Aiming at the problem that the single model of the traditional recommendation system cannot accurately capture user preferences, this paper proposes a hybrid movie recommendation system and optimization method based on weighted classification and user collaborative filtering algorithm. The sparse linear model is used as the basic recommendation model, and the local recommendation model is trained based on user clustering, and the top-N personalized recommendation of movies is realized by fusion with the weighted classification model. According to the item category preference, the scoring matrix is converted into a low-dimensional, dense item category preference matrix, multiple cluster centers are obtained, the distance between the target u...
In the current era, a rapid increase in data volume produces redundant information on the internet. ...
Tez (Yüksek Lisans) -- İstanbul Teknik Üniversitesi, Bilişim Enstitüsü, 2012Thesis (M.Sc.) -- İstanb...
In the spread of information, how to quickly find one’s favorite movie in a large number of movies b...
With the explosively growing of the technologies and services of the Internet, the information data ...
On the subject of broadcasting the information, finding someone’s favorite book or movie in a sea of...
Recommender systems are programs which attempt to predict items that a user may be interest in. Reco...
In this era of big data, the amount of video content has dramatically increased with an exponential ...
A recommendation system employs a variety of algorithms to provide users with recommendations of any...
The paper reports a study into recommendation algorithms and determination of their advantages and d...
With the advancements of big data, recommendation systems have become extremely useful in wide appli...
We propose an online hybrid recommender strategy named content-boosted collaborative filtering with ...
The World Wide Web information grows explosively in the Internet and people encounter problem to pic...
Recommender system applies discoverytechnique to support online users find desiredproducts and servi...
Recommendation system is an assistive model for users with the intent of suggesting a set of new ite...
Movie recommender systems are meant to give suggestions to the users based on the features they love...
In the current era, a rapid increase in data volume produces redundant information on the internet. ...
Tez (Yüksek Lisans) -- İstanbul Teknik Üniversitesi, Bilişim Enstitüsü, 2012Thesis (M.Sc.) -- İstanb...
In the spread of information, how to quickly find one’s favorite movie in a large number of movies b...
With the explosively growing of the technologies and services of the Internet, the information data ...
On the subject of broadcasting the information, finding someone’s favorite book or movie in a sea of...
Recommender systems are programs which attempt to predict items that a user may be interest in. Reco...
In this era of big data, the amount of video content has dramatically increased with an exponential ...
A recommendation system employs a variety of algorithms to provide users with recommendations of any...
The paper reports a study into recommendation algorithms and determination of their advantages and d...
With the advancements of big data, recommendation systems have become extremely useful in wide appli...
We propose an online hybrid recommender strategy named content-boosted collaborative filtering with ...
The World Wide Web information grows explosively in the Internet and people encounter problem to pic...
Recommender system applies discoverytechnique to support online users find desiredproducts and servi...
Recommendation system is an assistive model for users with the intent of suggesting a set of new ite...
Movie recommender systems are meant to give suggestions to the users based on the features they love...
In the current era, a rapid increase in data volume produces redundant information on the internet. ...
Tez (Yüksek Lisans) -- İstanbul Teknik Üniversitesi, Bilişim Enstitüsü, 2012Thesis (M.Sc.) -- İstanb...
In the spread of information, how to quickly find one’s favorite movie in a large number of movies b...