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Domain Adaptation based Topic Modeling Techniques for Engagement Estimation in the Wild

机译:基于域改编的主题建模技术在野外参与估计

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In recent years, student engagement estimation has gained focus in the affective computing community. The absence of student monitoring during online MOOC courses makes it challenging to estimate behavioural student engagement during online classes. The non availability of consistent engagement datasets makes it difficult to build cross data automatic behavioural engagement estimation technique. In this paper, we propose an unsupervised topic modeling technique for engagement detection as it captures multiple behavioral cues which are indicators of engagement level such as eye gaze, head movement, facial expression and body posture. We have addressed the various challenges such as less volume of our datasets, large decision unit (annotated for 5 minutes duration) and uneven distribution of different engagement categories with domain adaptation based solution for cross data implementation. We present results on engagement prediction using different clustering techniques such as K-Means and Latent Dirichlet Allocation (LDA) along with different regressors and neural network based attention mechanisms.
机译:近年来,学生参与估计已经占据了情感计算界的重点。在线MooC课程中没有学生监测使得估计在网上课程中的行为学生参与挑战。一致的接合数据集的非可用性使得难以构建交叉数据自动行为接合估计技术。在本文中,我们提出了一种无监督主题建模技术,用于接触检测,因为它捕获了多个行为提示,这是诸如眼睛凝视,头部运动,面部表情和身体姿势的接合水平指示器。我们已经解决了各种挑战,例如我们的数据集数量较少,大型决定单位(注释为5分钟持续时间),以及基于域适配的跨数据实现的解决方案的不同接合类别的分布不均匀。我们使用不同聚类技术(例如K均值和潜在的Dirichlet分配(LDA)以及基于神经网络的基于神经网络的引人注目预测的参与预测结果。

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