A significant remaining challenge for existing recommender systems is that users may not trust recommender systems for either inaccurate recommendation or lack of explanation. Thus, it becomes critical to embrace a trustworthy recommender system. This survey provides a systematic summary of three categories of trust issues in recommender systems: social-aware recommender systems, which leverage users’ social trust relationships; robust recommender systems, which filter untruthful information, noises and enhance attack resistance; and explainable recommender systems, which provide explanations of the recommended items. We focus on the work based on deep learning techniques, which is an emerging area in the recommendation research
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Research regarding collaborative filtering recommenders has grown fast lately. However, little atten...
With the proliferation of online information, recommender systems have shown to be an effective meth...
information online, which results into an exponential growth of world wide web data. This leads to t...
In this article, we describe deep learning-based recommender systems. First, we introduce deep learn...
This PhD thesis addresses the following problem: exploiting of trust information in order to enhance...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...
The growth of data in recent years has motivated the emergence of deep learning in many Computer S...
Information overload is a new challenge in e-commerce sites. The problem refers to the fast growing ...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...
This PhD thesis addresses the following problem: exploiting of trust information in order to enhance...
© 2016 IEEE. With the emergence of online social networks, the social network-based recommendation a...
Recommender Systems (RS) have emerged as an important response to the so-called information overload...
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Research regarding collaborative filtering recommenders has grown fast lately. However, little atten...
With the proliferation of online information, recommender systems have shown to be an effective meth...
information online, which results into an exponential growth of world wide web data. This leads to t...
In this article, we describe deep learning-based recommender systems. First, we introduce deep learn...
This PhD thesis addresses the following problem: exploiting of trust information in order to enhance...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...
The growth of data in recent years has motivated the emergence of deep learning in many Computer S...
Information overload is a new challenge in e-commerce sites. The problem refers to the fast growing ...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...
This PhD thesis addresses the following problem: exploiting of trust information in order to enhance...
© 2016 IEEE. With the emergence of online social networks, the social network-based recommendation a...
Recommender Systems (RS) have emerged as an important response to the so-called information overload...
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Research regarding collaborative filtering recommenders has grown fast lately. However, little atten...