Personalized recommendation is a technical means to help users quickly and efficiently obtain interesting content from massive information. However, the traditional recommendation algorithm is difficult to solve the problem of sparse data and cold-start and does not make reasonable use of the user-item rating matrix. In this article, a personalized recommendation method based on deep belief network (DBN) and softmax regression is proposed to address the issues with traditional recommendation algorithms. In this method, the DBN is used to learn the deep representation of users and items, and the user-item rating matrix is maximized. Then softmax regression is used to learn multiple categories in the feature space to predict the probability o...
One of the primary issues of many websites is the suggestion of multiple choices to the users at the...
One of the primary issues of many websites is the suggestion of multiple choices to the users at the...
Most of the recommender systems are built for the content or item providers. For example, Netflix...
With the rapid development of network technology and entertainment creation, the types of movies hav...
Recommendation systems, the best way to deal with information overload, are widely utilized to provi...
Recommendation systems, the best way to deal with information overload, are widely utilized to provi...
Recommendation is an ideology that works as choice-based system for the end users. Users are recomme...
Over the past years, the internet has broadened the horizon of various domains to interact and share...
With the development of the network, society has moved into the data era, and the amount of data is ...
With the development of the network, society has moved into the data era, and the amount of data is ...
These days, many recommender systems (RS) are utilized for solving information overload problem in a...
With the development of the entertainment and film industry, people have more chances to access movi...
Movie recommendation systems are becoming increasingly popular, with many businesses looking to leve...
To provide more accurate and stable recommendations, it is necessary to combine display information ...
One of the primary issues of many websites is the suggestion of multiple choices to the users at the...
One of the primary issues of many websites is the suggestion of multiple choices to the users at the...
One of the primary issues of many websites is the suggestion of multiple choices to the users at the...
Most of the recommender systems are built for the content or item providers. For example, Netflix...
With the rapid development of network technology and entertainment creation, the types of movies hav...
Recommendation systems, the best way to deal with information overload, are widely utilized to provi...
Recommendation systems, the best way to deal with information overload, are widely utilized to provi...
Recommendation is an ideology that works as choice-based system for the end users. Users are recomme...
Over the past years, the internet has broadened the horizon of various domains to interact and share...
With the development of the network, society has moved into the data era, and the amount of data is ...
With the development of the network, society has moved into the data era, and the amount of data is ...
These days, many recommender systems (RS) are utilized for solving information overload problem in a...
With the development of the entertainment and film industry, people have more chances to access movi...
Movie recommendation systems are becoming increasingly popular, with many businesses looking to leve...
To provide more accurate and stable recommendations, it is necessary to combine display information ...
One of the primary issues of many websites is the suggestion of multiple choices to the users at the...
One of the primary issues of many websites is the suggestion of multiple choices to the users at the...
One of the primary issues of many websites is the suggestion of multiple choices to the users at the...
Most of the recommender systems are built for the content or item providers. For example, Netflix...