Abstract

Social Internet of things is one of the most up-to-date research issues in the applications of Internet of things technologies. In social Internet of things, accuracy and reliability are standard features to discerning decisions. We assume that decision support systems based on social Internet of things could leverage research from recommender systems to achieve more stable performance. Therefore, we propose a trust-aware recommender systems suitable for social Internet of things. Trust-aware recommender systems adapt the concept of social networking service and utilize social interaction information. Trust information not only improves recommender systems from opinion spam problems but also more accurately predicts users’ preferences. We confirm that the performance of a recommender system becomes more improved when implicit trust is able to satisfy the properties of trust in the social Internet of things environment. The structure and amount of social link information are context-sensitive, so applying the concept of trust into social Internet of things environments requires a method to optimize implicit and explicit trust with minimal social link information. Our proposed method configures an asymmetric implicit trust network utilizing user–item rating matrix and transforms trust propagation metrics for a directional and weighted trust network. Through experiments, we confirm that the proposed methods enable higher accuracy and wider coverage compared to the existing recommendation methods.

Highlights

  • The basic concept of the Internet of things (IoT) is that various things or objects are interconnected with each other and achieve their common purpose.[1]

  • Various things or objects can be interconnected with addressing wireless communication, such as radio frequency identification (RFID) or near-field communication (NFC).[2,3]

  • We evaluate our method with the fivefold cross validation[42] and compare our method with three existing methods: (1) collaborative filtering (CF) with a threshold of Pearson’s correlation coefficient (PCC), (2) Shambour’s implicit trust method, and (3) Moradi and Ahmadian’s48 reliabilitybased recommendation method

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Summary

Introduction

The basic concept of the Internet of things (IoT) is that various things or objects are interconnected with each other and achieve their common purpose.[1]. If we build a social network based on more devices, the reliability of the data is compromised Because of this reason, the accuracy and reliability of the information are considered as the important factors in social IoT. We first introduce recommender systems on the web and propose a trust-aware recommender system suitable for social IoT. The user–user trust matrix is generally less dense than user–item rating matrices because users tend to be more reluctant to provide personal information to systems. There is a trust tendency problem where each user expresses degree of trust at different levels Since such problems degrade the quality of recommendations, it becomes an important matter to develop implicit trust methods to reflect properties of trust: transitivity, asymmetry, dynamicity, and context dependence.[42].

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