Building Personalized and Non Personalized Recommendation Systems

Journal Title: International Journal on Computer Science and Engineering - Year 2016, Vol 8, Issue 7

Abstract

The contents of e-Commerce such as music, movies, books and electronics goods are necessary for a modern life style. But, it becomes difficult to find content according to users likes and users preference. An approach which produces desirable results to solve such the problem is to develop "Recommender System." The Recommender System of an e-Commerce site selects and suggests the contents to meet user's preference automatically using data sets of previous users stored in database. There can be two types of recommendations viz. Personalized and Non- Personalized recommendations. Personalized recommendation takes into consideration users’ previous history for rating and predicting items. On the other hand nonpersonalized recommendation systems recommend what is popular and relevant to all the users which can be a list of top-10 items for every new user. One of the most important techniques in the Recommender System is information filtering. The filtering techniques can be mainly classified into two categories viz. Collaborative Filtering and Content Based Filtering. Recommender system is a type of web intelligence technique that can make daily information filtering for users. This paper covers different techniques which can be used for creating personalized and non-personalized recommendations. This paper also explores the different packages of R i.e. Shiny which is used to create web applications and rmarkdown which is used to create dynamic documents.

Authors and Affiliations

SNEHA KHATWANI , DR. M. B. CHANDAK

Keywords

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  • EP ID EP112535
  • DOI -
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How To Cite

SNEHA KHATWANI, DR. M. B. CHANDAK (2016). Building Personalized and Non Personalized Recommendation Systems. International Journal on Computer Science and Engineering, 8(7), 206-214. https://europub.co.uk/articles/-A-112535