WhatsApp 话语贯穿 COVID-19:对 STEM 教师专业学习社区的发展进行计算机化评估。

IF 4.7 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS International Journal of Artificial Intelligence in Education Pub Date : 2022-12-08 DOI:10.1007/s40593-022-00320-3
Zahava Scherz, Asaf Salman, Giora Alexandron, Yael Shwartz
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引用次数: 0

摘要

这项为期两年的研究跟踪了一个由 STEM 教师领导者组成的专业学习社区(PLC),简称为 L-PLC。COVID-19 大流行病的爆发加速了许多专业发展框架的重点从面对面交流向在线交流的转变。我们寻求新的方法和工具来跟踪 L-PLC 的专业发展和动态。特别是,在 COVID-19 大流行之前和期间,我们从 WhatsApp 群组(43-48 名参与者)的话语中探索了专业知识的发展和社会互动。我们从连续四个学期(2019 年 3 月至 2021 年 3 月)发布的 6599 条 WhatsApp 消息以及参与者背景调查问卷中提取了数据。分析结合了对 L-PLC WhatsApp 话语的结构和内容检查,使用了社交网络分析(SNA)和独特的编码方案,随后进行了统计分析、热图和条形图可视化。这些方法提供了对整个群体(宏观)、子群体(中观)和个人(微观)概况的洞察。研究结果表明,随着时间的推移,参与者逐渐开始将 WhatsApp 平台用于专业用途,而非最初的行政用途。此外,大流行似乎导致了一个独特的适应过程,表现为内容知识、专业内容知识和技术知识方面的专业互动得到加强,同时也加速了生产性社区行为的发展,如分享和社会支持。这种研究方法使我们能够发现 PLC 关键特征的变化,跟踪其在混乱变化影响下的动态变化,并相应地引导社区。总之,WhatsApp 交流可作为丰富的数据来源,用于对群体进程和进展进行非侵入式的持续评估:在线版本包含补充材料,可查阅 10.1007/s40593-022-00320-3。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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WhatsApp Discourse Throughout COVID-19: Towards Computerized Evaluation of the Development of a STEM Teachers Professional Learning Community.

This two-year study followed a professional learning community (PLC) of STEM Teachers Leaders, referred to as L-PLC. The onset of the COVID-19 pandemic accelerated changes in the focus of many professional development frameworks from face-to-face to online communication. We sought for new ways and tools to follow the professional development and the dynamics in our L-PLC. In particular, we explored professional knowledge development and social interactions, as derived from its WhatsApp group (43-48 participants) discourse, before and during the COVID-19 pandemic. Data were extracted from 6599 WhatsApp messages issued during four consecutive semesters (March 2019-March 2021), as well as from participant background questionnaires. The analysis incorporated both structure and content examination of the L-PLC WhatsApp discourse, using social network analysis (SNA), and a distinctive coding scheme followed by statistical analysis, heat map, and bar graph visualizations. These provided insights into whole group (macro), subgroups (meso), and individual (micro) profiles. The results indicated that over time, the participants gradually began to use the WhatsApp platform for professional purposes on top of its initial administrative intention. Moreover, the pandemic seemed to lead to a unique adjustment process, denoted by enhanced professional interactions, regarding content knowledge, professional content knowledge, and technological knowledge, and also accelerated the development of productive community behaviors, such as sharing and social support. The research approach enabled us to detect changes in key PLC characteristics, follow their dynamics under the influence of chaotic changes and navigate the community accordingly. Taken together, WhatsApp exchanges can serve as a rich source of data for a noninvasive continuous evaluation of group processes and progress.

Supplementary information: The online version contains supplementary material available at 10.1007/s40593-022-00320-3.

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来源期刊
International Journal of Artificial Intelligence in Education
International Journal of Artificial Intelligence in Education COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
11.10
自引率
6.10%
发文量
32
期刊介绍: IJAIED publishes papers concerned with the application of AI to education. It aims to help the development of principles for the design of computer-based learning systems. Its premise is that such principles involve the modelling and representation of relevant aspects of knowledge, before implementation or during execution, and hence require the application of AI techniques and concepts. IJAIED has a very broad notion of the scope of AI and of a ''computer-based learning system'', as indicated by the following list of topics considered to be within the scope of IJAIED: adaptive and intelligent multimedia and hypermedia systemsagent-based learning environmentsAIED and teacher educationarchitectures for AIED systemsassessment and testing of learning outcomesauthoring systems and shells for AIED systemsbayesian and statistical methodscase-based systemscognitive developmentcognitive models of problem-solvingcognitive tools for learningcomputer-assisted language learningcomputer-supported collaborative learningdialogue (argumentation, explanation, negotiation, etc.) discovery environments and microworldsdistributed learning environmentseducational roboticsembedded training systemsempirical studies to inform the design of learning environmentsenvironments to support the learning of programmingevaluation of AIED systemsformal models of components of AIED systemshelp and advice systemshuman factors and interface designinstructional design principlesinstructional planningintelligent agents on the internetintelligent courseware for computer-based trainingintelligent tutoring systemsknowledge and skill acquisitionknowledge representation for instructionmodelling metacognitive skillsmodelling pedagogical interactionsmotivationnatural language interfaces for instructional systemsnetworked learning and teaching systemsneural models applied to AIED systemsperformance support systemspractical, real-world applications of AIED systemsqualitative reasoning in simulationssituated learning and cognitive apprenticeshipsocial and cultural aspects of learningstudent modelling and cognitive diagnosissupport for knowledge building communitiessupport for networked communicationtheories of learning and conceptual changetools for administration and curriculum integrationtools for the guided exploration of information resources
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