基于社区理论的高等教育学习框架

IF 1.7 4区 心理学 Q3 PSYCHOLOGY, BIOLOGICAL
Qian Li , Fei Yan
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引用次数: 0

摘要

随着对学生取得更好成绩的要求越来越高,有几种方法在相关学习技术的持续支持下调查教师的有效性。由于缺乏持续性经验或接受过长期教育,程序员可以在以理论为基础的大学中拥有多个领域。高等教育的教学有效性增强了学生在学习环境中的影响力和表现。完全理解不同平台的技术发展,并加强教育战略。基于社区的高等教育学习优势有据可查。作者的结论是,教育机构必须对其使用的部分做出深思熟虑的选择,他们应该战略性地管理内部和外部利益相关者的网络,包括所有沟通和知情决策,他们应该认识到学生观念的转变是常见的,并鼓励系统操作的灵活性,平台拥有专业化、高绩效的部门/部门是正常的。小组成员的观点相对较少被理解。因此,本文提出了一个基于社区理论的学习(CT-BL)框架来改进高等教育学习技术。CT-BL提出了教授应如何为加强学生和教育工作者之间的伙伴关系做出贡献的观点。描述性统计模型用于问卷调查,以识别社区参与者答案的中心点。该框架在各种保护团体中的实际应用表明,综合方法有潜力成为一个门户,从业者可以通过该门户进入社会科学理论领域,更好地理解CT-BL干预和活动的现状和未来方向。来自几所大学的学生组成合作小组来描述基于理论的学习方式。基于学习参与者提出的问卷对基于社区的学习进行评估。基于社区的理论增强了高等教育学习技术。大学高等教育战略的总体参与者侧重于社区学习。增加了教师对学生信息、经验和能力意识的支持,并扩大了学术界对涉及顾问建议的所有合作元素的参与。数值结果表明,与其他现有模型相比,所提出的CT-BL模型提高了95.6%的评价率、94.2%的可靠性、95.3%的效率、90.3%的识别准确率、92.2%的学习识别率、96.2%的信念影响、93.4%的动态性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Community theory-based learning framework for Higher education

With the increased request for better student success, several methods investigate teachers' effectiveness undertaken with continued support from a related learning technology. With less durational experiences or extended education, programmers can have several ranges in theory-based universities. Teaching effectiveness in higher education strengthens students' impact and performance in the learning environment. The technological development in different platforms is completely understood and enhances education strategies. Community-based learning advantages for higher education are well recorded. The author concludes that educational institutions must make thoughtful choices about the parts they use, that they should strategically manage the network of internal and external stakeholders, including all communications and well-informed decisions, that they should recognize that shifts in student perceptions are common and encourage flexibility in system operations, and that it is normal for platforms to have specialized, high-performing departments/sections. The perspective of the group member is relatively less understood. Therefore, this paper proposes a community theory-based learning (CT-BL) framework to improve higher education learning technologies. CT-BL presents perspectives on how professors should contribute to strengthening partnerships between students and educators. The descriptive statistical model is used in a questionnaire session to recognize the central points in community participants' answers. Practical application of the framework within a variety of conservation groups illustrates the integrated approach's potential to serve as a portal through which practitioners can enter the realm of social science theory to better comprehend the current state and future directions of CT-BL interventions and activities. Students from several universities form collaborations to describe the way of theory-based learning. The community-based learning is evaluated based on the questionnaire raised by the learning participants. The community-based theory enhances higher education learning technologies. The overall participants of the University's higher education strategies are focused on community-based learning. Added teacher support for student awareness of information, experience, and competence and expanded academic participation in all cooperation elements involving advisor suggestions. The numerical results show that the proposed CT-BL model enhances the evaluation rate of 95.6%, reliability ratio of 94.2%, an efficiency ratio of 95.3%, the recognition accuracy of 90.3%, learning recognition rate of 92.2%, the impact of beliefs of 96.2%, dynamic nature rate of 93.4% when compared to other existing models.

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来源期刊
CiteScore
2.90
自引率
0.00%
发文量
53
期刊介绍: Learning and Motivation features original experimental research devoted to the analysis of basic phenomena and mechanisms of learning, memory, and motivation. These studies, involving either animal or human subjects, examine behavioral, biological, and evolutionary influences on the learning and motivation processes, and often report on an integrated series of experiments that advance knowledge in this field. Theoretical papers and shorter reports are also considered.
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