Predictability Issues in Recommender Systems Based on Web Usage Behavior towards Robust Collaborative Filtering

α
Dr. Arunesh
Dr. Arunesh Associate Professor of Computer Science
σ
Gopinath Ganapathy
Gopinath Ganapathy
α Bharathidasan University

Send Message

To: Author

Predictability Issues in Recommender Systems Based on Web Usage Behavior towards Robust Collaborative Filtering

Article Fingerprint

ReserarchID

N727Z

Predictability Issues in Recommender Systems Based on Web Usage Behavior towards Robust Collaborative Filtering Banner

AI TAKEAWAY

Connecting with the Eternal Ground
  • English
  • Afrikaans
  • Albanian
  • Amharic
  • Arabic
  • Armenian
  • Azerbaijani
  • Basque
  • Belarusian
  • Bengali
  • Bosnian
  • Bulgarian
  • Catalan
  • Cebuano
  • Chichewa
  • Chinese (Simplified)
  • Chinese (Traditional)
  • Corsican
  • Croatian
  • Czech
  • Danish
  • Dutch
  • Esperanto
  • Estonian
  • Filipino
  • Finnish
  • French
  • Frisian
  • Galician
  • Georgian
  • German
  • Greek
  • Gujarati
  • Haitian Creole
  • Hausa
  • Hawaiian
  • Hebrew
  • Hindi
  • Hmong
  • Hungarian
  • Icelandic
  • Igbo
  • Indonesian
  • Irish
  • Italian
  • Japanese
  • Javanese
  • Kannada
  • Kazakh
  • Khmer
  • Korean
  • Kurdish (Kurmanji)
  • Kyrgyz
  • Lao
  • Latin
  • Latvian
  • Lithuanian
  • Luxembourgish
  • Macedonian
  • Malagasy
  • Malay
  • Malayalam
  • Maltese
  • Maori
  • Marathi
  • Mongolian
  • Myanmar (Burmese)
  • Nepali
  • Norwegian
  • Pashto
  • Persian
  • Polish
  • Portuguese
  • Punjabi
  • Romanian
  • Russian
  • Samoan
  • Scots Gaelic
  • Serbian
  • Sesotho
  • Shona
  • Sindhi
  • Sinhala
  • Slovak
  • Slovenian
  • Somali
  • Spanish
  • Sundanese
  • Swahili
  • Swedish
  • Tajik
  • Tamil
  • Telugu
  • Thai
  • Turkish
  • Ukrainian
  • Urdu
  • Uzbek
  • Vietnamese
  • Welsh
  • Xhosa
  • Yiddish
  • Yoruba
  • Zulu

References

20 Cites in Article
  1. S Ray,A Mahanti Filler Items Strategies for Effective Shilling Attacks.
  2. Bhaskar Mehta,Wolfgang Nejdl (2008). Attack resistant collaborative filtering.
  3. B Mobasher,R Bruke,R Bhaumik,C Williams (2007). Toward Trustworthy Recommender Systems: An Analysis of Attack Models and Algorithm Robustness.
  4. S Zhang,A Chakrabarti,J Ford,F Makedon (2006). Attack Detection in Time Series for Recommender Systems.
  5. Paul-Alexandru Chirita,Wolfgang Nejdl,Cristian Zamfir (2005). Preventing shilling attacks in online recommender systems.
  6. P Resnick,N Lacovou,M Suchak,J Bergstrom,Riedl (1994). GroupLens: A open architecture for Collaborative filtering of netnews.
  7. M O'mahony,N Hurley,G Silvestre (2005). Recommender Systems: Attack Types and Strategies.
  8. Sean Mcnee,John Riedl,Joseph Konstan (2006). Being accurate is not enough.
  9. Shyong Lam,John Riedl (2004). Shilling recommender systems for fun and profit.
  10. V Krishnan,P Narayanashetty,M Nathan,R Davies,J Konstan (2008). Who Predicts Better?-Results from an Online Study Comparing Humans and an Online recommender System.
  11. Jennifer Golbeck,Bijan Parisa,James Hendler (2005). Trust Networks on the Semantic Web.
  12. G Ganapathy,K Arunesh (2009). Recommendation System Framework based on Web Usage Mining IJAM.
  13. G Ganapathy,K Arunesh (2010). Feature Analysis of Recommender Techniques Employed in the recommender engines.
  14. C Williams,B Mobasher (2007). Defending recommender systems : detection of profile injection attacks.
  15. Benjamin Van Roy,Xiang Yan (2010). Manipulation Robustness of Collaborative Filtering.
  16. Thomas Hofmann (2004). Latent semantic models for collaborative filtering.
  17. Jj,B Sandvig,R Mobasher,Burke (2007). Robustness of Collaborative Recommendation Based On Association Rule Mining.
  18. Bhaskar Mehta,Wolfgang Nejdl (2007). Unsupervised strategies for shilling detection and robust collaborative filtering.
  19. B Mobasher,R Burke,J Sandvig Model-Based Collaborative as a Defense Against Profile Injection Attacks.
  20. M Mahony,N Hurley,G Silvestre Recommender Systems: Attack Types and Strategies.

Funding

No external funding was declared for this work.

Conflict of Interest

The authors declare no conflict of interest.

Ethical Approval

No ethics committee approval was required for this article type.

Data Availability

Not applicable for this article.

How to Cite This Article

Dr. Arunesh. 1970. \u201cPredictability Issues in Recommender Systems Based on Web Usage Behavior towards Robust Collaborative Filtering\u201d. Unknown Journal GJCST Volume 11 (GJCST Volume 11 Issue 11): .

Download Citation

Issue Cover
GJCST Volume 11 Issue 11
Pg. 29- 35
Journal Specifications
Keywords
Version of record

v1.2

Issue date

July 6, 2011

Language
en
Experiance in AR

Explore published articles in an immersive Augmented Reality environment. Our platform converts research papers into interactive 3D books, allowing readers to view and interact with content using AR and VR compatible devices.

Read in 3D

Your published article is automatically converted into a realistic 3D book. Flip through pages and read research papers in a more engaging and interactive format.

Article Matrices
Total Views: 20687
Total Downloads: 10767
2026 Trends
Related Research

Published Article

Our website is actively being updated, and changes may occur frequently. Please clear your browser cache if needed. For feedback or error reporting, please email [email protected]

Request Access

Please fill out the form below to request access to this research paper. Your request will be reviewed by the editorial or author team.
X

Quote and Order Details

Contact Person

Invoice Address

Notes or Comments

This is the heading

Lorem ipsum dolor sit amet, consectetur adipiscing elit. Ut elit tellus, luctus nec ullamcorper mattis, pulvinar dapibus leo.

High-quality academic research articles on global topics and journals.

Predictability Issues in Recommender Systems Based on Web Usage Behavior towards Robust Collaborative Filtering

Dr. Arunesh
Dr. Arunesh Bharathidasan University
Gopinath Ganapathy
Gopinath Ganapathy

Research Journals