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Journal ArticleDOI

Tweet Analysis for Real-Time Event Detection and Earthquake Reporting System Development

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TLDR
An earthquake reporting system for use in Japan is developed and an algorithm to monitor tweets and to detect a target event is proposed, which produces a probabilistic spatiotemporal model for the target event that can find the center of the event location.
Abstract
Twitter has received much attention recently. An important characteristic of Twitter is its real-time nature. We investigate the real-time interaction of events such as earthquakes in Twitter and propose an algorithm to monitor tweets and to detect a target event. To detect a target event, we devise a classifier of tweets based on features such as the keywords in a tweet, the number of words, and their context. Subsequently, we produce a probabilistic spatiotemporal model for the target event that can find the center of the event location. We regard each Twitter user as a sensor and apply particle filtering, which are widely used for location estimation. The particle filter works better than other comparable methods for estimating the locations of target events. As an application, we develop an earthquake reporting system for use in Japan. Because of the numerous earthquakes and the large number of Twitter users throughout the country, we can detect an earthquake with high probability (93 percent of earthquakes of Japan Meteorological Agency (JMA) seismic intensity scale 3 or more are detected) merely by monitoring tweets. Our system detects earthquakes promptly and notification is delivered much faster than JMA broadcast announcements.

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Book ChapterDOI

Analysing Cultural Events on Twitter

TL;DR: A model to represent message flows and their contents on Twitter, then a model and an instrumented methodology to describe and analyze these flows andtheir distribution among the various stakeholders and applies to the 12th edition of the cultural event “European Night of Museums” (NDM16).

Citizen centric stakeholder theory: sentiment and behavior analyses in social media

Ussama Yaqub
TL;DR: In this paper, a citizen centric stakeholder theory was proposed for sentiment and behavior analysis in social media, where sentiment and behaviour analysis was carried out by a group of stakeholders.

Pattern exploration and event detection from geo-tagged tweets

Yugian Huang
TL;DR: This research selects the tweets from this user within a particular time period to identify the tweeting patterns of an individual user and aims to retrieve public events as well as to detect potential events.
Posted Content

Towards Extracting Highlights From Recorded Live Videos: An Implicit Crowdsourcing Approach

TL;DR: Lightor as mentioned in this paper collects time-stamped chat messages from a live video and then uses them to predict approximate highlight positions, keeping track of how users interact with these approximate highlights positions and then refining these positions iteratively.
Proceedings Article

Tweet Data Mining: the Cultural Microblog Contextualization Data Set

TL;DR: An overview of the data set that was used for the Cultural Microblog Contextualization Workshop at CLEF 2016 and more specifically for the task 1: tweet contextualization is presented.
References
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Journal Article

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