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User-Based Active Learning

机译:基于用户的主动学习

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摘要

Active learning has been proven a reliable strategy to reduce manual efforts in training data labeling. Such strategies incorporate the user as oracle: the classifier selects the most appropriate example and the user provides the label. While this approach is tailored towards the classifier, more intelligent input from the user may be beneficial. For instance, given only one example at a time users are hardly able to determine whether this example is an outlier or not. In this paper we propose user-based visually-supported active learning strategies that allow the user to do both, selecting and labeling examples given a trained classifier. While labeling is straightforward, selection takes place using a interactive visualization of the classifier's a-posteriori output probabilities. By simulating different user selection strategies we show, that user-based active learning outperforms uncertainty based sampling methods and yields a more robust approach on different data sets. The obtained results point towards the potential of combining active learning strategies with results from the field of information visualization.
机译:主动学习已被证明是减少训练数据标签中的人工工作的可靠策略。这样的策略将用户合并为oracle:分类器选择最合适的示例,然后用户提供标签。尽管此方法是针对分类器量身定制的,但来自用户的更多智能输入可能会有所帮助。例如,一次仅给出一个示例,用户几乎无法确定该示例是否是异常值。在本文中,我们提出了基于用户的视觉支持的主动学习策略,该策略允许用户同时执行,选择和标记经过训练的分类器的示例。虽然标记很简单,但是使用分类器的后验输出概率的交互式可视化进行选择。通过模拟不同的用户选择策略,我们表明,基于用户的主动学习优于基于不确定性的采样方法,并且在不同数据集上产生了更强大的方法。获得的结果表明将主动学习策略与信息可视化领域的结果相结合的潜力。

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