Abstract:
Many E-commerce, Social Network, Entertainment sites uses recommendation system frequently to increase their revenue. There are various methods of recommending an item to a specific user. Collaborative filtering, content-based filtering are very popular. Matrix factorization is one of the most widely used method to predict the ratings of an item whether to recommend it to a user or not. But traditional matrix factorization only considers the user-item ratings matrix. It doesn’t consider any extra information about any user or any item. Sometimes the information associates with the item or user is very important to predict a rating of item by a particular user. To do so, I propose a model which will consider the textual information about items and users provided with the dataset. Thus it will be helpful to design a better and more accurate recommendation system which will give almost accurate prediction of a missing rating.