Further perceptions of probability: In defence of associative models.

IF 5.1 1区 心理学 Q1 PSYCHOLOGY Psychological review Pub Date : 2023-10-01 Epub Date: 2023-01-12 DOI:10.1037/rev0000410
Mattias Forsgren, Peter Juslin, Ronald van den Berg
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Abstract

Extensive research in the behavioral sciences has addressed people's ability to learn stationary probabilities, which stay constant over time, but only recently have there been attempts to model the cognitive processes whereby people learn-and track-nonstationary probabilities. In this context, the old debate on whether learning occurs by the gradual formation of associations or by occasional shifts between hypotheses representing beliefs about distal states of the world has resurfaced. Gallistel et al. (2014) pitched the two theories against each other in a nonstationary probability learning task. They concluded that various qualitative patterns in their data were incompatible with trial-by-trial associative learning and could only be explained by a hypothesis-testing model. Here, we contest that claim and demonstrate that it was premature. First, we argue that their experimental paradigm consisted of two distinct tasks: probability tracking (an estimation task) and change detection (a decision-making task). Next, we present a model that uses the (associative) delta learning rule for the probability tracking task and bounded evidence accumulation for the change detection task. We find that this combination of two highly established theories accounts well for all qualitative phenomena and outperforms the alternative model proposed by Gallistel et al. (2014) in a quantitative model comparison. In the spirit of cumulative science, we conclude that current experimental data on human learning of nonstationary probabilities can be explained as a combination of associative learning and bounded evidence accumulation and does not require a new model. (PsycInfo Database Record (c) 2023 APA, all rights reserved).

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概率的进一步认知:为关联模型辩护。
行为科学的广泛研究已经解决了人们学习平稳概率的能力,这种概率随着时间的推移保持不变,但直到最近才有人试图对人们学习和跟踪非平稳概率的认知过程进行建模。在这种背景下,关于学习是通过逐渐形成联想发生的,还是通过代表对世界遥远状态的信念的假设之间的偶尔转变发生的,这一古老的争论再次浮出水面。Gallistel等人(2014)在非平稳概率学习任务中将这两种理论对立起来。他们得出结论,他们数据中的各种定性模式与逐个试验的联想学习不兼容,只能通过假设检验模型来解释。在这里,我们对这一说法提出质疑,并证明这还为时过早。首先,我们认为他们的实验范式由两个不同的任务组成:概率跟踪(一种估计任务)和变化检测(一种决策任务)。接下来,我们提出了一个模型,该模型将(关联)delta学习规则用于概率跟踪任务,将有界证据累积用于变化检测任务。我们发现,这两种高度成熟的理论的结合很好地解释了所有定性现象,并在定量模型比较中优于Gallistel等人提出的替代模型。(2014)。本着累积科学的精神,我们得出结论,当前关于人类非平稳概率学习的实验数据可以解释为联想学习和有界证据积累的结合,不需要新的模型。(PsycInfo数据库记录(c)2023 APA,保留所有权利)。
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来源期刊
Psychological review
Psychological review 医学-心理学
CiteScore
9.70
自引率
5.60%
发文量
97
期刊介绍: Psychological Review publishes articles that make important theoretical contributions to any area of scientific psychology, including systematic evaluation of alternative theories.
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