Applied Sciences (Feb 2022)

Variational Inference for a Recommendation System in IoT Networks Based on Stein’s Identity

  • Jia Liu,
  • Yuanfang Chen,
  • Sardar M. N. Islam,
  • Muhammad Alam

DOI
https://doi.org/10.3390/app12041816
Journal volume & issue
Vol. 12, no. 4
p. 1816

Abstract

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The recommendation services are critical for IoT since they provide interconnection between various devices and services. In order to make Internet searching convenient and useful, algorithms must be developed that overcome the shortcomings of existing online recommendation systems. Therefore, a novel Stein Variational Recommendation System algorithm (SVRS) is proposed, developed, implemented and tested in this paper in order to address the long-standing recommendation problem. With Stein’s identity, SVRS is able to calculate the feature vectors of users and ratings it has generated, as well as infer the preference for users who have not rated certain items. It has the advantages of low complexity, scalability, as well as providing insights into the formation of ratings. A set of experimental results revealed that SVRS performed better than other types of recommendation methods in root mean square error (RMSE) and mean absolute error (MAE).

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