值。本文说明了一个例子,其示出了这种方法对智能辅导系统领域的学生进行必要的课程的效用。

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