动态学习与决策的离散时间模型的解析解

Hao Zhang
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引用次数: 3

摘要

关于动态学习和决策的问题很难用分析的方法来解决。我们研究了具有恒定未知状态的无限视界离散时间模型,该模型可以取两个可能的值。作为一种特殊的部分可观察马尔可夫决策过程(POMDP),该模型统一了序列假设检验、动态定价与需求学习、多武装强盗等几种类型的“学习与做”问题。基于连续值向量有效边界的逆向构造,我们采用了一种相对较新的解框架。该框架同时容纳不同的最优性标准。在无限视界环境下,借助于一组信号质量指标,可以通过一组差分方程将有效边界上的极值点联系起来并解析求解。该解具有与连续时间模型相似的结构性质,并为通过离散时间模型进行新发现提供了有用的工具。论文被Baris Ata、随机模型和仿真所接受。
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Analytical Solution to A Discrete-Time Model for Dynamic Learning and Decision-Making
Problems concerning dynamic learning and decision making are difficult to solve analytically. We study an infinite-horizon discrete-time model with a constant unknown state that may take two possible values. As a special partially observable Markov decision process (POMDP), this model unifies several types of learning-and-doing problems such as sequential hypothesis testing, dynamic pricing with demand learning, and multiarmed bandits. We adopt a relatively new solution framework from the POMDP literature based on the backward construction of the efficient frontier(s) of continuation-value vectors. This framework accommodates different optimality criteria simultaneously. In the infinite-horizon setting, with the aid of a set of signal quality indices, the extreme points on the efficient frontier can be linked through a set of difference equations and solved analytically. The solution carries structural properties analogous to those obtained under continuous-time models, and it provides a useful tool for making new discoveries through discrete-time models. This paper was accepted by Baris Ata, stochastic models and simulation.
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