Paulo Henrique Macêdo de Araújo , Manoel Campêlo , Ricardo C. Corrêa , Martine Labbé
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引用次数: 9
摘要
在近十年来整数优化研究取得重大进展的推动下,Bertsimas和Shioda针对多维空间分类的经典统计问题,开发了一种整数优化方法,并提供了一个名为CRIO (classification and Regression via integer optimization)的软件包。根据这些思想,我们定义了一个新的分类问题,探索其组合方面。这个问题是在图形上定义的,使用测地线凸性来类比多维空间中的欧几里得凸性。我们用测地线分类(GC)问题来表示这类问题。我们提出了GC问题的整数规划公式,并提出了分支切断算法来解决该问题。最后,通过计算实验验证了该方法的组合优化效率和分类精度。
Motivated by the significant advances in integer optimization in the past decade, Bertsimas and Shioda developed an integer optimization method to the classical statistical problem of classification in a multidimensional space, delivering a software package called CRIO (Classification and Regression via Integer Optimization). Following those ideas, we define a new classification problem, exploring its combinatorial aspects. That problem is defined on graphs using the geodesic convexity as an analogy of the Euclidean convexity in the multidimensional space. We denote such a problem by Geodesic Classification (GC) problem. We propose an integer programming formulation for the GC problem along with a branch-and-cut algorithm to solve it. Finally, we show computational experiments in order to evaluate the combinatorial optimization efficiency and classification accuracy of the proposed approach.
期刊介绍:
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