从眨眼到状态构建:在线表征学习的诊断基准。

IF 1.2 4区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Adaptive Behavior Pub Date : 2023-02-01 Epub Date: 2022-04-27 DOI:10.1177/10597123221085039
Banafsheh Rafiee, Zaheer Abbas, Sina Ghiassian, Raksha Kumaraswamy, Richard S Sutton, Elliot A Ludvig, Adam White
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引用次数: 0

摘要

我们从经典条件反射实验中得到启发,提出了三个新的诊断预测问题,以促进在线预测学习的研究。经典条件反射实验表明,兔子、鸽子和狗等动物可以建立长时间的时间关联,从而进行多步骤预测。要复制这种非凡的能力,代理必须构建一个内部状态表征,总结其交互历史。递归神经网络可以自动构建状态并学习时间关联。然而,目前的训练方法对于在线预测--每个时间步的连续学习--成本过高,而这正是本文的重点。我们提出的问题测试了动物容易表现出的学习能力,并突出了当前递归学习方法的局限性。虽然提出的问题并不复杂,但它们仍然可以在小型计算环境中进行广泛的测试和分析,从而使研究人员能够孤立地研究这些问题,最终加快可扩展在线表征学习方法的进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

From eye-blinks to state construction: Diagnostic benchmarks for online representation learning.

From eye-blinks to state construction: Diagnostic benchmarks for online representation learning.

From eye-blinks to state construction: Diagnostic benchmarks for online representation learning.

From eye-blinks to state construction: Diagnostic benchmarks for online representation learning.

We present three new diagnostic prediction problems inspired by classical-conditioning experiments to facilitate research in online prediction learning. Experiments in classical conditioning show that animals such as rabbits, pigeons, and dogs can make long temporal associations that enable multi-step prediction. To replicate this remarkable ability, an agent must construct an internal state representation that summarizes its interaction history. Recurrent neural networks can automatically construct state and learn temporal associations. However, the current training methods are prohibitively expensive for online prediction-continual learning on every time step-which is the focus of this paper. Our proposed problems test the learning capabilities that animals readily exhibit and highlight the limitations of the current recurrent learning methods. While the proposed problems are nontrivial, they are still amenable to extensive testing and analysis in the small-compute regime, thereby enabling researchers to study issues in isolation, ultimately accelerating progress towards scalable online representation learning methods.

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来源期刊
Adaptive Behavior
Adaptive Behavior 工程技术-计算机:人工智能
CiteScore
4.30
自引率
18.80%
发文量
34
审稿时长
>12 weeks
期刊介绍: _Adaptive Behavior_ publishes articles on adaptive behaviour in living organisms and autonomous artificial systems. The official journal of the _International Society of Adaptive Behavior_, _Adaptive Behavior_, addresses topics such as perception and motor control, embodied cognition, learning and evolution, neural mechanisms, artificial intelligence, behavioral sequences, motivation and emotion, characterization of environments, decision making, collective and social behavior, navigation, foraging, communication and signalling. Print ISSN: 1059-7123
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