A convergence of emotions among people in social networks is potentially resulted by the occurrence of an unprecedented event in real world. E.g., a majority of bloggers would react angrily at the September 11 terrorist attacks. Based on this observation, we introduce a sentiment index, computed from the current mood tags in a collection of blog posts utilizing an affective lexicon, potentially revealing subtle events discussed in the blogosphere. We then develop a method for extracting events based on this index and its distribution. Our second contribution is establishment of a new bursty structure in text streams termed a sentiment burst. We employ a stochastic model to detect bursty periods of moods and the events associated. Our result...
Abstract In this paper, we present an analysis of the emotion-exchange patterns that arise from Twit...
Sentiment analysis techniques are increasingly used to grasp reactions from social media users to un...
Sentiment analysis predicts a one-dimensional quantity describing the positive or negative emotion o...
Significant world events often cause the behavioral convergence of the expression of shared sentimen...
Understanding the causes of spikes in the emotion flow of influential social media users is a key co...
We describe a method for discovering irregularities in temporal mood patterns appearing in a large c...
Many common events in our daily life affect us in positive and negative ways. For example, going o...
We present a large-scale mood analysis in social media texts. We organise the paper in three parts: ...
Social media has become an important communication medium for people to express their feelings and o...
Microblogs are an opportunity for scavenging critical information such as sentiments. This informati...
Event detection helps people to identify 'meaningful' events from documents. The most common form of...
The explosion of social media services presents a great op-portunity to understand the sentiment of ...
Social media allow users convey emotions, which are often related to real-world events, social relat...
This paper propose a method to predict the stage of buzz-trend generation by analyzing the emotional...
A vast amount of textual web streams is influenced by events or phenomena emerging in the real world...
Abstract In this paper, we present an analysis of the emotion-exchange patterns that arise from Twit...
Sentiment analysis techniques are increasingly used to grasp reactions from social media users to un...
Sentiment analysis predicts a one-dimensional quantity describing the positive or negative emotion o...
Significant world events often cause the behavioral convergence of the expression of shared sentimen...
Understanding the causes of spikes in the emotion flow of influential social media users is a key co...
We describe a method for discovering irregularities in temporal mood patterns appearing in a large c...
Many common events in our daily life affect us in positive and negative ways. For example, going o...
We present a large-scale mood analysis in social media texts. We organise the paper in three parts: ...
Social media has become an important communication medium for people to express their feelings and o...
Microblogs are an opportunity for scavenging critical information such as sentiments. This informati...
Event detection helps people to identify 'meaningful' events from documents. The most common form of...
The explosion of social media services presents a great op-portunity to understand the sentiment of ...
Social media allow users convey emotions, which are often related to real-world events, social relat...
This paper propose a method to predict the stage of buzz-trend generation by analyzing the emotional...
A vast amount of textual web streams is influenced by events or phenomena emerging in the real world...
Abstract In this paper, we present an analysis of the emotion-exchange patterns that arise from Twit...
Sentiment analysis techniques are increasingly used to grasp reactions from social media users to un...
Sentiment analysis predicts a one-dimensional quantity describing the positive or negative emotion o...