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Characterizing Twitter Discussions About HPV Vaccines Using Topic Modeling and Community DetectionComparing human papillomavirus vaccine concerns on Twitter: a cross-sectional study of users in Australia, Canada and the UKMapping information exposure on social media to explain differences in HPV vaccine coverage in the United States.A shared latent space matrix factorisation method for recommending new trial evidence for systematic review updates.Conversational agents in healthcare: a systematic reviewA Causal Approach for Mining Interesting AnomaliesMining direct antagonistic communities in signed social networksMining Outlier Participants: Insights Using Directional Distributions in Latent ModelsMining direct antagonistic communities in explicit trust networksRecommending People in Developers' Collaboration NetworkMining Collaboration Patterns from a Large Developer NetworkTime-to-update of systematic reviews relative to the availability of new evidenceTracking a moving user in indoor environments using Bluetooth low energy beaconsAutomatically Appraising the Credibility of Vaccine-Related Web Pages Shared on Social Media: A Twitter Surveillance StudyThe risk of conclusion change in systematic review updates can be estimated by learning from a database of published examplesTrial2rev: Combining machine learning and crowd-sourcing to create a shared space for updating systematic reviewsHPV vaccine coverage in Australia and associations with HPV vaccine information exposure among Australian Twitter users
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Didi Surian
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Didi Surian
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Didi Surian
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Didi Surian
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Didi Surian
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Didi Surian
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Didi Surian
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Didi Surian
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Didi Surian
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Didi Surian
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Didi Surian
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Didi Surian
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Didi Surian
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