User Modeling Combining Access Logs, Page Content and Semantics

03/25/2011
by   Blaz Fortuna, et al.
0

The paper proposes an approach to modeling users of large Web sites based on combining different data sources: access logs and content of the accessed pages are combined with semantic information about the Web pages, the users and the accesses of the users to the Web site. The assumption is that we are dealing with a large Web site providing content to a large number of users accessing the site. The proposed approach represents each user by a set of features derived from the different data sources, where some feature values may be missing for some users. It further enables user modeling based on the provided characteristics of the targeted user subset. The approach is evaluated on real-world data where we compare performance of the automatic assignment of a user to a predefined user segment when different data sources are used to represent the users.

READ FULL TEXT
research
03/26/2018

Secure Web Access Control Algorithm

The paper presents a flexible and efficient method to secure the access ...
research
06/12/2011

Evolutionary Biclustering of Clickstream Data

Biclustering is a two way clustering approach involving simultaneous clu...
research
04/27/2018

Extracting Parallel Paragraphs from Common Crawl

Most of the current methods for mining parallel texts from the web assum...
research
08/27/2022

Robots Still Outnumber Humans in Web Archives, But Less Than Before

To identify robots and humans and analyze their respective access patter...
research
09/01/2015

GR2RSS: Publishing Linked Open Commerce Data as RSS and Atom Feeds

The integration of Linked Open Data (LOD) content in Web pages is a chal...
research
07/02/2014

Semantic Integration & Single-Site Opening of Multiple Governmental Data Sources

In many cases, government data is still "locked" in several "data silos"...
research
10/10/2018

Redirect2Own: Protecting the Intellectual Property of User-uploaded Content through Off-site Indirect Access

Social networking services have attracted millions of users, including i...

Please sign up or login with your details

Forgot password? Click here to reset