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Semi-supervised learning of hidden conditional random fields for time-series classification

机译:隐藏条件随机字段的半监督学习以进行时间序列分类

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摘要

Annotating class labels of a large number of time-series data is generally an expensive task. We propose novel semi-supervised learning algorithms that can improve the classification accuracy significantly by exploiting a relatively larger amount of unlabeled data in conjunction with a few labeled samples. Our algorithms utilize the unlabeled data as regularizes for opting for classifiers with stronger certainty on the unlabeled data. For the state-of-the-art conditional probabilistic sequence model called the hidden conditional random field, we first suggest the entropy minimization algorithm that was previously applied for static classification setups. More sophisticated margin-based approaches are then introduced, motivated by the semi-supervised support vector machines originally aimed for non-sequential data. We provide effective ways to incorporate and minimize the hat loss function for sequence data via probabilistic treatment in a principled manner. We show the performance improvement achieved by our methods on several semi-supervised time-series data classification scenarios.
机译:注释大量时间序列数据的类标签通常是一项昂贵的任务。我们提出了新颖的半监督学习算法,该算法可以通过利用相对大量的未标记数据以及一些标记样本来显着提高分类准确性。我们的算法利用未标记的数据作为正则化方法来选择对未标记数据具有更高确定性的分类器。对于称为隐式条件随机字段的最新条件概率序列模型,我们首先建议使用先前用于静态分类设置的熵最小化算法。随后引入了更复杂的基于余量的方法,该方法受最初针对非顺序数据的半监督支持向量机的启发。我们提供了有效的方式,以原则性方式通过概率处理并入并最小化了序列数据的帽子丢失功能。我们展示了通过我们的方法在几种半监督时间序列数据分类方案上实现的性能改进。

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