Recommender Systems and the Social Web: Leveraging Tagging Data for Recommender Systems

Overview

​There is an increasing demand for recommender systems due to the information overload users are facing on the Web. The goal of a recommender system is to provide personalized recommendations of products or services to users. With the advent of the Social Web, user-generated content has enriched the social dimension of the Web. As user-provided content data also tells us something about the user, one can learn the user’s individual preferences from the Social Web. This opens up completely new opportunities and challenges for recommender systems

... See more details below
Paperback (2013)
$79.29
BN.com price
(Save 11%)$89.99 List Price
Other sellers (Paperback)
  • All (4) from $67.07   
  • New (4) from $67.07   
Sending request ...

Overview

​There is an increasing demand for recommender systems due to the information overload users are facing on the Web. The goal of a recommender system is to provide personalized recommendations of products or services to users. With the advent of the Social Web, user-generated content has enriched the social dimension of the Web. As user-provided content data also tells us something about the user, one can learn the user’s individual preferences from the Social Web. This opens up completely new opportunities and challenges for recommender systems research. Fatih Gedikli deals with the question of how user-provided tagging data can be used to build better recommender systems. A tag recommender algorithm is proposed which recommends tags for users to annotate their favorite online resources. The author also proposes algorithms which exploit the user-provided tagging data and produce more accurate recommendations. On the basis of this idea, he shows how tags can be used to explain to the user the automatically generated recommendations in a clear and intuitively understandable form. With his book, Fatih Gedikli gives us an outlook on the next generation of recommendation systems in the Social Web sphere.

Read More Show Less

Product Details

  • ISBN-13: 9783658019471
  • Publisher: Springer Fachmedien Wiesbaden
  • Publication date: 4/30/2013
  • Edition description: 2013
  • Edition number: 1
  • Pages: 112
  • Product dimensions: 5.80 (w) x 8.10 (h) x 0.40 (d)

Meet the Author

Dr. Fatih Gedikli is a research assistant in computer science at TU Dortmund, Germany.

Read More Show Less

Table of Contents

Recommender Systems.- Social Tagging.- Algorithms.- Explanations.

Read More Show Less

Customer Reviews

Be the first to write a review
( 0 )
Rating Distribution

5 Star

(0)

4 Star

(0)

3 Star

(0)

2 Star

(0)

1 Star

(0)

    If you find inappropriate content, please report it to Barnes & Noble
    Why is this product inappropriate?
    Comments (optional)