Computer Science – Social and Information Networks
Scientific paper
2011-12-19
Computer Science
Social and Information Networks
9 pages, 4 figures; for details see: http://www.maxdalmas.com
Scientific paper
Folksonomy is said to provide a democratic tagging system that reflects the opinions of the general public, but it is not a classification system and it is hard to make sense of. It would be necessary to share a representation of contexts by all the users to develop a social and collaborative matching. The solution could be to help the users to choose proper tags thanks to a dynamical driven system of folksonomy that could evolve during the time. This paper uses a cluster analysis to measure a new concept of a structure called "Folksodriven", which consists of tags, source and time. Many approaches include in their goals the use of folksonomy that could evolve during time to evaluate characteristics. This paper describes an alternative where the goal is to develop a weighted network of tags where link strengths are based on the frequencies of tag co-occurrence, and studied the weight distributions and connectivity correlations among nodes in this network. The paper proposes and analyzes the network structure of the Folksodriven tags thought as folksonomy tags suggestions for the user on a dataset built on chosen websites. It is observed that the hypergraphs of the Folksodriven are highly connected and that the relative path lengths are relatively low, facilitating thus the serendipitous discovery of interesting contents for the users. Then its characteristics, Clustering Coefficient, is compared with random networks. The goal of this paper is a useful analysis of the use of folksonomies on some well known and extensive web sites with real user involvement. The advantages of the new tagging method using folksonomy are on a new interesting method to be employed by a knowledge management system. *** This paper has been accepted to the International Conference on Social Computing and its Applications (SCA 2011) - Sydney Australia, 12-14 December 2011 ***
No associations
LandOfFree
Cluster Analysis for a Scale-Free Folksodriven Structure Network does not yet have a rating. At this time, there are no reviews or comments for this scientific paper.
If you have personal experience with Cluster Analysis for a Scale-Free Folksodriven Structure Network, we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Cluster Analysis for a Scale-Free Folksodriven Structure Network will most certainly appreciate the feedback.
Profile ID: LFWR-SCP-O-53548