We consider the sequential decision optimization on the periodic environment, that occurs in a wide variety of real-world applications when the data involves seasonality, such as the daily demand of drivers in ride-sharing and dynamic traffic patterns in transportation. In this work, we focus on learning the stochastic periodic world by leveraging this seasonal law. To deal with the general action space, we use the bandit based on Gaussian process (GP) as the base model due to its flexibility and generality, and propose the Periodic-GP method with a temporal periodic kernel based on the upper confidence bound. Theoretically, we provide a new regret bound of the proposed method, by explicitly characterizing the periodic kernel in the periodic stationary model. Empirically, the proposed algorithm significantly outperforms the existing methods in both synthetic data experiments and a real data application on Madrid traffic pollution.
翻译:我们认为,在数据涉及季节性时,在一系列现实世界应用中出现的周期环境的顺序决策优化,如驾驶员对搭车的日常需求和交通的动态交通模式等;在这项工作中,我们侧重于利用季节法来学习周期性世界;在处理一般行动空间时,我们使用基于高山过程(GP)的土匪作为基础模型,因为其灵活性和一般性,并提议采用定期GP方法,以基于上层信心的定时周期内核为定时周期内核。理论上,我们为拟议方法提供了新的遗憾,明确了定期固定模型中周期内核的特性。 典型地说,拟议的算法大大超越了合成数据实验和马德里交通污染实际数据应用中的现有方法。