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Canonical Trends: Detecting Trend Setters in Web Data
Published 27 Jun 2012 in cs.LG, cs.SI, and stat.ML | (1206.6388v1)
Abstract: Much information available on the web is copied, reused or rephrased. The phenomenon that multiple web sources pick up certain information is often called trend. A central problem in the context of web data mining is to detect those web sources that are first to publish information which will give rise to a trend. We present a simple and efficient method for finding trends dominating a pool of web sources and identifying those web sources that publish the information relevant to a trend before others. We validate our approach on real data collected from influential technology news feeds.
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