• Register
  • Login

European Journal of Molecular & Clinical Medicine

  • Home
  • Browse
    • Current Issue
    • By Issue
    • By Subject
    • Keyword Index
    • Author Index
    • Indexing Databases XML
  • Journal Info
    • About Journal
    • Aims and Scope
    • Editorial Board
    • Publication Ethics
    • Indexing and Abstracting
    • Peer Review Process
    • News
  • Guide for Authors
  • Submit Manuscript
  • Contact Us
Advanced Search

Notice

As part of Open Journals’ initiatives, we create website for scholarly open access journals. If you are responsible for this journal and would like to know more about how to use the editorial system, please visit our website at https://ejournalplus.com or
send us an email to info@ejournalplus.com

We will contact you soon

  1. Home
  2. Volume 10, Issue 2
  3. Author

Online ISSN: 2515-8260

Volume10, Issue2

Mechanism For Recommending Web Series

    Dr.M.Rajaiah, Mr.A.Venkateswarlu,Mr.T.Sai Sudeep, Mr.T.Harish, Mr.S.Sumanth, Mr.Sk.Wahed Ali .

European Journal of Molecular & Clinical Medicine, 2023, Volume 10, Issue 2, Pages 703-719

  • Show Article
  • Download
  • Cite
  • Statistics
  • Share

Abstract

Many businesses today aim to provide useful product suggestions to online users in order to increase their consumption on websites. People usually choose or buy a new product based on the recommendations of friends, comparisons of similar products, or feedback from other users. A recommender system must be implemented in order for all of these tasks to be completed automatically. Recommender systems are tools that provide suggestions that best suit the client's needs, even if the client is unaware of it.Personalized content offers are based on past behaviour, and they entice customers to return to the website. A web series recommendation mechanism for Netflix/Prime/Disney plus Hotstar will be built in this paper. The dataset used in this study contains over 5 K web series and 500 K+ customers. Popularity, Collaborative Filtering, Content-based Filtering, and Hybrid Approaches are the four main types of recommender algorithms. This paper will introduce all of them. We will choose the algorithms that best fit the data, implement them, and compare them
Keywords:
    Content Based Filtering Popularity Based filtering Hybrid Approaches Collaborative Filtering
  • PDF (499 K)
  • XML
(2023). Mechanism For Recommending Web Series. European Journal of Molecular & Clinical Medicine, 10(2), 703-719.
Dr.M.Rajaiah, Mr.A.Venkateswarlu,Mr.T.Sai Sudeep, Mr.T.Harish, Mr.S.Sumanth, Mr.Sk.Wahed Ali .. "Mechanism For Recommending Web Series". European Journal of Molecular & Clinical Medicine, 10, 2, 2023, 703-719.
(2023). 'Mechanism For Recommending Web Series', European Journal of Molecular & Clinical Medicine, 10(2), pp. 703-719.
Mechanism For Recommending Web Series. European Journal of Molecular & Clinical Medicine, 2023; 10(2): 703-719.
  • RIS
  • EndNote
  • BibTeX
  • APA
  • MLA
  • Harvard
  • Vancouver
  • Article View: 17
  • PDF Download: 52
  • LinkedIn
  • Twitter
  • Facebook
  • Google
  • Telegram
Journal Information

Publisher:

Email:  editor.ejmcm21@gmail.com

  • Home
  • Glossary
  • News
  • Aims and Scope
  • Privacy Policy
  • Sitemap

 

For Special Issue Proposal : editor.ejmcm21@gmail.com

This journal is licensed under a Creative Commons Attribution 4.0 International (CC-BY 4.0)

Powered by eJournalPlus