A Personalized Recommendation Framework for Social Internet of Things (SIoT)

@article{Cheng2019APR,
  title={A Personalized Recommendation Framework for Social Internet of Things (SIoT)},
  author={Wai-Khuen Cheng and Adeoye Abiodun Ileladewa and Teik Boon Tan},
  journal={2019 International Conference on Green and Human Information Technology (ICGHIT)},
  year={2019},
  pages={24-29}
}
Recommendation is inevitably crucial in human life, as almost every human daily activity involves decision and choice making from amongst various alternatives at our disposal. The use of computers has made automated decision making interesting, and beneficial in many areas of real-life activities, targeted at meeting different yet specific users' needs, such as in Social Internet of Things (SIoT). SIoT is defined as an emerging paradigm of IoT where intelligent devices are able to create social… 

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