Publication | Closed Access
Temporal feedback for tweet search with non-parametric density estimation
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Citations
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References
2014
Year
Unknown Venue
EngineeringSocial Medium MonitoringIntelligent Information RetrievalTemporal Cluster HypothesisTemporal FeedbackCorpus LinguisticsJournalismText MiningNatural Language ProcessingSocial MediaInformation RetrievalData ScienceComputational LinguisticsRelevance FeedbackLanguage StudiesContent AnalysisStatisticsRetrieval TechniqueSearch TechnologyKnowledge DiscoveryTemporal DensitySocial Medium DataLinguisticsInteractive Information Retrieval
This paper investigates the temporal cluster hypothesis: in search tasks where time plays an important role, do relevant documents tend to cluster together in time? We explore this question in the context of tweet search and temporal feedback: starting with an initial set of results from a baseline retrieval model, we estimate the temporal density of relevant documents, which is then used for result reranking. Our contributions lie in a method to characterize this temporal density function using kernel density estimation, with and without human relevance judgments, and an approach to integrating this information into a standard retrieval model. Experiments on TREC datasets confirm that our temporal feedback formulation improves search effectiveness, thus providing support for our hypothesis. Our approach out-performs both a standard baseline and previous temporal retrieval models. Temporal feedback improves over standard lexical feedback (with and without human judgments), illus- trating that temporal relevance signals exist independently of document content.
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