Recommender systems have been widely adopted to assist users in purchasing and increasing sales. Collaborative filtering techniques have been identified to be the most popular methods used for the recommendation system. One major drawback of these approaches is the data sparsity problem, which generally leads to low performances of the recommender systems. Recent development has shown that user review texts can be exploited to tackle the issue of data sparsity thereby improving the accuracy of the recommender systems. However, the problem with existing methods for the review-based recommender system is the use of handcrafted features which makes the system less accurate. Thus, to address the above issue, this study proposed collaborative re...
In recent years, increasingly large quantities of user reviews have been made available by several e...
499-502The exponential increase in the volume of online data has generated a confront of overburden ...
The 2018 World Wide Web Conference (WWW 2018), Lyon, France, 23-27 April 2018Collaborative filtering...
With the developments of e-commerce websites, user textual review has become an important source of ...
As there is a huge amount of information on the Internet, people have difficulty in sorting through ...
Item−item collaborative filtering is a sub-type of a recommender system that applies the items’ simi...
The usage of Internet applications, such as social networking and e-commerce is increasing exponenti...
Research regarding collaborative filtering recommenders has grown fast lately. However, little atten...
With the recent development of Natural Language Processing (NLP), it is possible to extract sentimen...
The widespread adoption of the Internet has led to an explosion in the number of choices available t...
These days, many recommender systems (RS) are utilized for solving information overload problem in a...
The first part of this thesis systematically reviews the trend of researches conducted from 2011 to ...
To address rating sparsity problem, various review-based recommender systems have been developed in ...
recommender system nowadays is used to deliver services and information to users. A recommender syst...
A recommender system aims to provide users with personalized online product or service recommendatio...
In recent years, increasingly large quantities of user reviews have been made available by several e...
499-502The exponential increase in the volume of online data has generated a confront of overburden ...
The 2018 World Wide Web Conference (WWW 2018), Lyon, France, 23-27 April 2018Collaborative filtering...
With the developments of e-commerce websites, user textual review has become an important source of ...
As there is a huge amount of information on the Internet, people have difficulty in sorting through ...
Item−item collaborative filtering is a sub-type of a recommender system that applies the items’ simi...
The usage of Internet applications, such as social networking and e-commerce is increasing exponenti...
Research regarding collaborative filtering recommenders has grown fast lately. However, little atten...
With the recent development of Natural Language Processing (NLP), it is possible to extract sentimen...
The widespread adoption of the Internet has led to an explosion in the number of choices available t...
These days, many recommender systems (RS) are utilized for solving information overload problem in a...
The first part of this thesis systematically reviews the trend of researches conducted from 2011 to ...
To address rating sparsity problem, various review-based recommender systems have been developed in ...
recommender system nowadays is used to deliver services and information to users. A recommender syst...
A recommender system aims to provide users with personalized online product or service recommendatio...
In recent years, increasingly large quantities of user reviews have been made available by several e...
499-502The exponential increase in the volume of online data has generated a confront of overburden ...
The 2018 World Wide Web Conference (WWW 2018), Lyon, France, 23-27 April 2018Collaborative filtering...