通过深度强化学习提高噪声二值搜索效率

Rui Ma, Yudong Tao, Mohamed M. Khodeiry, Karam A. Alawa, M. Shyu, Richard K. Lee
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引用次数: 0

摘要

噪声二值搜索(NBS)的目的是通过错误查询在排序数组中找到最接近目标值的元素。在错误率保持不变且所有查询的成本相同的理想NBS环境中,最大似然估计(MLE)过程已被证明是最优决策策略。然而,在一些非理想的NBS问题中,错误率和成本都取决于查询,在某些情况下,找到最优决策策略可能是棘手的。我们建议使用深度强化学习来近似NBS问题中的最优决策策略,其中使用智能代理与NBS环境进行交互。双深度q网络引导智能体在每一步采取行动,要么生成查询,要么停止搜索并预测目标值。通过在NBS环境中训练网络直到收敛,得到一个优化策略。通过在非理想的NBS环境、视野测试中评估我们提出的算法,我们表明我们提出的算法的性能大大超过了基线视野测试算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Noisy Binary Search Efficiency through Deep Reinforcement Learning
Noisy binary search (NBS) aims to find the closest element to a target value within a sorted array through erroneous queries. In an ideal NBS environment where the error rate remains constant, and the costs of all queries are the same, the maximum likelihood estimation (MLE) procedure has been proven to be the optimal decision strategy. However, in some non-ideal NBS problems, both the error rates and the costs are dependent on the queries, and in some cases, finding the optimal decision strategies can be intractable. We propose to use deep reinforcement learning to approximate the optimal decision strategy in the NBS problem, in which an intelligent agent is used to interact with the NBS environment. A dueling double deep Q-network guides the agent to take action at each step, either to generate a query or to stop the search and predict the target value. An optimized policy will be derived by training the network in the NBS environment until convergence. By evaluating our proposed algorithm on a non-ideal NBS environment, visual field test, we show that the performance of our proposed algorithm surpasses baseline visual field testing algorithms by a large margin.
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