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Online Regression with Partial Information: Generalization and Linear Projection

机译:具有部分信息的在线回归:泛化和线性投影

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We investigate an online regression problem in which the learner makes predictions sequentially while only the limited information on features is observable. In this paper, we propose a general setting for the limitation of the available information, where the observed information is determined by a function chosen from a given set of observation functions. Our problem setting is a generalization of the online sparse linear regression problem, which has been actively studied. For our general problem, we present an algorithm by combining multi-armed bandit algorithms and online learning methods. This algorithm admits a sublinear regret bound when the number of observation functions is constant. We also show that the dependency on the number of observation functions is inevitable unless additional assumptions are adopted. To mitigate this inefficiency, we focus on a special case of practical importance, in which the observed information is expressed through linear combinations of the original features. We propose efficient algorithms for this special case. Finally, we also demonstrate the efficiency of the proposed algorithms by simulation studies using both artificial and real data.
机译:我们调查了一个在线回归问题,其中学习者顺序地使预测顺序,而只有有关特征的有限信息是可观察的。在本文中,我们提出了一种普遍的设置,以限制可用信息,其中观察到的信息由从给定的一组观察功能中选择的功能确定。我们的问题设置是在线稀疏线性回归问题的概括,这已被积极研究。对于我们的一般问题,我们通过组合多武装强盗算法和在线学习方法来提出算法。当观察功能的数量是常数时,该算法承认ublinear遗憾绑定。我们还表明,除非采用额外假设,否则对观察功能的数量的依赖性是不可避免的。为了减轻这种低效率,我们专注于特殊的实际重要性,其中观察到的信息是通过原始特征的线性组合来表示的。我们为此特殊情况提出了高效的算法。最后,我们还通过使用人工和真实数据来展示所提出的算法的效率。

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