利用强化规划生成一种新的排序算法

S. White, T. Martinez, G. Rudolph
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引用次数: 1

摘要

强化规划(RP)是一种利用强化学习技术自动生成算法的新方法。本文描述了RP方法,并给出了使用RP生成一个广义的、原地的、迭代排序算法的实验结果。RP方法改进了先前使用遗传规划(GP)的结果。由此产生的算法是一种新颖的算法,比可比的排序例程更有效。RP在比GP更少的迭代和更少的资源中学习排序。结果为学习排序算法建立了有趣的经验界限:大小为4的列表足以学习广义排序算法。训练集只需要一个元素,学习迭代不到20万次。RP还被用于生成三种二进制加法算法:一个全加法器、一个二进制递增器和一个二进制加法器。
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Generating a novel sort algorithm using Reinforcement Programming
Reinforcement Programming (RP) is a new approach to automatically generating algorithms, that uses reinforcement learning techniques. This paper describes the RP approach and gives results of experiments using RP to generate a generalized, in-place, iterative sort algorithm. The RP approach improves on earlier results that that use genetic programming (GP). The resulting algorithm is a novel algorithm that is more efficient than comparable sorting routines. RP learns the sort in fewer iterations than GP and with fewer resources. Results establish interesting empirical bounds on learning the sort algorithm: A list of size 4 is sufficient to learn the generalized sort algorithm. The training set only requires one element and learning took less than 200,000 iterations. RP has also been used to generate three binary addition algorithms: a full adder, a binary incrementer, and a binary adder.
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