期刊名称:Lecture Notes in Engineering and Computer Science
印刷版ISSN:2078-0958
电子版ISSN:2078-0966
出版年度:2018
卷号:2231&2232
页码:143-148
出版社:Newswood and International Association of Engineers
摘要:Astounding growth of E-Commerce in the
business arena, is the outcome of boundless exploration in the
field of Recommender Systems (RS). RS’s have increased
customer engagement of Video Streaming applications by 23%
and have a market of over 450 billion dollars. The immense
growth of products as well as customers poses crucial
challenges to RS. Millions of customers and products exist in
the E-Commerce scenario and are generating high quality
recommendations. To perform several recommendations in a
fraction of second is a demanding and compelling task. The
aim of this paper is to analyze various techniques that fetch
personalized recommendations in e-commerce systems which
are web based. Evidently, three techniques could be used to
calculate the prediction values for a given set of users and
items. Collaborative filtering technique, content based filtering
technique and a hybrid approach persists in the realm of
recommendations. For a large user base consisting of several
transactions, analysis of RS will be outcome of thorough
scrutiny of memory and model based algorithms. The
dimensionality of the data is the key for analysis of the
required and relevant data for the user’s context. Ultimately
the best suited algorithm for the given data set is found to give
recommendations to the user through an interactive webbased
user interface. Finally, a convenient evaluation
technique is used to check the accuracy of the
recommendations generated with the algorithms.