While the recognition of positive/negative sentiment in text is an established task with many standard data sets and well developed methodologies, the recognition of a more nuanced affect has received less attention: there are few publicly available annotated resources and there are a number of competing emotion representation schemes with as yet no clear approach to choose between them. To address this lack, we present a series of emotion annotation studies on tweets, providing methods for comparisons between annotation methods (relative vs. absolute) and between different representation schemes. We find improved annotator agreement with a relative annotation scheme (comparisons) on a dimensional emotion model over a categorical annotation...
Detecting emotions in microblogs and social media posts has applications for industry, health, and s...
Sentiment Analysis is probably one of the best-known area in text mining. However, in recent years, ...
There are several models for representing emotions in affect-aware applications, and available emoti...
While the recognition of positive/negative sentiment in text is an established task with many standa...
While the recognition of positive/negative sentiment in text is an established task with many standa...
While the recognition of positive/negative sentiment in text is an established task with many standa...
While the recognition of positive/negative sentiment in text is an established task with many standa...
In an era where user-generated content becomes ever more prevalent, reliable methods to judge emotio...
Abstract. Finding emotions in text is an area of research with wide-ranging applications. We describ...
Abstract Opinion mining techniques, investigating if text is expressing a positive or negative opin...
People express emotions as part of everyday communication. Emotions can be judged by a combination o...
This paper examines the task of detecting intensity of emotion from text. We create the first datase...
Emotion analysis (EA) is a rapidly developing area in computational linguistics. An EA system can be...
This paper discusses the challenges in carrying out fair comparative evaluations of sentiment analys...
Emotions are both prevalent in and essential to most aspects of our lives. They in- fluence our deci...
Detecting emotions in microblogs and social media posts has applications for industry, health, and s...
Sentiment Analysis is probably one of the best-known area in text mining. However, in recent years, ...
There are several models for representing emotions in affect-aware applications, and available emoti...
While the recognition of positive/negative sentiment in text is an established task with many standa...
While the recognition of positive/negative sentiment in text is an established task with many standa...
While the recognition of positive/negative sentiment in text is an established task with many standa...
While the recognition of positive/negative sentiment in text is an established task with many standa...
In an era where user-generated content becomes ever more prevalent, reliable methods to judge emotio...
Abstract. Finding emotions in text is an area of research with wide-ranging applications. We describ...
Abstract Opinion mining techniques, investigating if text is expressing a positive or negative opin...
People express emotions as part of everyday communication. Emotions can be judged by a combination o...
This paper examines the task of detecting intensity of emotion from text. We create the first datase...
Emotion analysis (EA) is a rapidly developing area in computational linguistics. An EA system can be...
This paper discusses the challenges in carrying out fair comparative evaluations of sentiment analys...
Emotions are both prevalent in and essential to most aspects of our lives. They in- fluence our deci...
Detecting emotions in microblogs and social media posts has applications for industry, health, and s...
Sentiment Analysis is probably one of the best-known area in text mining. However, in recent years, ...
There are several models for representing emotions in affect-aware applications, and available emoti...