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Risk function estimation for subproblems in a hierarchical classifier

机译:分层分类器中子问题的风险函数估计

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One of the solutions to the classification problem are the ensemble methods, in particular a hierarchical approach. This method bases on dynamically splitting the original problem during training into smaller subproblems which should be easier to train. Then the answers are combined together to obtain the final classification. The main problem here is how to divide (cluster) the original problem to obtain best possible accuracy expressed in terms of risk function value. The exact value for a given clustering is known only after the whole training process. In this paper we propose the risk estimation method based on the analysis of the root classifier. This makes it possible to evaluate the risks for all subproblems without any training of children classifiers. Together with some earlier theoretical results on hierarchical approach, we show how to use the proposed method to evaluate the risk for the whole ensemble. A variant, which uses a genetic algorithm (GA), is proposed. We compare this method with an earlier one, based on the Bayes law. We show that the subproblem risk evaluation is highly correlated with the true risk, and that the Bayes/GA approaches give hierarchical classifiers which are superior to single ones. Our method works for any classifier which returns a class probability vector for a given example.
机译:分类问题的解决方案之一是集成方法,特别是分层方法。该方法基于在训练过程中将原始问题动态分解为较小的子问题,这些子问题应该更容易训练。然后将答案组合在一起以获得最终分类。此处的主要问题是如何对原始问题进行划分(聚类)以获得以风险函数值表示的最佳可能准确性。给定聚类的确切值只有在整个训练过程之后才能知道。本文提出了一种基于根分类器分析的风险估计方法。这使得无需对儿童分类器进行任何培训就可以评估所有子问题的风险。连同一些有关分层方法的早期理论结果,我们展示了如何使用所提出的方法来评估整个集成的风险。提出了一种使用遗传算法(GA)的变体。我们将这种方法与基于贝叶斯定律的早期方法进行比较。我们表明,子问题风险评估与真实风险高度相关,并且贝叶斯/遗传算法给出的分层分类器优于单个分类器。对于给定示例返回类概率向量的任何分类器,我们的方法均适用。

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