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Non-Stationary Delayed Bandits with Intermediate Observations

机译:具有中间观察的非静止延迟匪徒

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Online recommender systems often face long delays in receiving feedback, especially when optimizing for some long-term metrics. While mitigating the effects of delays in learning is well-understood in stationary environments, the problem becomes much more challenging when the environment changes. In fact, if the timescale of the change is comparable to the delay, it is impossible to learn about the environment, since the available observations are already obsolete. However, the arising issues can be addressed if intermediate signals are available without delay, such that given those signals, the long-term behavior of the system is stationary. To model this situation, we introduce the problem of stochastic, non-stationary, delayed bandits with intermediate observations. We develop a computationally efficient algorithm based on UCRL2, and prove sublinear regret guarantees for its performance. Experimental results demonstrate that our method is able to learn in non-stationary delayed environments where existing methods fail.
机译:在线推荐系统通常面临长时间的接收反馈,特别是在优化一些长期度量标准时。虽然在静止环境中缓解了学习延迟的影响,但在环境变化时,问题变得更具挑战性。事实上,如果变化的时间尺度与延迟相当,因此无法了解环境,因为可用的观察已经过时。然而,如果中间信号没有延迟可用,可以解决出现的问题,例如给出那些信号,系统的长期行为是静止的。为了模拟这种情况,我们介绍了随着中间观测的随机,非静止,延迟匪徒的问题。我们开发了基于UCRL2的计算高效算法,并证明了Sublinear遗憾保证其性能。实验结果表明,我们的方法能够在现有方法失败的非静止延迟环境中学习。

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