In this article, we propose a word-level classification model for automatically generating a Twitter-specific opinion lexicon from a corpus of unlabelled tweets. The tweets from the corpus are represented by two vectors: a bag-of-words vector and a semantic vector based on word-clusters. We propose a distributional representation for words by treating them as the centroids of the tweet vectors in which they appear. The lexicon generation is conducted by training a word-level classifier using these centroids to form the instance space and a seed lexicon to label the training instances. Experimental results show that the two types of tweet vectors complement each other in a statistically significant manner and that our generated lexicon produ...
As the global community becomes increasingly connected, it gets more and more common to express thou...
Abstract. Twitter conveys the opinions and interests of people in various topics and domains. In thi...
This paper describes our sentiment classifica-tion system submitted to SemEval-2015 Task 10. In the ...
In this article, we propose a word-level classification model for automatically generating a Twitter...
In this article, we propose a word-level classification model for automatically generating a Twitter...
Message-level and word-level polarity classification are two popular tasks in Twitter sentiment anal...
We present a supervised framework for expanding an opinion lexicon for tweets. The lexicon contains ...
With the objective of extracting useful information from the vast amount of opinion-rich data on Twi...
In this study we explore a novel technique for creation of polarity lexicons from the Twitter stream...
Twitter is one of the most popular micro-blogging services on the web. The service allows sharing, i...
Opinion lexicons, which are lists of terms labelled by sentiment, are widely used resources to suppo...
We present a sentiment classification sys-tem that participated in the SemEval 2014 shared task on s...
Message-level and word-level polarity classification are two popular tasks in Twitter sentiment anal...
People often use social media as an outlet for their emotions and opinions. Analysing social media t...
It has been shown that learning distributed word representations is highly useful for Twitter sentim...
As the global community becomes increasingly connected, it gets more and more common to express thou...
Abstract. Twitter conveys the opinions and interests of people in various topics and domains. In thi...
This paper describes our sentiment classifica-tion system submitted to SemEval-2015 Task 10. In the ...
In this article, we propose a word-level classification model for automatically generating a Twitter...
In this article, we propose a word-level classification model for automatically generating a Twitter...
Message-level and word-level polarity classification are two popular tasks in Twitter sentiment anal...
We present a supervised framework for expanding an opinion lexicon for tweets. The lexicon contains ...
With the objective of extracting useful information from the vast amount of opinion-rich data on Twi...
In this study we explore a novel technique for creation of polarity lexicons from the Twitter stream...
Twitter is one of the most popular micro-blogging services on the web. The service allows sharing, i...
Opinion lexicons, which are lists of terms labelled by sentiment, are widely used resources to suppo...
We present a sentiment classification sys-tem that participated in the SemEval 2014 shared task on s...
Message-level and word-level polarity classification are two popular tasks in Twitter sentiment anal...
People often use social media as an outlet for their emotions and opinions. Analysing social media t...
It has been shown that learning distributed word representations is highly useful for Twitter sentim...
As the global community becomes increasingly connected, it gets more and more common to express thou...
Abstract. Twitter conveys the opinions and interests of people in various topics and domains. In thi...
This paper describes our sentiment classifica-tion system submitted to SemEval-2015 Task 10. In the ...