Use of Deep Learning in Modern Recommendation System: A Summary of Recent Works

@article{Singhal2017UseOD,
  title={Use of Deep Learning in Modern Recommendation System: A Summary of Recent Works},
  author={Ayush Singhal and Pradeep Sinha and Rakesh Pant},
  journal={ArXiv},
  year={2017},
  volume={abs/1712.07525}
}
With the exponential increase in the amount of digital information over the internet, online shops, online music, video and image libraries, search engines and recommendation system have become the most convenient ways to find relevant information within a short time. In the recent times, deep learning's advances have gained significant attention in the field of speech recognition, image processing and natural language processing. Meanwhile, several recent studies have shown the utility of deep… 
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