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Multimedia based student-teacher smart interaction framework using multi-agents in eLearning

机译:电子学习中使用多智能体的基于多媒体的师生智能交互框架

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摘要

Multimedia content comprises the graphics, audio & video clips, animation and text to present learning materials in a style, which improves learner expectation in eLearning paradigm. Electronic learning gained the popularity due to its immense coverage of students and subjects all over the world. The aim of this study is enhancements using agent-based framework through multimedia data in eLearning paradigm. Analysis of multimedia contents and eLearning data are helpful for the course designers, teachers, and administrators of eLearning environments to hunt for undetected patterns and underlying data in learning processes. This research improves the learning curves for the students. It also needs to improve the overall processes in eLearning paradigm. Information and Communication Technologies supported education, and virtual classrooms environments are mandatory. In eLearning data is evolving day by day that includes the semi-structured data, unstructured data, and structured data which is also collectively marked as multimedia big data. Multimedia data has the potential to mining for the analytics and learning. The learning outcomes for the students are very important to find the facts that what impacts the input data on the student. There are 1108 students posted questions in online Learning Management System (LMS) and instructors reply these queries. Sensor data is also gathered by the mobile GPS to find the student location. The system has analyzed the relevance of the replied answers. The student satisfaction is achieved by providing the multimedia-based student-teacher interaction. This can lead to synchronous communication and multimedia content conversation in eLearning paradigm. Machine learning techniques are applied to that data to discover the patterns and behavioral trends. It can also be used in the eLearning environments for the teacher to assist and enhance the pedagogical skills and for student's learning curve enhancements.
机译:多媒体内容包括图形,音频和视频剪辑,动画和文本,以一种样式呈现学习材料,从而提高了学习者对电子学习范式的期望。电子学习由于其在世界范围内对学生和学科的广泛覆盖而广受欢迎。这项研究的目的是通过在eLearning范式中通过多媒体数据使用基于代理的框架进行增强。多媒体内容和电子学习数据的分析有助于电子学习环境的课程设计者,教师和管理员在学习过程中寻找未检测到的模式和基础数据。这项研究改善了学生的学习曲线。它还需要改进电子学习范式的整体流程。信息和通信技术支持的教育和虚拟教室环境是强制性的。在电子学习中,数据日新月异,包括半结构化数据,非结构化数据和结构化数据,这些数据也统称为多媒体大数据。多媒体数据具有挖掘分析和学习潜力。对于学生而言,学习成果对于发现影响学生输入数据的事实非常重要。在线学习管理系统(LMS)中有1108名学生发布了问题,导师回答了这些问题。传感器数据也由移动GPS收集以找到学生的位置。系统已经分析了回答的相关性。通过提供基于多媒体的学生与老师互动,可以使学生满意。这可以导致电子学习范例中的同步通信和多媒体内容对话。将机器学习技术应用于该数据以发现模式和行为趋势。它还可以在电子学习环境中用于教师,以帮助和增强教学技能,并增强学生的学习曲线。

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