Article ID Journal Published Year Pages File Type
388546 Expert Systems with Applications 2011 11 Pages PDF
Abstract

Social tagging is widely practiced in the Web 2.0 era. Users can annotate useful or interesting Web resources with keywords for future reference. Social tagging also facilitates sharing of Web resources. This study reviews the chronological variation of social tagging data and tracks social trends by clustering tag time series. The data corpus in this study is collected from Hemidemi.com. A tag is represented in a time series form according to its annotating Web pages. Then time series clustering is applied to group tag time series with similar patterns and trends in the same time period. Finally, the similarities between clusters in different time periods are calculated to determine which clusters have similar themes, and the trend variation of a specific tag in different time periods is also analyzed. The evaluation shows the recommendation accuracy of the proposed approach is about 75%. Besides, the case discussion also proves the proposed approach can track the social trends.

► Review the chronological variation of social tagging. ► Tag time series clustering. ► 75% recommendation accuracy. ► Real world case discussion.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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