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A Novel Cascade Model for Learning Latent Similarity from Heterogeneous Sequential Data of MOOC

机译:一种新的级联模型,用于学习MOOC异构顺序数据的潜在相似性

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Recent years have witnessed the proliferation of Massive Open Online Courses (MOOCs). With massive learners being offered MOOCs, there is a demand that the forum contents within MOOCs need to be classified in order to facilitate both learners and instructors. Therefore we investigate a significant application, which is to associate forum threads to subtitles of video clips. This task can be regarded as a document ranking problem, and the key is how to learn a distinguishable text representation from word sequences and learners' behavior sequences In this paper, we propose a novel cascade model, which can capture both the latent semantics and latent similarity by modeling MOOC data Experimental results on two real-world datasets demonstrate that our textual representation outperforms state-of-the-art unsupervised counterparts for the application.
机译:近年来见证了大规模开放的在线课程的扩散(MooCs)。随着MOOCS提供巨大的学习者,需要分类MOOCS内的论坛内容,以便于学习者和教师。因此,我们调查了一个重要的应用程序,该应用程序是将论坛线程与视频剪辑的字幕相关联。此任务可以被视为文档排名问题,并且关键是如何在本文中从文字序列和学习者的行为序列中学习可区分的文本表示,我们提出了一种新的级联模型,可以捕获潜在语义和潜在的级联模型通过建模MOOC数据在两个现实世界数据集上的实验结果表明,我们的文本代表优于申请的最先进的无监督对应力。

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