利用
计算机科学
强化学习
代表(政治)
人工智能
国家(计算机科学)
领域(数学分析)
样品(材料)
傅里叶变换
机器学习
钥匙(锁)
系列(地层学)
信号(编程语言)
算法
数据挖掘
模式识别(心理学)
数学
数学分析
古生物学
化学
计算机安全
色谱法
政治
政治学
法学
生物
程序设计语言
作者
Mingxuan Ye,Yufei Kuang,Jie Wang,Rui Yang,Wengang Zhou,Houqiang Li,Feng Wu
标识
DOI:10.48550/arxiv.2310.15888
摘要
While deep reinforcement learning (RL) has been demonstrated effective in solving complex control tasks, sample efficiency remains a key challenge due to the large amounts of data required for remarkable performance. Existing research explores the application of representation learning for data-efficient RL, e.g., learning predictive representations by predicting long-term future states. However, many existing methods do not fully exploit the structural information inherent in sequential state signals, which can potentially improve the quality of long-term decision-making but is difficult to discern in the time domain. To tackle this problem, we propose State Sequences Prediction via Fourier Transform (SPF), a novel method that exploits the frequency domain of state sequences to extract the underlying patterns in time series data for learning expressive representations efficiently. Specifically, we theoretically analyze the existence of structural information in state sequences, which is closely related to policy performance and signal regularity, and then propose to predict the Fourier transform of infinite-step future state sequences to extract such information. One of the appealing features of SPF is that it is simple to implement while not requiring storage of infinite-step future states as prediction targets. Experiments demonstrate that the proposed method outperforms several state-of-the-art algorithms in terms of both sample efficiency and performance.
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