4.6 Article

A content-based recommendation algorithm for learning resources

期刊

MULTIMEDIA SYSTEMS
卷 24, 期 2, 页码 163-173

出版社

SPRINGER
DOI: 10.1007/s00530-017-0539-8

关键词

Resources recommendation; Convolutional neural network; L-1 norm; Split Bregman iteration method

资金

  1. specific funding for education science research by self-determined research funds of CCNU from the colleges' basic research and operation of MOE [CCNU16JYKX031, CCNU16JYKX027]
  2. National Natural Science Foundation of China [61505064]
  3. Project of the Program for National Key Technology Research and Development Program [2013BAH72B01, 2013BAH18F02, 2015BAH33F02, 2014BAH22F01, 2015BAK07B03]

向作者/读者索取更多资源

Automatic multimedia learning resources recommendation has become an increasingly relevant problem: it allows students to discover new learning resources that match their tastes, and enables the e-learning system to target the learning resources to the right students. In this paper, we propose a content-based recommendation algorithm based on convolutional neural network (CNN). The CNN can be used to predict the latent factors from the text information of the multimedia resources. To train the CNN, its input and output should first be solved. For its input, the language model is used. For its output, we propose the latent factor model, which is regularized by L (1)-norm. Furthermore, the split Bregman iteration method is introduced to solve the model. The major novelty of the proposed recommendation algorithm is that the text information is used directly to make the content-based recommendation without tagging. Experimental results on public databases in terms of quantitative assessment show significant improvements over conventional methods. In addition, the split Bregman iteration method which is introduced to solve the model can greatly improve the training efficiency.

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