Student motivation is a key research agenda due to the necessity of both postcolonial education reform and youth job-market adaptation in ongoing fourth industrial revolution. Post-communism era teachers are prompted to analyze student ethnicity information such as background, origin with the aim of providing better education. With the proliferation of smart-device data, ever-increasing demand for distance learning platforms and various survey results of virtual learning, we are fortunate to have some access to student engagement data. In this research, we are motivated to address the following questions: can we predict student engagement from ethnographic information when we have limited labeled knowledge? If the answer is yes, can we tell which features are most influential in ethnographic engagement learning? In this context, we have proposed a deep neural network based transfer learning algorithm ETHNO-DAANN with adversarial adaptation for ethnographic engagement prediction. We conduct a survey among participants about ethnicity-based student motivation to figure out the most influential feature helpful in final prediction. Thus, our research stands as a general solution for ethnographic motivation parameter estimation in case of limited labeled data.
翻译:由于当前第四次工业革命中必须进行殖民后教育改革和青年就业市场适应,学生动机是一个关键的研究议程。后共产主义时代教师被要求分析学生族裔信息,如背景、出身等,以便提供更好的教育。随着智能设备数据的扩散,对远程学习平台的需求不断增加,虚拟学习的各种调查结果越来越多,我们有幸有机会获得学生参与数据。在这项研究中,我们有动力处理下列问题:当我们标记的知识有限时,我们能否从人种信息中预测学生的参与情况?如果答案是肯定的,我们能否知道在人种参与学习中哪些特征最有影响力?在这方面,我们提议了一个基于深度神经网络的传输学习算法ETHNO-DAANN,并进行人种参与预测的对抗性调整。我们对以族裔为基础的学生动机进行了调查,以找出有助于最终预测的最有影响力的特征。因此,我们的研究是,在标签数据有限的情况下,对人种动机参数估算的一种一般解决办法。