主动学习中基于差异的查询策略

Dávid Papp, G. Szücs, Zsolt Knoll
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引用次数: 2

摘要

本文在机器学习文献中提出了两种基于差分计算思想的主动学习方法。其中一种新方法是差分抽样查询策略。该策略计算一个新的差异列表,然后该列表中的元素能够影响适当的未标记实例的不确定性度量。通过这些度量的比值,定义了一个新的信息量度量,差分采样策略的目标是最小化这个比值。此外,期望差异变化查询策略使用了一个新的度量,即每一步的全局差异度量。该策略通过对不确定性值的差值进行期望,将期望模型变化和不确定性采样策略相结合。这种组合策略的目的是查询最有可能导致下一步全局差异变化最大的实例。在图像数据集上的实验结果表明,这两种基于差异的采样查询策略都优于文献中的竞争方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Difference based query strategies in active learning
In this paper two active learning methods are proposed in the machine learning literature, both of them based on difference calculation idea. One of the new methods is difference sampling query strategy. This strategy calculates a novel difference list and the elements of this list are then able to influence the uncertainty measure of the appropriate unlabelled instance. By taking the ratio of these measures a new informativeness metric is defined, and the aim of the difference sampling strategy is to minimize this ratio. Besides that, expected difference change query strategy was developed using a new metric, the global difference metric for each step. This strategy combines expected model change and uncertainty sampling strategies by taking the expectation of the difference of uncertainty values. The aim of this combined strategy is to query the instance that will most likely result the greatest change in global difference of the next step. The experimental results on image dataset show that both of the difference based sampling query strategies surpass the competitive methods in literature.
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