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Learning Natural Selection in 4th Grade with Multi-Agent-Based Computational Models

机译:使用基于多智能体的计算模型学习四年级的自然选择

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In this paper, we investigate how elementary school students develop multi-level explanations of population dynamics in a simple predator–prey ecosystem, through scaffolded interactions with a multi-agent-based computational model (MABM). The term “agent” in an MABM indicates individual computational objects or actors (e.g., cars), and these agents obey simple rules assigned or manipulated by the user (e.g., speeding up, slowing down, etc.). It is the interactions between these agents, based on the rules assigned by the user, that give rise to emergent, aggregate-level behavior (e.g., formation and movement of the traffic jam). Natural selection is such an emergent phenomenon, which has been shown to be challenging for novices (K16 students) to understand. Whereas prior research on learning evolutionary phenomena with MABMs has typically focused on high school students and beyond, we investigate how elementary students (4th graders) develop multi-level explanations of some introductory aspects of natural selection—species differentiation and population change—through scaffolded interactions with an MABM that simulates predator–prey dynamics in a simple birds-butterflies ecosystem. We conducted a semi-clinical interview based study with ten participants, in which we focused on the following: a) identifying the nature of learners’ initial interpretations of salient events or elements of the represented phenomena, b) identifying the roles these interpretations play in the development of their multi-level explanations, and c) how attending to different levels of the relevant phenomena can make explicit different mechanisms to the learners. In addition, our analysis also shows that although there were differences between high- and low-performing students (in terms of being able to explain population-level behaviors) in the pre-test, these differences disappeared in the post-test.
机译:在本文中,我们研究了小学生如何通过与基于多主体的计算模型(MABM)的脚手架相互作用,在一个简单的捕食者-被捕食者生态系统中对人口动态进行多层次的解释。 MABM中的术语“代理”表示各个计算对象或参与者(例如汽车),并且这些代理遵守由用户分配或操纵的简单规则(例如,加速,减速等)。正是基于用户分配的规则,这些代理之间的交互才引起紧急的,聚合级别的行为(例如,交通拥堵的形成和移动)。自然选择是一种新兴现象,对于新手(K16学生)来说,这已经证明是具有挑战性的。以前关于使用MABM来学习进化现象的研究通常集中在高中生及以后的学生,而我们研究的是小学生(四年级学生)如何通过脚手架相互作用对自然选择的一些入门方面(物种分化和种群变化)进行多层次的解释。通过MABM可以模拟一个简单的鸟蝶生态系统中的食肉动物-猎物动态。我们对10名参与者进行了基于半临床访谈的研究,其中我们关注以下方面:a)确定学习者对显着事件或所代表现象的元素的初始解释的性质,b)确定这些解释在其中扮演的角色他们的多层次解释的发展;以及c)如何关注相关现象的不同层次可以为学习者带来明显的不同机制。此外,我们的分析还显示,尽管在考试前和成绩不佳的学生之间存在差异(就能够解释人群水平的行为而言),但这些差异在考试后消失了。

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