Recommendation system

From Citizendium
Revision as of 18:25, 9 August 2010 by imported>Justin C. Klein Keane (Added ref tag for auto references)
Jump to navigation Jump to search
All unapproved Citizendium articles may contain errors of fact, bias, grammar etc. A version of an article is unapproved unless it is marked as citable with a dedicated green template at the top of the page, as in this version of the 'Biology' article. Citable articles are intended to be of reasonably high quality. The participants in the Citizendium project make no representations about the reliability of Citizendium articles or, generally, their suitability for any purpose.

Nuvola apps kbounce green.png
Nuvola apps kbounce green.png
This article is currently being developed as part of an Eduzendium student project. The course homepage can be found at CZ:Special_Topics_2010.
To provide students with experience in collaboration, you are warmly invited to join in here, or to leave comments on the discussion page. The anticipated date of course completion is 13 August 2010. One month after that date at the latest, this notice shall be removed.
Besides, many other Citizendium articles welcome your collaboration!


This article is developing and not approved.
Main Article
Discussion
Related Articles  [?]
Bibliography  [?]
External Links  [?]
Citable Version  [?]
 
This editable Main Article is under development and subject to a disclaimer.

A recommendation system is a software program which attempts to narrow down selections for users based on their expressed preferences, past behavior, or other data which can be mined about the user or other users with similar interests.

History

Recommendation systems are a spinoff from a system called "Usenet," a worldwide distributed discussion system originating at Duke University in the late 1970s. Usenet operated in a client/server format, allowing user input that was categorized into specific "newsgroups." In Usenet, the posts made by users are categorized into these newsgroups, which are then further divided into sub-categories, if needed.

Classification

The current generation of recommendation methods can be broadly classifed into the following five categories, based on the knowledge sources they use to make recommendations.:
1. Content-based recommendations.
2. Collaborative recommendations.
3. Knowledge-based recommendations.
4. demographic recommendations.
5. Hybrid recommendations.

General requirements for recommendation systems

To make a viable recommendation, three things are needed:
(i) background information - the information that the system has before the recommendation process begins.
(ii) input information - the information that a user must enter to the system in order to trigger a recommendation.
(iii) an algorithm that combines background and input information to arrive at its suggestions.

1.Content-based recommendation

In Content-based recommendation, the user receives recommendations based on his past preferences.

Advantages of Content-based recommendation.
Disadvantages of Content-based recommendation.

2.Collaborative RS

Collaborative recommendation systems recommend items that people with similar taste preferred in the past.

Advantages of Collaborative RS recommendation.
Disadvantages of Collaborative RS recommendation.

3.Knowledge-based recommendation

Utilizes the knowledge about users and products and reasons out what products meet the users requirements. Some of the systems being used at present effectively walk the user down a discrimination tree of product attributes whereas others have adopted a quantitative decision support tool for this task.

Advantages of Knowledge-based recommendation.
Disadvantages of Knowledge-based recommendation.

4.Demographic-based recommendation

Advantages of Demographic-based recommendation.
Disadvantages of Demographic-based recommendation.

5.Hybrid RS

Hybrid systems use a combined content-based and collaborative approach.

Advantages of Hybrid recommendation.
Disadvantages of Hybrid recommendation.

Issues

Future

Recent Press

Wired.com recently released a great article on Caterina Fake and her work with Hunch.com especially with respect to the cold start problem.[1]

References

1. Toward the Next Generation of Recommender Systems: A Survey of the State-of-the-Art and Possible Extensions