A model for estimating the visual complexity of a molecule using graph theory metrics: an educational perspective

Anzhelika I. Markovnikova, Maxim V. Likhanov, Mikhail V. Kurushkin
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Abstract

Introduction. Research on understanding the visual complexity of molecules is critical to enhancing chemistry education, improving teaching methods, and creating educational resources in STEM education. One effective strategy for improving student achievement involves assessing and incorporating the complexity of learning materials into lesson planning. In chemistry education, various tools have been proposed for this purpose, such as analyzing illustrative molecules using graph theory or expert assessments by chemists. However, these tools remain under-researched, which limits a complete understanding of chemistry teaching methodology in school and university. The aim of this study was to investigate the visual perception of molecular complexity of high school and undergraduate students (ages 16 to 19 years), and to find out how it correlates with graph theory-based estimates of molecular complexity. In the experiment, learners rated the visual complexity of a set of molecules randomly selected from school textbooks. Participants and research methods. Fifty-six learners divided into two groups (for training and testing the ML model), 42 and 14, participated in the study. The groups included first-year biotechnology students from ITMO University (St. Petersburg, Russian Federation) and students from St. Petersburg high schools (grades 9-11). Participants' ages ranged from 16 to 19 years (M = 17.5; SD = 2.96). Methods: source analysis, design, pedagogical experiment, self-assessment of pupils and students, specialized ML methods such as random forest method and linear regression, graph-theoretical methods, statistical. Results of the study. The collected data showed that the visual complexity rated by students was positively correlated with the complexity score obtained using graph theory (r = [0.59-0.84]). Based on these data and an ad hoc survey of students, a machine learning (ML) model was built to produce a complexity estimate for any set of molecules. Practical significance. The resulting model is an open-source toolkit that can be used in chemistry classes to tailor individual assignments or to develop adaptive methods for testing chemistry knowledge. This model can be useful for trainees, beginning teachers and teacher trainees.
利用图论指标估算分子视觉复杂性的模型:教育视角
导言。了解分子视觉复杂性的研究对于加强化学教育、改进教学方法和创建 STEM 教育的教育资源至关重要。提高学生成绩的有效策略之一是评估学习材料的复杂性并将其纳入备课中。在化学教育中,为此提出了各种工具,如利用图论分析说明性分子或化学家的专家评估。然而,对这些工具的研究仍然不足,从而限制了对中小学和大学化学教学方法的全面了解。本研究旨在调查高中生和本科生(16 至 19 岁)对分子复杂性的视觉感知,并了解其与基于图论的分子复杂性估计之间的关联。在实验中,学习者对从学校教科书中随机选取的一组分子的视觉复杂性进行评分。参与者和研究方法。56 名学习者分为两组(用于训练和测试 ML 模型),分别为 42 人和 14 人。这两组学生包括 ITMO 大学(俄罗斯联邦圣彼得堡)生物技术专业的一年级学生和圣彼得堡高中(9-11 年级)的学生。参与者的年龄在 16 至 19 岁之间(M = 17.5;SD = 2.96)。研究方法:资料分析、设计、教学实验、学生自评、随机森林法和线性回归等专门的 ML 方法、图形理论方法、统计学。研究结果。收集到的数据显示,学生评定的视觉复杂性与使用图式理论获得的复杂性得分呈正相关(r = [0.59-0.84])。根据这些数据和对学生的特别调查,建立了一个机器学习(ML)模型,可对任意一组分子进行复杂度估算。实际意义。由此产生的模型是一个开源工具包,可用于化学课堂,以定制个人作业或开发测试化学知识的自适应方法。该模型对实习生、新教师和师范生都很有用。
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