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Cooperative Agents for Discovering Pareto-Optimal Classifiers Under Dynamic Costs

机译:动态成本下发现帕累托最优分类器的合作代理

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In contrast to passive classifiers that use all available input feature values to assign class labels to instances, active classifiers determine the features on which to base the classification. Motivated by the tradeoff between the cost of classification errors and the cost of obtaining additional information, active classifiers are widely used for diagnostic applications in domains such as in medicine, engineering, finance, and natural language processing. This paper extends the extant literature on active classifiers to applications where cost of obtaining additional information may vary over instances to be classified and over time. We show that this entails training a set of classifiers that grows exponentially with the number of features and propose an efficient way to discover models in the cost-accuracy Pareto optimal frontier. Our method is based on a set of cooperative agents. The incremental contributions of agents to a coalition is used as a surrogate measure to guide a heuristic search for models. Empirical results based on controlled experiments indicate that our approach can identify Pareto-optimal active classifiers under dynamic costs even in domains that involve a large number of input features.
机译:与使用所有可用输入要素值将类别标签分配给实例的被动分类器相反,主动分类器确定了基于分类的要素。由于在分类错误的成本和获得更多信息的成本之间进行折衷,因此主动分类器被广泛用于医学,工程,金融和自然语言处理等领域的诊断应用。本文将有关主动分类器的现有文献扩展到应用中,在这些应用中,获得更多信息的成本可能随要分类的实例和时间而变化。我们表明,这需要训练一组随特征数量呈指数增长的分类器,并提出一种有效的方法来发现成本准确性帕累托最优边界中的模型。我们的方法基于一组合作代理。代理对联盟的增量贡献被用作替代方法,以指导启发式搜索模型。基于受控实验的经验结果表明,即使在涉及大量输入特征的领域中,我们的方法也可以在动态成本下识别帕累托最优主动分类器。

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