强化学习风格,应用多智能体自适应模型

Angel F. Navarro, Saul E. Arauco, Hector Huamán, Richard Carrión, Delia López-Cuadros
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引用次数: 1

摘要

该研究增加并实施了一个自适应多主体模型,以识别和加强国立中央大学Perú (UNCP)工程专业学生的学习模式,以达到秘鲁国家教育质量评估、认可和认证国家系统认证模式的标准- (sincace)。采用元音工程(Vowel Engineering)的多智能体方法设计参与智能体,用元音A (agent)、E (environment)、I (interaction)和O (organization)来识别模型元素。本研究在解释层面上应用,并考虑了2018 - 2019年期间入学的学生人数。使用费尔德和西尔弗曼问卷来确定学习风格;结果表明:48.8%的学生采用主动风格;70.8%的学生练习感觉直观型,28.8%的学生练习感官型;62.5%的人练习视觉风格;62.5%的视觉实用风格和22.5%的顺序风格。最后,确定了工科专业学生的学习风格:敏感型-直觉型、归纳型-演绎型、主动型-反思型。为了结合学习方法,指导补充和加强有弱点的模式,建立战略,纳入未来的课程设计,有助于加强毕业生的技能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strengthening of Learning Styles, applying a Multiagent Adaptive Model
The research increased and implemented an adaptive multi-agent model to identify and strengthen learning patterns in engineering students at the Universidad Nacional del Centro del Perú (UNCP) in order to achieve the standards of the accreditation model of the National System for Evaluation, Accreditation and Certification of the Educational Quality of the Peruvian state - (SINEACE). The multi-agent methodology called Vowel Engineering was obtained to design the participating agents, the elements of the model were identified with the vowels A (agents), E (environment), I (interactions) and O (organization). The present study is applied at an explanatory level and has considered the population of students enrolled in the period 2018 - 2019. The Felder and Silverman questionnaires were brought to determine learning styles; the results show that 48.8% practice active style; 70.8% practice the sensory and intuitive style, 28.8% practice the sensory style; 62.5% practice the visual style; 62.5% visual practical style and 22.5% sequential style. Finally, it concludes with the determination of the prevalence of learning styles: sensitive - intuitive, inductive - deductive, active - reflective in the students of the professional engineering career. In order to incorporate learning methodologies that guide to complement and strengthen patterns with weaknesses, established strategies that are incorporated into future curricular designs and contribute to strengthening the skills of the graduate.
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