@inproceedings{HaHe06, abstract = {Tagging-based systems enable users to categorize web resources by means of tags (freely chosen keywords), in order to re-finding these resources later. Tagging is implicitly also a social indexing process, since users share their tags and resources, constructing a social tag index, so-called folksonomy. At the same time of tagging-based system, has been popularised an interface model for visual information retrieval known as Tag-Cloud. In this model, the most frequently used tags are displayed in alphabetical order. This paper presents a novel approach to Tag-Cloud�s tags selection, and proposes the use of clustering algorithms for visual layout, with the aim of improve browsing experience. The results suggest that presented approach reduces the semantic density of tag set, and improves the visual consistency of Tag-Cloud layout.}, author = {Hassan-Montero, Y. and Herrero-Solana, V.}, booktitle = {InScit2006: International Conference on Multidisciplinary Information Sciences and Technologies}, file = {HaHe06.pdf:folksonomies\\HaHe06.pdf:PDF}, interhash = {4458142370e3c6a4fe656af2f822a0dc}, intrahash = {06f68f9fe46dc6d0f646d932e428dec9}, misc = {comment = {proposes using k-clustering and some sort of semantic sorting to refactor tag cloud layout to improve browsing. Not clear on how they actually do it.}, priority = {0}, citeulike-article-id = {2045619}}, owner = {michael}, timestamp = {2008.01.14}, title = {Improving Tag-Clouds as Visual Information Retrieval Interfaces}, url = {http://nosolousabilidad.com/hassan/improving_tagclouds.pdf}, year = 2006 } @inproceedings{xin2008www, abstract = {The success and popularity of social network systems, such as del.icio.us, Facebook, MySpace, and YouTube, have generated many interesting and challenging problems to the research community. Among others, discovering social interests shared by groups of users is very important because it helps to connect people with common interests and encourages people to contribute and share more contents. The main challenge to solving this problem comes from the diffi- culty of detecting and representing the interest of the users. The existing approaches are all based on the online connections of users and so unable to identify the common interest of users who have no online connections. In this paper, we propose a novel social interest discovery approach based on user-generated tags. Our approach is motivated by the key observation that in a social network, human users tend to use descriptive tags to annotate the contents that they are interested in. Our analysis on a large amount of real-world traces reveals that in general, user-generated tags are consistent with the web content they are attached to, while more concise and closer to the understanding and judgments of human users about the content. Thus, patterns of frequent co-occurrences of user tags can be used to characterize and capture topics of user interests. We have developed an Internet Social Interest Discovery system, ISID, to discover the common user interests and cluster users and their saved URLs by different interest topics. Our evaluation shows that ISID can effectively cluster similar documents by interest topics and discover user communities with common interests no matter if they have any online connections.}, author = {Li, Xin and Guo, Lei and Zhao, Yihong E.}, booktitle = {Proceedings of the 17th International World Wide Web Conference}, interhash = {d7e6a5b8d215682b2a75add69c01de29}, intrahash = {42b4c94cff05ccef031235d661a7a77a}, pages = {675-684}, publisher = {ACM}, title = {Tag-based Social Interest Discovery}, url = {http://www2008.org/papers/pdf/p675-liA.pdf}, year = 2008 }