Abstract

The recommender systems are deployed on the Web for reducing cognitive overload. It uses different parameters, such as profile information, feedbacks, history, etc., as input and recommends items to a user or group of users. Such parameters are easy to predict and calculate for a single user on a personalized device, such as a personal computer or smartphone. However, watching the Web contents on a smart TV is significantly different from other connected devices. For example, the smart TV is a multi-user, lean-back supported device, and normally enjoyed in groups. Moreover, the performance of a recommender system is questionable due to the dynamic interests of groups in front of a smart TV. This paper discussed in detail the existing recommender system approaches in the context of smart TV environment. Moreover, it highlights the issues and challenges in existing recommendations for smart TV viewer(s) and presents some research opportunities to cope with these issues. The paper further reports some overlooked factors that affect the recommendation process on a smart TV. A subjective study of viewers’ watching behavior on a smart TV is also presented for validating these factors. Results show that apart from all technological advancement, the viewers are enjoying smart TV as a passive, lean-back device, and mostly used for watching live channels and videos on the big screen. Furthermore, in most households, smart TV is enjoyed in groups as a shared device which creates hurdles in personalized recommendations. This is because predicting the group members and satisfying each member is still an issue. The findings of this study suggest that for precise and relevant recommendations on smart TVs, the recommender systems need to adapt to the varying watching behavior of viewer(s).

Highlights

  • The Smart television (TV) is a connected device that provides an extended functionality in delivering digital contents, such as live channels, movies, dramas, shows, and video on demand (VOD) services [1]

  • This paper highlighted some overlooked issues that affect the performance of the recommender system in the context of smart TV environment

  • Some future research guidelines and potential factors were presented for the improvement of existing recommender systems

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Summary

Introduction

The Smart television (TV) is a connected device that provides an extended functionality in delivering digital contents, such as live channels, movies, dramas, shows, and video on demand (VOD) services [1]. As compared to traditional TV systems, smart TV is a computing device [1] that can perform a variety of operations, including voice and gesture recognition. The life cycle of the smart TV is longer as compared to other smart devices, such as a smartphone, smartwatch, laptop, etc., [1,2]. This motivates enterprises and companies to develop technologically-advanced hardware and software for smart TVs. numerous issues are associated with smart TVs, which include security and privacy, complex user interfaces, interactivity issues, bloatware [3], the complex nature of browsing and searching, and personalized recommendation issues [1].

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