Efficient Online Multi-Task Learning via Adaptive Kernel Selection

Peng Yang, P. Li
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引用次数: 1

Abstract

Conventional multi-task model restricts the task structure to be linearly related, which may not be suitable when data is linearly nonseparable. To remedy this issue, we propose a kernel algorithm for online multi-task classification, as the large approximation space provided by reproducing kernel Hilbert spaces often contains an accurate function. Specifically, it maintains a local-global Gaussian distribution over each task model that guides the direction and scale of parameter updates. Nonetheless, optimizing over this space is computationally expensive. Moreover, most multi-task learning methods require accessing to the entire training instances, which is luxury unavailable in the large-scale streaming learning scenario. To overcome this issue, we propose a randomized kernel sampling technique across multiple tasks. Instead of requiring all inputs’ labels, the proposed algorithm determines whether to query a label or not via considering the confidence from the related tasks over label prediction. Theoretically, the algorithm trained on actively sampled labels can achieve a comparable result with one learned on all labels. Empirically, the proposed algorithm is able to achieve promising learning efficacy, while reducing the computational complexity and labeling cost simultaneously.
基于自适应核选择的高效在线多任务学习
传统的多任务模型将任务结构限制为线性相关,这可能不适用于数据线性不可分的情况。为了解决这个问题,我们提出了一个在线多任务分类的核算法,因为通过复制核希尔伯特空间提供的大近似空间通常包含一个精确的函数。具体来说,它在每个任务模型上维护一个局部全局高斯分布,指导参数更新的方向和规模。尽管如此,在这个空间上进行优化在计算上是昂贵的。此外,大多数多任务学习方法需要访问整个训练实例,这在大规模流学习场景中是不可用的。为了克服这个问题,我们提出了一种跨多个任务的随机核采样技术。该算法不需要所有输入的标签,而是通过考虑相关任务对标签预测的置信度来决定是否查询标签。从理论上讲,在主动采样标签上训练的算法可以获得与在所有标签上学习的算法相当的结果。经验表明,该算法在降低计算复杂度和标注成本的同时,取得了良好的学习效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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