Sentiment prediction from Twitter is of the utmost interest for research and commercial organizations. Systems are usually using lexicons, where each word is positive or negative. However, word lexicons suffer from ambiguities at a contextual level: the word dark is positive in dark chocolate and negative in dark soul, the word lost is positive with weight and so on. We introduce a method which helps to identify frequent contexts in which a word switches polarity, and to reveal which words often appear in both positive and negative contexts. We show that our method matches human perception of polarity and demonstrate improvements in automated sentiment classification. Our method also helps to assess the suitability to use an existing lexico...
This article presents a methodology to classify the polarity of words from selected Tweets. Usually,...
In this study we explore a novel technique for creation of polarity lexicons from the Twitter stream...
Alleviating pain is good and abandoning hope is bad. We instinctively understand how words like alle...
Sentiment prediction from Twitter is of the utmost interest for research and commercial organization...
We present a sentiment classification sys-tem that participated in the SemEval 2014 shared task on s...
Abstract—We propose a combination of machine learning and socially constructed concepts for the task...
Twitter is one of the most popular micro-blogging services on the web. The service allows sharing, i...
Social media analytics tool aims at eliciting information and knowledge about individuals and commun...
Social media analytics tool aims at eliciting information and knowledge about individuals and commun...
Automatically identifying the sentiment polarity of words is a very important task that has been use...
International audienceThis paper presents the contribution of our team at task 2 of SemEval 2013: Se...
We present a supervised framework for expanding an opinion lexicon for tweets. The lexicon contains ...
The field of opinion mining has emerged in recent years as an exciting challenge for computational l...
Currently, sentiment analysis into positive or negative getting more attention from the researchers....
A simile is a comparison between two essentially unlike things, such as "Jane swims like a dolphin"....
This article presents a methodology to classify the polarity of words from selected Tweets. Usually,...
In this study we explore a novel technique for creation of polarity lexicons from the Twitter stream...
Alleviating pain is good and abandoning hope is bad. We instinctively understand how words like alle...
Sentiment prediction from Twitter is of the utmost interest for research and commercial organization...
We present a sentiment classification sys-tem that participated in the SemEval 2014 shared task on s...
Abstract—We propose a combination of machine learning and socially constructed concepts for the task...
Twitter is one of the most popular micro-blogging services on the web. The service allows sharing, i...
Social media analytics tool aims at eliciting information and knowledge about individuals and commun...
Social media analytics tool aims at eliciting information and knowledge about individuals and commun...
Automatically identifying the sentiment polarity of words is a very important task that has been use...
International audienceThis paper presents the contribution of our team at task 2 of SemEval 2013: Se...
We present a supervised framework for expanding an opinion lexicon for tweets. The lexicon contains ...
The field of opinion mining has emerged in recent years as an exciting challenge for computational l...
Currently, sentiment analysis into positive or negative getting more attention from the researchers....
A simile is a comparison between two essentially unlike things, such as "Jane swims like a dolphin"....
This article presents a methodology to classify the polarity of words from selected Tweets. Usually,...
In this study we explore a novel technique for creation of polarity lexicons from the Twitter stream...
Alleviating pain is good and abandoning hope is bad. We instinctively understand how words like alle...