感知器模型的大偏差和主动学习的后果

Hugo Cui, Luca Saglietti, Lenka Zdeborov'a
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引用次数: 8

摘要

主动学习是机器学习的一个分支,它处理大量未标记数据但获取标签成本很高的问题。该学习算法有可能查询有限数量的样本以获得相应的标签,随后用于监督学习。在这项工作中,我们考虑从固定的有限样本池中选择要标记的样本子集的任务。我们假设样本池是一个随机矩阵,而基础真值标签是由单层教师随机神经网络生成的。我们使用复制方法来分析在原始池的一个子集上进行监督学习后获得的准确性的大偏差。这些大的偏差为任何主动学习算法提供了可实现的最佳性能边界。我们证明了通过简单的消息传递主动学习算法可以有效地达到最佳学习性能。我们还提供了与其他一些流行的主动学习策略的性能比较。
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Large deviations for the perceptron model and consequences for active learning
Active learning is a branch of machine learning that deals with problems where unlabeled data is abundant yet obtaining labels is expensive. The learning algorithm has the possibility of querying a limited number of samples to obtain the corresponding labels, subsequently used for supervised learning. In this work, we consider the task of choosing the subset of samples to be labeled from a fixed finite pool of samples. We assume the pool of samples to be a random matrix and the ground truth labels to be generated by a single-layer teacher random neural network. We employ replica methods to analyze the large deviations for the accuracy achieved after supervised learning on a subset of the original pool. These large deviations then provide optimal achievable performance boundaries for any active learning algorithm. We show that the optimal learning performance can be efficiently approached by simple message-passing active learning algorithms. We also provide a comparison with the performance of some other popular active learning strategies.
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