Most of the existing recommender systems are based only on the rating data, and they ignore other sources of information that might increase the quality of recommendations, such as textual reviews, or user and item characteristics. Moreover, the majority of those systems are applicable only on small datasets (with thousands of observations) and are unable to handle large datasets (with millions of observations). We propose a recommender algorithm that combines a rating modelling technique (i.e., Latent Factor Model) with a topic modelling method based on textual reviews (i.e., Latent Dirichlet Allocation), and we extend the algorithm such that it allows adding extra user- and item-specific information to the system. We evaluate the performa...
Personalized recommender systems, as effective approaches for alleviating information overload, have...
Although users ’ preference is semantically reflected in the free-form review texts, this wealth of ...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...
We propose fLDA, a novel matrix factorization method to predict ratings in recommender system applic...
In order to recommend products to users we must ultimately pre-dict how a user will respond to a new...
In order to recommend products to users we must ultimately pre-dict how a user will respond to a new...
Although users' preference is semantically reflected in the free-form review texts, this wealth of i...
Personalized rating prediction is an important research problem in recommender systems. Although the...
Abstract— The sparsity of user-product rating matrices poses a challenge for recommendation models b...
In order to solve the problem of data sparsity and credibility in collaborative filtering, a recomme...
An essential prerequisite of an effective recommender system is providing helpful information regar...
The first part of this thesis systematically reviews the trend of researches conducted from 2011 to ...
In the collaborative filtering algorithm, the matrix factorization method based on rating data has b...
The latent factor model (LFM) is a classic model in the field of personalized recommendation. Howeve...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...
Personalized recommender systems, as effective approaches for alleviating information overload, have...
Although users ’ preference is semantically reflected in the free-form review texts, this wealth of ...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...
We propose fLDA, a novel matrix factorization method to predict ratings in recommender system applic...
In order to recommend products to users we must ultimately pre-dict how a user will respond to a new...
In order to recommend products to users we must ultimately pre-dict how a user will respond to a new...
Although users' preference is semantically reflected in the free-form review texts, this wealth of i...
Personalized rating prediction is an important research problem in recommender systems. Although the...
Abstract— The sparsity of user-product rating matrices poses a challenge for recommendation models b...
In order to solve the problem of data sparsity and credibility in collaborative filtering, a recomme...
An essential prerequisite of an effective recommender system is providing helpful information regar...
The first part of this thesis systematically reviews the trend of researches conducted from 2011 to ...
In the collaborative filtering algorithm, the matrix factorization method based on rating data has b...
The latent factor model (LFM) is a classic model in the field of personalized recommendation. Howeve...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...
Personalized recommender systems, as effective approaches for alleviating information overload, have...
Although users ’ preference is semantically reflected in the free-form review texts, this wealth of ...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...