Online model selection by learning how compositional kernels evolve.

Eura Shin, Predrag Klasnja, Susan A Murphy, Finale Doshi-Velez
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Abstract

Motivated by the need for efficient, personalized learning in mobile health, we investigate the problem of online compositional kernel selection for multi-task Gaussian Process regression. Existing composition selection methods do not satisfy our strict criteria in health; selection must occur quickly, and the selected kernels must maintain the appropriate level of complexity, sparsity, and stability as data arrives online. We introduce the Kernel Evolution Model (KEM), a generative process on how to evolve kernel compositions in a way that manages the bias-variance trade-off as we observe more data about a user. Using pilot data, we learn a set of kernel evolutions that can be used to quickly select kernels for new test users. KEM reliably selects high-performing kernels for a range of synthetic and real data sets, including two health data sets.

通过学习组成核的演变过程进行在线模型选择。
受移动医疗领域高效、个性化学习需求的驱动,我们研究了多任务高斯过程回归的在线组成核选择问题。现有的组合选择方法无法满足我们在健康领域的严格标准;选择必须快速进行,并且所选内核必须在数据在线到达时保持适当的复杂性、稀疏性和稳定性水平。我们引入了内核演化模型(KEM),它是一种生成过程,可以在观察到更多用户数据时,以管理偏差-方差权衡的方式演化内核组合。利用试验数据,我们学习了一组内核演化,可用于为新的测试用户快速选择内核。KEM 可以为一系列合成数据集和真实数据集(包括两个健康数据集)可靠地选择高性能内核。
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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