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Microblogging

About: Microblogging is a research topic. Over the lifetime, 4186 publications have been published within this topic receiving 137030 citations. The topic is also known as: microblog.


Papers
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Journal ArticleDOI
TL;DR: The authors examined the stock market behavior for a long-lived subset of firms in Shanghai and Shenzhen CSI 300 Index (CSI 300 Index) both before and after the establishment of firms' microblogs in Sina Weibo.
Abstract: This paper examines the stock market behavior for a long-lived subset of firms in Shanghai and Shenzhen CSI 300 Index (CSI 300 Index) both before and after the establishment of firms’ Microblogging in Sina Weibo. The empirical results show a significant increase in the relative trading volume as well as the decreases in the daily expected stock return and firm-level volatility in the post-Sina Weibo period. These findings suggest that Sina Weibo as an alternative information interaction channel has changed the information environment for individual stock, enhanced the speed of information diffusion and therefore changed the overall stock market behavior.

41 citations

Journal ArticleDOI
TL;DR: This report provides a proof-of-principle demonstration that a diverse, international group of urologic professionals spanning all levels of training can engage in a lively and vibrant volley of ideassurrounding an academic urology topic.

41 citations

Proceedings ArticleDOI
01 Jan 2016
TL;DR: Emotion classification of Twitter microblogs related to localized public health threats, and whether the public mood can be effectively utilized in early discovery or alarming of such events are explored.
Abstract: Online social media microblogs may be a valuable resource for timely identification of critical ad hoc health-related incidents or serious epidemic outbreaks. In this paper, we explore emotion classification of Twitter microblogs related to localized public health threats, and study whether the public mood can be effectively utilized in early discovery or alarming of such events. We analyse user tweets around recent incidents of Ebola, finding differences in the expression of emotions in tweets posted prior to and after the incidents have emerged. We also analyse differences in the nature of the tweets in the immediately affected area as compared to areas remote to the events. The results of this analysis suggest that emotions in social media microblogging data (from Twitter in particular) may be utilized effectively as a source of evidence for disease outbreak detection and monitoring.

41 citations

Book ChapterDOI
01 Jan 2013
TL;DR: The notion of sociality underlying the now frequently employed term social media is based on concepts such as communication, community, cooperation, collaboration, and sharing as mentioned in this paper, and it is used without differentiation or grounding in social theory.
Abstract: The term social media has been established to characterize World Wide Web platforms such as social networking sites, blogs, wikis, and microblogs. Such platforms are among the most accessed websites in the world and include Facebook, YouTube, Wikipedia, Blogger, Twitter, LinkedIn, and WordPress. All online platforms and media are social in the sense of providing information that is a result of social relations. The notion of sociality underlying the now frequently employed term social media is based on concepts such as communication, community, cooperation, collaboration, and sharing. All too often, the term is used without differentiation or grounding in social theory.

41 citations

Proceedings ArticleDOI
01 Nov 2012
TL;DR: An automatic sentiment classifier for Twitter messages, and uses TV shows from Brazilian stations for benchmarking to reduce human intervention and, thus, the complexity and cost of the whole process.
Abstract: Twitter® is a microblogging service usually used as an instant communication platform. The capacity to provide information in real time has stimulated many companies to use this service to understand their consumers. In this direction, TV stations have adopted Twitter for shortening the distance between them and their viewers, and use such information as a feedback mechanism for their shows. The sentiment analysis task can be used as one such feedback mechanism. This task corresponds to classifying a text according to the sentiment that the writer intended to transmit. A classifier usually requires a pre-classifled data sample to determine the class of new data. Typically, the sample is pre-classified manually, making the process time consuming and reducing its real time applicability for big data. This paper proposes an automatic sentiment classifier for Twitter messages, and uses TV shows from Brazilian stations for benchmarking. The automatic sentiment analysis reduces human intervention and, thus, the complexity and cost of the whole process. To assess the performance of the proposed system tweets related to a Brazilian TV show were captured in a 24h interval and fed into the system. The proposed technique achieved an average accuracy of 90%.

41 citations


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Performance
Metrics
No. of papers in the topic in previous years
YearPapers
2023202
2022551
2021153
2020238
2019226
2018282