Automatic data-driven analysis of mood from text is anemerging problem with many potential applications. Unlike generic text categorization, mood classification based on textual features is complicated by various factors, including its context- and user-sensitive nature. We present a comprehensive study of different feature selection schemes in machine learning for the problem of mood classification in weblogs. Notably, we introduce the novel use of a feature set based on the affective norms for English words (ANEW) lexicon studied in psychology. This feature set has the advantage of being computationally efficient while maintaining accuracy comparable to other state-of-the-art feature sets experimented with. In addition, we present results...
In this paper, we present the results of experiments aiming to validate a two-dimensional typology o...
Sentiment classification has been a well-investigated re-search area in the computational linguistic...
Sentiment analysis can go beyond the typical granularity of polarity that assumes each text to be po...
Abstract. Automatic data-driven analysis of mood from text is an emerging problem with many potentia...
This short paper reports on initial experiments on the use of binary classifiers to distinguish affe...
We present a large-scale mood analysis in social media texts. We organise the paper in three parts: ...
This short paper reports on initial experiments on the use of binary classifiers to distinguish affe...
Abstract. As an effort to detect the mood of a blog, regardless of the length and writing style, we ...
Abstract We present a large-scale mood analysis in social media texts. We organize the paper in thre...
Sentiment analysis is a field of computational linguistics involving identification, ex-traction, an...
Mood classification for blogs is useful in helping user-to-agent interaction for a variety of applic...
Mood classification for blogs is useful in helping user-to-agent interaction for a variety of applic...
We describe a method for discovering irregularities in temporal mood patterns appearing in a large c...
Weblogs have become a prevalent source of information for people to express themselves. In general, ...
One of the goals of affective computing is to recognize human emotions. We present a system that lea...
In this paper, we present the results of experiments aiming to validate a two-dimensional typology o...
Sentiment classification has been a well-investigated re-search area in the computational linguistic...
Sentiment analysis can go beyond the typical granularity of polarity that assumes each text to be po...
Abstract. Automatic data-driven analysis of mood from text is an emerging problem with many potentia...
This short paper reports on initial experiments on the use of binary classifiers to distinguish affe...
We present a large-scale mood analysis in social media texts. We organise the paper in three parts: ...
This short paper reports on initial experiments on the use of binary classifiers to distinguish affe...
Abstract. As an effort to detect the mood of a blog, regardless of the length and writing style, we ...
Abstract We present a large-scale mood analysis in social media texts. We organize the paper in thre...
Sentiment analysis is a field of computational linguistics involving identification, ex-traction, an...
Mood classification for blogs is useful in helping user-to-agent interaction for a variety of applic...
Mood classification for blogs is useful in helping user-to-agent interaction for a variety of applic...
We describe a method for discovering irregularities in temporal mood patterns appearing in a large c...
Weblogs have become a prevalent source of information for people to express themselves. In general, ...
One of the goals of affective computing is to recognize human emotions. We present a system that lea...
In this paper, we present the results of experiments aiming to validate a two-dimensional typology o...
Sentiment classification has been a well-investigated re-search area in the computational linguistic...
Sentiment analysis can go beyond the typical granularity of polarity that assumes each text to be po...