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Incremental predictive clustering trees for online semi-supervised multi-target regression

机译:在线半监督多目标回归的增量预测聚类树木

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摘要

In many application settings, labeling data examples is a costly endeavor, while unlabeled examples are abundant and cheap to produce. Labeling examples can be particularly problematic in an online setting, where there can be arbitrarily many examples that arrive at high frequencies. It is also problematic when we need to predict complex values (e.g., multiple real values), a task that has started receiving considerable attention, but mostly in the batch setting. In this paper, we propose a method for online semi-supervised multi-target regression. It is based on incremental trees for multi-target regression and the predictive clustering framework. Furthermore, it utilizes unlabeled examples to improve its predictive performance as compared to using just the labeled examples. We compare the proposed iSOUP-PCT method with supervised tree methods, which do not use unlabeled examples, and to an oracle method, which uses unlabeled examples as though they were labeled. Additionally, we compare the proposed method to the available state-of-the-art methods. The method achieves good predictive performance on account of increased consumption of computational resources as compared to its supervised variant. The proposed method also beats the state-of-the-art in the case of very few labeled examples in terms of performance, while achieving comparable performance when the labeled examples are more common.
机译:在许多应用程序设置中,标记数据示例是一个昂贵的努力,而未标记的例子是丰富和廉价的生产。标记示例在在线设置中可以特别有问题,其中可以任意多个示例到达高频。当我们需要预测复杂的值(例如,多个实际值)时,它也是有问题的,这是一项开始接受相当大的关注的任务,但主要在批处理设置中。在本文中,我们提出了一种用于在线半监督的多目标回归的方法。它基于用于多目标回归的增量树和预测集群框架。此外,与使用标记的例子相比,它利用未标记的例子来改善其预测性能。我们将建议的ISOUP-PCT方法与监督树方法进行比较,该方法不使用未标记的示例以及Oracle方法,该方法使用未标记的示例,好像它们被标记为一样。此外,我们将所提出的方法与可用的最先进的方法进行比较。根据其监督变量相比,该方法根据计算资源的消耗增加,实现了良好的预测性能。在表现方面,该方法也在非常少的标记示例的情况下击败了最先进的例子,同时在标记的实施例更常见时实现了可比性。

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