Moving beyond the dominant bag-of-words approach to sentiment analysis we introduce an alternative procedure based on distributed word embeddings. The strength of word embeddings is the ability to capture similarities in word meaning. We use word embeddings as part of a supervised machine learning procedure which estimates levels of negativity in parliamentary speeches. The procedure’s accuracy is evaluated with crowdcoded training sentences; its external validity through a study of patterns of negativity in Austrian parliamentary speeches. The results show the potential of the word embeddings approach for sentiment analysis in the social sciences.publishe
Sentiment is important in studies of news values, public opinion, negative campaigning or political ...
Tang et al. (2014) acknowledged the context-based word embeddings inability to dis-criminate betwee...
Negators, modals, and degree adverbs can significantly affect the sentiment of the words they modify...
Moving beyond the dominant bag-of-words approach to sentiment analysis we introduce an alternative p...
Our work analyzed the relationship between the domain type of the word embeddings used to create sen...
Since some sentiment words have similar syntactic and semantic features in the corpus, existing pre-...
With the proliferation of social media, textual emotion analysis is becoming increasingly important....
Context-based word embedding learning approaches can model rich semantic and syntactic information. ...
International audienceMost existing continuous word representation learning algorithms usually only ...
Comunicació presentada a la Tenth International Conference on Language Resources and Evaluation (LR...
Social media sites are one of the platforms where a lot of people interact in the present, expanding...
Social Media is a valuable source of information when seeking to understand community opinion and se...
Sentiment analysis is a well-known and rapidly expanding study topic in natural language processing ...
Abstract—Sentiment analysis is a branch of natural language processing, or machine learning methods....
Published online: 29 June 2022Previous research on emotional language relied heavily on off-the-shel...
Sentiment is important in studies of news values, public opinion, negative campaigning or political ...
Tang et al. (2014) acknowledged the context-based word embeddings inability to dis-criminate betwee...
Negators, modals, and degree adverbs can significantly affect the sentiment of the words they modify...
Moving beyond the dominant bag-of-words approach to sentiment analysis we introduce an alternative p...
Our work analyzed the relationship between the domain type of the word embeddings used to create sen...
Since some sentiment words have similar syntactic and semantic features in the corpus, existing pre-...
With the proliferation of social media, textual emotion analysis is becoming increasingly important....
Context-based word embedding learning approaches can model rich semantic and syntactic information. ...
International audienceMost existing continuous word representation learning algorithms usually only ...
Comunicació presentada a la Tenth International Conference on Language Resources and Evaluation (LR...
Social media sites are one of the platforms where a lot of people interact in the present, expanding...
Social Media is a valuable source of information when seeking to understand community opinion and se...
Sentiment analysis is a well-known and rapidly expanding study topic in natural language processing ...
Abstract—Sentiment analysis is a branch of natural language processing, or machine learning methods....
Published online: 29 June 2022Previous research on emotional language relied heavily on off-the-shel...
Sentiment is important in studies of news values, public opinion, negative campaigning or political ...
Tang et al. (2014) acknowledged the context-based word embeddings inability to dis-criminate betwee...
Negators, modals, and degree adverbs can significantly affect the sentiment of the words they modify...