کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
383309 | 660815 | 2012 | 19 صفحه PDF | دانلود رایگان |

Due to the explosive growth of social-media applications, enhancing event-awareness by social mining has become extremely important. The contents of microblogs preserve valuable information associated with past disastrous events and stories. To learn the experiences from past events for tackling emerging real-world events, in this work we utilize the social-media messages to characterize real-world events through mining their contents and extracting essential features for relatedness analysis. On one hand, we established an online clustering approach on Twitter microblogs for detecting emerging events, and meanwhile we performed event relatedness evaluation using an unsupervised clustering approach. On the other hand, we developed a supervised learning model to create extensible measure metrics for offline evaluation of event relatedness. By means of supervised learning, our developed measure metrics are able to compute relatedness of various historical events, allowing the event impacts on specified domains to be quantitatively measured for event comparison. By combining the strengths of both methods, the experimental results showed that the combined framework in our system is sensible for discovering more unknown knowledge about event impacts and enhancing event awareness.
► We build a way for online and offline evaluation of related events on social media.
► Using an unsupervised clustering model, emerging event can be online evaluated.
► A supervised learning model is used to create metrics for offline event comparison.
► The impacts of events on specified domains can be computed by our measuring method.
Journal: Expert Systems with Applications - Volume 39, Issue 18, 15 December 2012, Pages 13338–13356