Bessa Wallace M, Cadengue Lucas S, Luchiari Ana C
Department of Mechanical and Materials Engineering, University of Turku, Turku, Finland.
Programa de Pós-Graduação em Engenharia Elétrica e de Computação, Universidade Federal do Rio Grande do Norte, Natal, Brazil.
Front Behav Neurosci. 2023 Feb 8;17:1028190. doi: 10.3389/fnbeh.2023.1028190. eCollection 2023.
Foraging is an essential behavior for animal survival and requires both learning and decision-making skills. However, despite its relevance and ubiquity, there is still no effective mathematical framework to adequately estimate foraging performance that also takes interindividual variability into account. In this work, foraging performance is evaluated in the context of multi-armed bandit (MAB) problems by means of a biological model and a machine learning algorithm. Siamese fighting fish () were used as a biological model and their ability to forage was assessed in a four-arm cross-maze over 21 trials. It was observed that fish performance varies according to their basal cortisol levels, i.e., a reduced average reward is associated with low and high levels of basal cortisol, while the optimal level maximizes foraging performance. In addition, we suggest the adoption of the epsilon-greedy algorithm to deal with the exploration-exploitation tradeoff and simulate foraging decisions. The algorithm provided results closely related to the biological model and allowed the normalized basal cortisol levels to be correlated with a corresponding tuning parameter. The obtained results indicate that machine learning, by helping to shed light on the intrinsic relationships between physiological parameters and animal behavior, can be a powerful tool for studying animal cognition and behavioral sciences.
觅食是动物生存的一项基本行为,需要学习和决策技能。然而,尽管其具有相关性和普遍性,但仍然没有一个有效的数学框架来充分估计觅食表现,同时还能考虑个体间的变异性。在这项工作中,通过一个生物学模型和一种机器学习算法,在多臂老虎机(MAB)问题的背景下评估觅食表现。暹罗斗鱼()被用作生物学模型,并在一个四臂交叉迷宫中通过21次试验评估它们的觅食能力。观察到鱼类的表现根据其基础皮质醇水平而有所不同,即平均奖励降低与基础皮质醇的低水平和高水平相关,而最佳水平可使觅食表现最大化。此外,我们建议采用ε-贪婪算法来处理探索-利用权衡问题并模拟觅食决策。该算法提供的结果与生物学模型密切相关,并允许将标准化的基础皮质醇水平与相应的调谐参数相关联。所获得的结果表明,机器学习通过有助于揭示生理参数与动物行为之间的内在关系,可以成为研究动物认知和行为科学的有力工具。