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Online Semi-supervised Multi-task Distance Metric Learning

机译:在线半监督多任务距离度量学习

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Given several related tasks, multi-task learning can improve the performance of each task through sharing parameters or feature representations. In this paper, we apply multi-task learning to a particular case of distance metric learning, in which we have a small amount of labeled data. Consider the effectiveness of semi-supervised learning handling few labeled machine learning problems, we integrate semi-supervised learning with multi-task learning and distance metric learning. One of the defect of multi-task learning is its low training efficiency, as we need all the training examples from all tasks to train a model. We propose an online learning algorithm to overcome this drawback of multi-task learning. Experiments are conducted on one landmark multi-task learning dataset to demonstrate the efficiency and effectiveness of our online semi-supervised multi-task learning algorithm.
机译:考虑到多个相关任务,多任务学习可以通过共享参数或特征表示来提高每个任务的性能。在本文中,我们将多任务学习应用于特定度量学习的特定情况,其中我们具有少量标记的数据。考虑半监督学习处理少数标签机器学习问题的有效性,我们将半监督学习与多任务学习和距离度量学习集成。多任务学习的缺陷之一是其培训效率低,因为我们需要来自所有任务的所有培训示例来训练模型。我们提出了一种在线学习算法来克服多任务学习的缺点。实验在一个地标多任务学习数据集上进行,以展示我们在线半监督多任务学习算法的效率和有效性。

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