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Partial Example Acquisition in Cost-Sensitive Learning

机译:成本敏感型学习中的部分示例获取

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摘要

It is often expensive to acquire data in real-world data mining applications. Most previous data mining and machine learning research, however, assumes that a fixed set of training examples is given. In this paper, we propose an online cost-sensitive framework that allows a learner to dynamically acquire examples as it learns, and to decide the ideal number of examples needed to minimize the total cost. We also propose a new strategy for Partial Example Acquisition (PAS), in which the learner can acquire examples with a subset of attribute values to reduce the data acquisition cost. Experiments on UCI datasets show that the new PAS strategy is an effective method in reducing the total cost for data acquisition.
机译:在现实世界的数据挖掘应用程序中获取数据通常很昂贵。但是,大多数以前的数据挖掘和机器学习研究都假定给出了一组固定的训练示例。在本文中,我们提出了一个在线成本敏感框架,该框架允许学习者在学习过程中动态获取示例,并确定使总成本最小化所需的理想示例数量。我们还提出了一种用于部分实例获取(PAS)的新策略,在该策略中,学习者可以获取带有属性值子集的实例,以降低数据获取成本。在UCI数据集上进行的实验表明,新的PAS策略是降低数据采集总成本的有效方法。

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