Sentiment analysis aims to uncover emotions conveyed through information. In its simplest form, it is performed on a polarity basis, where the goal is to classify information with positive or negative emotion. Recent research has explored more nuanced ways to perform emotion analysis. Unsupervised emotion analysis methods require a critical resource: a lexicon that is appropriate for the task at hand, in terms of the emotional range and diversity captured. Emotion analysis lexicons are created manually by domain experts and usually assign one single emotion to each word. We propose an automated workflow for creating and evaluating a multi-valued emotion lexicon created and evaluated through crowdsourcing. We compare the obtained lexicon wit...
Automatic sentiment analysis in texts has attracted considerable attention in recent years. Most of ...
In recent years, emotions expressed in social media messages have become a vivid research topic due ...
Sentiment is important in studies of news values, public opinion, negative campaigning or political ...
Sentiment analysis aims to uncover emotions conveyed through information. In its simplest form, it i...
Even though considerable attention has been given to the polarity of words (positive and negative) a...
Even though considerable attention has been given to the polarity of words (positive and negative) a...
This paper presents an integrated approach to build an affect lexicon for emotion tagging of free te...
While many lexica annotated with words polarity are available for sentiment analysis, very few tackl...
Sentiment analysis allows the semantic evaluation of a piece of text according to the expressed sent...
With the proliferation of social media, textual emotion analysis is becoming increasingly important....
Even though considerable attention has been given to semantic orientation of words and the creation ...
For sentiment analysis, lexicons play an important role in many related tasks. In this paper, aiming...
91 p.In this study, an emotion tagging program was developed for movie reviews. The emotion tagging ...
Sentiment detection analyzes the positive or negative polar-ity of text. The field has received cons...
Little or no research has been done on the emotional state of persons, groups, or nations using web ...
Automatic sentiment analysis in texts has attracted considerable attention in recent years. Most of ...
In recent years, emotions expressed in social media messages have become a vivid research topic due ...
Sentiment is important in studies of news values, public opinion, negative campaigning or political ...
Sentiment analysis aims to uncover emotions conveyed through information. In its simplest form, it i...
Even though considerable attention has been given to the polarity of words (positive and negative) a...
Even though considerable attention has been given to the polarity of words (positive and negative) a...
This paper presents an integrated approach to build an affect lexicon for emotion tagging of free te...
While many lexica annotated with words polarity are available for sentiment analysis, very few tackl...
Sentiment analysis allows the semantic evaluation of a piece of text according to the expressed sent...
With the proliferation of social media, textual emotion analysis is becoming increasingly important....
Even though considerable attention has been given to semantic orientation of words and the creation ...
For sentiment analysis, lexicons play an important role in many related tasks. In this paper, aiming...
91 p.In this study, an emotion tagging program was developed for movie reviews. The emotion tagging ...
Sentiment detection analyzes the positive or negative polar-ity of text. The field has received cons...
Little or no research has been done on the emotional state of persons, groups, or nations using web ...
Automatic sentiment analysis in texts has attracted considerable attention in recent years. Most of ...
In recent years, emotions expressed in social media messages have become a vivid research topic due ...
Sentiment is important in studies of news values, public opinion, negative campaigning or political ...