复杂世界中的灵活学习。

IF 2.5 3区 环境科学与生态学 Q2 BEHAVIORAL SCIENCES Behavioral Ecology Pub Date : 2023-12-29 eCollection Date: 2024-01-01 DOI:10.1093/beheco/arad109
Olof Leimar, Andrés E Quiñones, Redouan Bshary
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引用次数: 0

摘要

认知灵活性可以提高适应不断变化的环境的能力。在这里,我们利用学习模拟来研究在多变(变化)环境中灵活学习可能带来的优势。我们比较了两种既有的学习机制,一种是学习率恒定的机制,另一种是学习率随波动而调整的机制。我们研究了一个与生态相关的波动案例,该案例基于对发育中的清洁鱼 Labroides dimidiatus 的观察,它们经历了从更简单的觅食环境到更复杂的觅食环境的转变。自然界中还有其他类似的过渡,例如迁移到一个新的不同的栖息地。我们还研究了实验心理学和行为生态学中处理易变环境的两种传统方法:逆向学习和学习集形成(由一系列不同的辨别任务组成)。这些都是认知灵活性的实验测量方法。关于向复杂世界的过渡,我们的研究表明,恒定学习率和灵活学习率的表现都很好,在过渡后的一段时间内,只损失了一小部分可用的奖励,但灵活学习率的表现要好于恒定学习率。在逆转学习方面,由于学习率的不断提高,灵活的学习率在每次连续逆转时都能提高性能,但恒定的学习率却不会出现这种情况。在学习集的形成方面,我们发现无论是灵活的学习率还是恒定的学习率,在连续转换到新的刺激物进行辨别时,成绩都没有提高。因此,灵活的学习率可以解释逆转学习中不断提高的成绩,但不能解释学习集形成中不断提高的成绩。
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Flexible learning in complex worlds.

Cognitive flexibility can enhance the ability to adjust to changing environments. Here, we use learning simulations to investigate the possible advantages of flexible learning in volatile (changing) environments. We compare two established learning mechanisms, one with constant learning rates and one with rates that adjust to volatility. We study an ecologically relevant case of volatility, based on observations of developing cleaner fish Labroides dimidiatus that experience a transition from a simpler to a more complex foraging environment. There are other similar transitions in nature, such as migrating to a new and different habitat. We also examine two traditional approaches to volatile environments in experimental psychology and behavioral ecology: reversal learning, and learning set formation (consisting of a sequence of different discrimination tasks). These provide experimental measures of cognitive flexibility. Concerning transitions to a complex world, we show that both constant and flexible learning rates perform well, losing only a small proportion of available rewards in the period after a transition, but flexible rates perform better than constant rates. For reversal learning, flexible rates improve the performance with each successive reversal because of increasing learning rates, but this does not happen for constant rates. For learning set formation, we find no improvement in performance with successive shifts to new stimuli to discriminate for either flexible or constant learning rates. Flexible learning rates might thus explain increasing performance in reversal learning but not in learning set formation, and this can shed light on the nature of cognitive flexibility in a given system.

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来源期刊
Behavioral Ecology
Behavioral Ecology 环境科学-动物学
CiteScore
5.20
自引率
8.30%
发文量
93
审稿时长
3.0 months
期刊介绍: Studies on the whole range of behaving organisms, including plants, invertebrates, vertebrates, and humans, are included. Behavioral Ecology construes the field in its broadest sense to include 1) the use of ecological and evolutionary processes to explain the occurrence and adaptive significance of behavior patterns; 2) the use of behavioral processes to predict ecological patterns, and 3) empirical, comparative analyses relating behavior to the environment in which it occurs.
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