Accuracy improvement has been one of the most outstanding issues in the recommender systems research community. Recently, multi-criteria recommender systems that use multiple criteria ratings to estimate overall rating have been receiving considerable attention within the recommender systems research domain. This paper proposes a neural network model for improving the prediction accuracy of multi-criteria recommender systems. The neural network was trained using simulated annealing algorithms and integrated with two samples of single-rating recommender systems. The paper presents the experimental results for each of the two single-rating techniques together with their corresponding neural network-based models. To analyze the performance of ...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Neural collaborative filtering is the state of art field in the recommender systems area; it provide...
Abstract:- Most recommender systems use collaborative filtering or content-based methods to predict ...
Accuracy improvement has been one of the most outstanding issues in the recommender systems research...
Accuracy improvement is among the primary key research focuses in the area of recommender systems. T...
Accuracy improvement is among the primary key research focuses in the area of recommender systems. T...
Recommender systems are powerful online tools that help to overcome problems of information overload...
Whenever people have to choose seeing or buying an item among many others, they are based on their o...
Now a day’s recommendation systems are becoming more popular to recommend products for the individua...
Generating personalized recommendations is one of the most crucial aspects in Recommender Syst...
Collaborative filtering that relies on overall ratings has been widely accepted due to the ability t...
Recommender systems present a customized list of items based upon user or item characteristics with ...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Neural collaborative filtering is the state of art field in the recommender systems area; it provide...
Abstract:- Most recommender systems use collaborative filtering or content-based methods to predict ...
Accuracy improvement has been one of the most outstanding issues in the recommender systems research...
Accuracy improvement is among the primary key research focuses in the area of recommender systems. T...
Accuracy improvement is among the primary key research focuses in the area of recommender systems. T...
Recommender systems are powerful online tools that help to overcome problems of information overload...
Whenever people have to choose seeing or buying an item among many others, they are based on their o...
Now a day’s recommendation systems are becoming more popular to recommend products for the individua...
Generating personalized recommendations is one of the most crucial aspects in Recommender Syst...
Collaborative filtering that relies on overall ratings has been widely accepted due to the ability t...
Recommender systems present a customized list of items based upon user or item characteristics with ...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Neural collaborative filtering is the state of art field in the recommender systems area; it provide...
Abstract:- Most recommender systems use collaborative filtering or content-based methods to predict ...