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Humans Can Adopt Optimal Discounting Strategy under Real-Time Constraints

机译:人类可以在实时约束下采用最优折扣策略

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摘要

Critical to our many daily choices between larger delayed rewards, and smaller more immediate rewards, are the shape and the steepness of the function that discounts rewards with time. Although research in artificial intelligence favors exponential discounting in uncertain environments, studies with humans and animals have consistently shown hyperbolic discounting. We investigated how humans perform in a reward decision task with temporal constraints, in which each choice affects the time remaining for later trials, and in which the delays vary at each trial. We demonstrated that most of our subjects adopted exponential discounting in this experiment. Further, we confirmed analytically that exponential discounting, with a decay rate comparable to that used by our subjects, maximized the total reward gain in our task. Our results suggest that the particular shape and steepness of temporal discounting is determined by the task that the subject is facing, and question the notion of hyperbolic reward discounting as a universal principle.
机译:在延迟奖励较大和较直接奖励较小之间的许多日常选择中,至关重要的是随着时间推移而减少奖励的函数的形状和陡度。尽管人工智能研究支持不确定环境中的指数折现,但对人和动物的研究始终显示出双曲线折现。我们调查了人类在具有时间限制的奖励决策任务中的执行情况,其中每个选择都会影响以后的试验剩余时间,并且每个试验的延迟都会有所不同。我们证明了我们的大多数受试者在该实验中采用了指数折现法。此外,我们通过分析证实,指数折现的衰减率与我们的研究对象所使用的衰减率相当,可以最大程度地提高任务的总奖励收益。我们的研究结果表明,时间折扣的特殊形状和陡度取决于受试者所面临的任务,并对双曲线奖励折扣作为普遍原则的概念提出了质疑。

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