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Flexible Latent Variable Models For Multi-task Learning

机译:用于多任务学习的灵活的潜在变量模型

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摘要

Given multiple prediction problems such as regression or classification, we are interested in a joint inference framework that can effectively share information between tasks to improve the prediction accuracy, especially when the number of training examples per problem is small. In this paper we propose a probabilistic framework which can support a set of latent variable models for different multi-task learning scenarios. We show that the framework is a generalization of standard learning methods for single prediction problems and it can effectively model the shared structure among different prediction tasks. Furthermore, we present efficient algorithms for the empirical Bayes method as well as point estimation. Our experiments on both simulated datasets and real world classification datasets show the effectiveness of the proposed models in two evaluation settings: a standard multi-task learning setting and a transfer learning setting.
机译:给定诸如回归或分类之类的多个预测问题,我们对可以在任务之间有效共享信息以提高预测准确性的联合推理框架感兴趣,特别是在每个问题的训练示例数量较少时。在本文中,我们提出了一个概率框架,该框架可以支持针对不同的多任务学习场景的一组潜在变量模型。我们表明,该框架是针对单个预测问题的标准学习方法的概括,可以有效地建模不同预测任务之间的共享结构。此外,我们提出了经验贝叶斯方法以及点估计的有效算法。我们在模拟数据集和现实世界分类数据集上的实验均显示了所提出模型在两个评估设置中的有效性:标准的多任务学习设置和转移学习设置。

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