Recommender systems have recently attracted many researchers in the deep learning community. The state-of-the-art deep neural network models used in recommender systems are multilayer perceptron and deep autoencoder (DAE). In this work, we focus on DAE model due to its superior capability to reconstruct the inputs, which works well for recommender systems. Existing works have similar implementations of DAE but the parameter settings are vastly different for similar datasets. In this work, we have built a flexible DAE model, named FlexEncoder that uses configurable parameters and unique features to analyse the parameter influences on the prediction accuracy of recommender systems. Extensive evaluation on the MovieLens datasets are conducted,...
Recommender systems have been existing accompanying by web development, driving personalized experie...
Research regarding collaborative filtering recommenders has grown fast lately. However, little atten...
Since Wide and Deep Learning for Recommender Systems appeared in 2016, multiple architecture models ...
Recommender systems have recently attracted many researchers in the deep learning community. The sta...
Recommender systems present a customized list of items based upon user or item characteristics with ...
The growth of data in recent years has motivated the emergence of deep learning in many Computer S...
In this modern world of ever-increasing one-click purchases, movie bookings, music, health- care, fa...
With the proliferation of online information, recommender systems have shown to be an effective meth...
These days, many recommender systems (RS) are utilized for solving information overload problem in a...
The usage of Internet applications, such as social networking and e-commerce is increasing exponenti...
The widespread adoption of the Internet has led to an explosion in the number of choices available t...
Recommender systems, predictive models that provide lists of personalized suggestions, have become i...
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
International audienceWe introduce a deep latent recommender system named deepLTRS in order to provi...
Cognitive services provide artificial intelligence (AI) technology for application developers, who a...
Recommender systems have been existing accompanying by web development, driving personalized experie...
Research regarding collaborative filtering recommenders has grown fast lately. However, little atten...
Since Wide and Deep Learning for Recommender Systems appeared in 2016, multiple architecture models ...
Recommender systems have recently attracted many researchers in the deep learning community. The sta...
Recommender systems present a customized list of items based upon user or item characteristics with ...
The growth of data in recent years has motivated the emergence of deep learning in many Computer S...
In this modern world of ever-increasing one-click purchases, movie bookings, music, health- care, fa...
With the proliferation of online information, recommender systems have shown to be an effective meth...
These days, many recommender systems (RS) are utilized for solving information overload problem in a...
The usage of Internet applications, such as social networking and e-commerce is increasing exponenti...
The widespread adoption of the Internet has led to an explosion in the number of choices available t...
Recommender systems, predictive models that provide lists of personalized suggestions, have become i...
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
International audienceWe introduce a deep latent recommender system named deepLTRS in order to provi...
Cognitive services provide artificial intelligence (AI) technology for application developers, who a...
Recommender systems have been existing accompanying by web development, driving personalized experie...
Research regarding collaborative filtering recommenders has grown fast lately. However, little atten...
Since Wide and Deep Learning for Recommender Systems appeared in 2016, multiple architecture models ...