Publication | Closed Access
Analyzing feature trajectories for event detection
209
Citations
15
References
2007
Year
Unknown Venue
EngineeringMachine LearningEvent CorrelationCorpus LinguisticsText MiningNatural Language ProcessingImage AnalysisData ScienceData MiningPattern RecognitionComplex Event ProcessingDocument ClassificationFeature TrajectoriesDocument ClusteringEvent ProcessingMachine VisionWord TrajectoriesKnowledge DiscoveryTemporal Pattern RecognitionComputer ScienceInformation ExtractionComputer VisionSpectral AnalysisKeyword ExtractionLinguistics
We consider the problem of analyzing word trajectories in both time and frequency domains, with the specific goal of identifying important and less-reported, periodic and aperiodic words. A set of words with identical trends can be grouped together to reconstruct an event in a completely un-supervised manner. The document frequency of each word across time is treated like a time series, where each element is the document frequency - inverse document frequency (DFIDF) score at one time point. In this paper, we 1) first applied spectral analysis to categorize features for different event characteristics: important and less-reported, periodic and aperiodic; 2) modeled aperiodic features with Gaussian density and periodic features with Gaussian mixture densities, and subsequently detected each feature's burst by the truncated Gaussian approach; 3) proposed an unsupervised greedy event detection algorithm to detect both aperiodic and periodic events. All of the above methods can be applied to time series data in general. We extensively evaluated our methods on the 1-year Reuters News Corpus [3] and showed that they were able to uncover meaningful aperiodic and periodic events.
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