We propose a Joint Neural Collaborative Filtering (J-NCF) method for recommender systems. The J-NCF model applies a joint neural network that couples deep feature learning and deep interaction modeling with a rating matrix. Deep feature learning extracts feature representations of users and items with a deep learning architecture based on a user-item rating matrix. Deep interaction modeling captures non-linear user-item interactions with a deep neural network using the feature representations generated by the deep feature learning process as input. J-NCF enables the deep feature learning and deep interaction modeling processes to optimize each other through joint training, which leads to improved recommendation performance. In addition, we ...
Recommender systems help people make decisions. They are particularly useful for product recommendat...
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
Collaborative filtering (CF) approaches, which provide recommendations based on ratings or purchase ...
The usage of Internet applications, such as social networking and e-commerce is increasing exponenti...
According to the expansion of users and the variety of products in the World Wide Web, users have be...
Collaborative filtering (CF) is a widely used approach in recommender systems to solve many real-wor...
Recommender systems use advanced analytic and learning techniques to select relevant information fro...
Neural collaborative filtering is the state of art field in the recommender systems area; it provide...
As one of the most popular recommendation algorithms, collaborative filtering (CF) suggests items fa...
Deep neural networks have shown promise in collaborative filtering (CF). However, existing neural ap...
Item−item collaborative filtering is a sub-type of a recommender system that applies the items’ simi...
Abstract:- Most recommender systems use collaborative filtering or content-based methods to predict ...
In this thesis, several Collaborative Filtering (CF) approaches with latent variable methods were st...
The widespread adoption of the Internet has led to an explosion in the number of choices available t...
Recommender systems have become indispensable for online services since they alleviate the informati...
Recommender systems help people make decisions. They are particularly useful for product recommendat...
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
Collaborative filtering (CF) approaches, which provide recommendations based on ratings or purchase ...
The usage of Internet applications, such as social networking and e-commerce is increasing exponenti...
According to the expansion of users and the variety of products in the World Wide Web, users have be...
Collaborative filtering (CF) is a widely used approach in recommender systems to solve many real-wor...
Recommender systems use advanced analytic and learning techniques to select relevant information fro...
Neural collaborative filtering is the state of art field in the recommender systems area; it provide...
As one of the most popular recommendation algorithms, collaborative filtering (CF) suggests items fa...
Deep neural networks have shown promise in collaborative filtering (CF). However, existing neural ap...
Item−item collaborative filtering is a sub-type of a recommender system that applies the items’ simi...
Abstract:- Most recommender systems use collaborative filtering or content-based methods to predict ...
In this thesis, several Collaborative Filtering (CF) approaches with latent variable methods were st...
The widespread adoption of the Internet has led to an explosion in the number of choices available t...
Recommender systems have become indispensable for online services since they alleviate the informati...
Recommender systems help people make decisions. They are particularly useful for product recommendat...
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
Collaborative filtering (CF) approaches, which provide recommendations based on ratings or purchase ...