The accuracy of behavioral interactive features is a key factor for improving the performance of rating prediction. In order to deeply explore the potential rules of user behavior and enhance the accurate representation of interactive features, this paper proposes two rating prediction models, based on the spatial dimension and distance measurement (SDDM), under the premise of taking the mean value of the user behavior history as a user feature, and obtaining the interactive features of an item and a user by calculating the distance between them in each feature dimension. In the proposed SDDM-Var and SDDM-PCC models, the variance and the Pearson correlation coefficient (PCC) are respectively utilized to evaluate the user’s attention ...
Background: Recommendations engines are extremely common and utilized by many tech giants like Faceb...
This thesis addresses the new item problem in recommender systems, which pertains to the challenges ...
There are inherent problems with evaluating the accuracy of recommender systems. Commonly-used metri...
The accuracy of behavioral interactive features is a key factor for improving the performance of rat...
he accuracy of behavioral interactive features is a key factor for improving the performance of rati...
In this work we investigate the problem of making personalized recommendations by creating models fo...
Collaborative filtering that relies on overall ratings has been widely accepted due to the ability t...
International audienceRegarding the huge amount of products, sites, information, etc., finding the a...
The aim of this project is to develop an approach using machine learning and matrix factorization to...
With the boom of social media, it is a very popular trend for people to share what they are doing wi...
With the boom of social media, it is a very popular trend for people to share what they are doing wi...
The social media has made the world a global world and we, in addition to, as part of physical socie...
The aim of this work is to explore recommender systems for prediction user's future film ratings acc...
Recommender systems have become extremely popular in recent years since they can provide personalize...
There is a significant amount of ongoing research in the collaborative filtering field, with much of...
Background: Recommendations engines are extremely common and utilized by many tech giants like Faceb...
This thesis addresses the new item problem in recommender systems, which pertains to the challenges ...
There are inherent problems with evaluating the accuracy of recommender systems. Commonly-used metri...
The accuracy of behavioral interactive features is a key factor for improving the performance of rat...
he accuracy of behavioral interactive features is a key factor for improving the performance of rati...
In this work we investigate the problem of making personalized recommendations by creating models fo...
Collaborative filtering that relies on overall ratings has been widely accepted due to the ability t...
International audienceRegarding the huge amount of products, sites, information, etc., finding the a...
The aim of this project is to develop an approach using machine learning and matrix factorization to...
With the boom of social media, it is a very popular trend for people to share what they are doing wi...
With the boom of social media, it is a very popular trend for people to share what they are doing wi...
The social media has made the world a global world and we, in addition to, as part of physical socie...
The aim of this work is to explore recommender systems for prediction user's future film ratings acc...
Recommender systems have become extremely popular in recent years since they can provide personalize...
There is a significant amount of ongoing research in the collaborative filtering field, with much of...
Background: Recommendations engines are extremely common and utilized by many tech giants like Faceb...
This thesis addresses the new item problem in recommender systems, which pertains to the challenges ...
There are inherent problems with evaluating the accuracy of recommender systems. Commonly-used metri...