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Positive and Unlabeled Examples Hlep learning

机译:积极和未标记的例子HLEP学习

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In many learning problems, labeled examples are rare or expensive while numerous unlabeled and positive examples are available. However, most learnign algorithms only use labeled examples. Thus we address the prolem of learning with the help of positive and unlabeled data given a small number of labeled examples. We present both theoretical and empirical arguments showing that learning algorithms from statistics for monotone conjunctions in the presence of classification noise and give empirical evidence of our assumptions. We give theoretical results for the improvement of Statistical Query learning algorithms from positive and unlabeled data. Lastly, we apply these ideas to tree induction algorithms. We modify the code of C4.5 to get an algorithm which takes as input a set LAB of labeled examples, a set POS of positive examples and a set UNL of unlabeled data and which uses these three sets to construct the decision tree. We provide experimental results based on data taken from UCI repository which confirm the relevance of this approach.
机译:在许多学习问题中,标记的例子是罕见的或昂贵的,而许多未标记和阳性示例可用。但是,大多数学习算法仅使用标记的示例。因此,在给定少量标记的例子的情况下,我们在积极和未标记的数据的帮助下解决学习的蠕变。我们展示了理论和实证争论,表明在存在分类噪声存在下单调连词的统计学习算法,并给出我们假设的经验证据。我们为改善来自正和未标记数据的统计查询学习算法提供理论结果。最后,我们将这些想法应用于树诱导算法。我们修改C4.5的代码以获取一个算法,该算法作为输入的标记示例的设置实验室,一个设置的正示例的组POS和未标记数据的集合,并且使用这三个集合构造决策树。我们根据从UCI存储库获取的数据提供实验结果,该数据确认了这种方法的相关性。

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