协作解决问题的行为模式:基于2015年PISA中反应时间和行动的潜在剖面分析

IF 2.6 Q1 EDUCATION & EDUCATIONAL RESEARCH Large-Scale Assessments in Education Pub Date : 2023-11-13 DOI:10.1186/s40536-023-00185-5
Areum Han, Florian Krieger, Francesca Borgonovi, Samuel Greiff
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引用次数: 0

摘要

过程数据在教育研究中受到越来越多的关注。在协作解决问题的计算机评估(ColPS)领域,过程数据已被用于确定学生在进行评估时的应试策略,此类数据可用于补充收集的准确性和总体表现数据。这些信息可以用来理解,例如,学生是否能够使用一系列的风格和策略来解决不同的问题,因为有证据表明,这种认知灵活性在劳动力市场和社会中可能很重要。此外,过程信息可能有助于研究人员更好地确定不良表现的决定因素和可以帮助学生成功的干预措施。然而,这方面的研究,特别是使用这些数据来分析学生的研究,仍处于起步阶段,主要集中在人与人之间的中小型协作环境(即人与人之间的方法)。只有少数研究涉及受访者和计算机代理(即人对代理方法)之间ColPS的大规模评估,其中问题空间更标准化,存在更少的偏见和混淆。在这项研究中,我们基于两种类型的过程数据(即响应时间和行动数量),使用潜在剖面分析(LPA)调查了学生的ColPS行为模式,这些数据来自国际学生评估项目(PISA) 2015 ColPS评估,这是一项大规模的人对代理方法的国际评估。对:(a)以英语进行评估和(b)在测试开始时分配Xandar单元的考生进行了分析。总样本量N = 2520。分析揭示了两个概况(即,概况1[95%]与概况2[5%])在评估单元的四个部分中显示出不同的行为特征。在总体性能方面也发现了显著的差异。
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Behavioral patterns in collaborative problem solving: a latent profile analysis based on response times and actions in PISA 2015
Abstract Process data are becoming more and more popular in education research. In the field of computer-based assessments of collaborative problem solving (ColPS), process data have been used to identify students’ test-taking strategies while working on the assessment, and such data can be used to complement data collected on accuracy and overall performance. Such information can be used to understand, for example, whether students are able to use a range of styles and strategies to solve different problems, given evidence that such cognitive flexibility may be important in labor markets and societies. In addition, process information might help researchers better identify the determinants of poor performance and interventions that can help students succeed. However, this line of research, particularly research that uses these data to profile students, is still in its infancy and has mostly been centered on small- to medium-scale collaboration settings between people (i.e., the human-to-human approach). There are only a few studies involving large-scale assessments of ColPS between a respondent and computer agents (i.e., the human-to-agent approach), where problem spaces are more standardized and fewer biases and confounds exist. In this study, we investigated students’ ColPS behavioral patterns using latent profile analyses (LPA) based on two types of process data (i.e., response times and the number of actions) collected from the Program for International Student Assessment (PISA) 2015 ColPS assessment, a large-scale international assessment of the human-to-agent approach. Analyses were conducted on test-takers who: (a) were administered the assessment in English and (b) were assigned the Xandar unit at the beginning of the test. The total sample size was N = 2,520. Analyses revealed two profiles (i.e., Profile 1 [95%] vs. Profile 2 [5%]) showing different behavioral characteristics across the four parts of the assessment unit. Significant differences were also found in overall performance between the profiles.
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来源期刊
Large-Scale Assessments in Education
Large-Scale Assessments in Education Social Sciences-Education
CiteScore
4.30
自引率
6.50%
发文量
16
审稿时长
13 weeks
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