The aim of this master thesis is to investigate a set of context-aware recommendation approaches that rely on matrix factorization. In particular, we are interested in comparing not only the approaches as a whole, but, more importantly, their single components. For instance, many of those approaches in principle rely on Single Value Decomposition for computing a lower-dimensional representation of the users, items and ratings given within a recommender system. However, the SVD is e.g., varied slightly or the utilized modules (e.g., for computing the features of items to be recommended or for ranking the items) vary. Therefore, we are interested in decomposing the different recommendation approaches, analyzing and comparing them in detail an...
Recommender systems research has experienced different stages such as from user preference understan...
This thesis focuses on large scale optimization problems and especially on matrix factorization meth...
Although users' preference is semantically reflected in the free-form review texts, this wealth of i...
ABSTRACT Matrix factorization (MF) has evolved as one of the better practice to handle sparse data i...
Recommender Systems have become a crucial tool to serve personalized content and to promote online p...
Cette thèse s'articule autour des problèmes d'optimisation à grande échelle, et plus particulièremen...
Recommender systems aim to personalize the experience of user by suggesting items to the user based ...
This thesis is a comprehensive study of matrix factorization methods used in recommender systems. We...
The aim of this project is to develop an approach using machine learning and matrix factorization to...
Abstract— The sparsity of user-product rating matrices poses a challenge for recommendation models b...
open access articleCollaborative Filtering Recommender Systems predict user preferences for ...
AbstractRecommendation Systems (RSs) are becoming tools of choice to select the online information r...
On internet today, an overabundance of information can be accessed, making it difficult for users to...
Nowadays, recommendation systems are used successfully to provide items (example: movies, music, boo...
This thesis explores how different recommendation models based on machine learning can be implemente...
Recommender systems research has experienced different stages such as from user preference understan...
This thesis focuses on large scale optimization problems and especially on matrix factorization meth...
Although users' preference is semantically reflected in the free-form review texts, this wealth of i...
ABSTRACT Matrix factorization (MF) has evolved as one of the better practice to handle sparse data i...
Recommender Systems have become a crucial tool to serve personalized content and to promote online p...
Cette thèse s'articule autour des problèmes d'optimisation à grande échelle, et plus particulièremen...
Recommender systems aim to personalize the experience of user by suggesting items to the user based ...
This thesis is a comprehensive study of matrix factorization methods used in recommender systems. We...
The aim of this project is to develop an approach using machine learning and matrix factorization to...
Abstract— The sparsity of user-product rating matrices poses a challenge for recommendation models b...
open access articleCollaborative Filtering Recommender Systems predict user preferences for ...
AbstractRecommendation Systems (RSs) are becoming tools of choice to select the online information r...
On internet today, an overabundance of information can be accessed, making it difficult for users to...
Nowadays, recommendation systems are used successfully to provide items (example: movies, music, boo...
This thesis explores how different recommendation models based on machine learning can be implemente...
Recommender systems research has experienced different stages such as from user preference understan...
This thesis focuses on large scale optimization problems and especially on matrix factorization meth...
Although users' preference is semantically reflected in the free-form review texts, this wealth of i...