Along with the emergence of the Internet, the rapid development of handheld devices has democratized content creation due to the extensive use of social media and has resulted in an explosion of short informal texts. Although a sentiment analysis of these texts is valuable for many reasons, this task is often perceived as a challenge given that these texts are often short, informal, noisy, and rich in language ambiguities, such as polysemy. Moreover, most of the existing sentiment analysis methods are based on clean data. In this paper, we present DICET, a transformer-based method for sentiment analysis that encodes representation from a transformer and applies deep intelligent contextual embedding to enhance the quality of tweets by removi...
Tang et al. (2014) acknowledged the context-based word embeddings inability to dis-criminate betwee...
In recent years, micro-blogging on the Internet has become a popular way of expressing your thoughts...
Twitter sentiment analysis provides valuable feedback from public emotion concerning certain events ...
Along with the emergence of the Internet, the rapid development of handheld devices has democratized...
A popular application in Natural Language Processing (NLP) is the Sentiment Analysis (SA), i.e., the...
This study explores the application of the Transformer model in sentiment analysis of tweets generat...
With the extensive availability of social media platforms, Twitter has become a significant tool for...
The rise in popularity and ubiquity of Twitter has made sentiment analysis of tweets an important an...
The large source of information space produced by the plethora of social media platforms in general ...
Sentiment analysis plays a significant role in understanding public opinion, trends, and sentiments ...
We describe a state-of-the-art sentiment analysis system that detects (a) the sentiment of short inf...
This paper covers the two approaches for sentiment analysis: i) lexicon based method; ii) machine le...
In this paper, we develop a deep learn-ing system for message-level Twitter sen-timent classificatio...
Sentiment classification on Twitter has attracted increasing research in recent years.Most existing ...
Sentiment analysis is mainly concerned with identifying and classifying opinions or emotions that ar...
Tang et al. (2014) acknowledged the context-based word embeddings inability to dis-criminate betwee...
In recent years, micro-blogging on the Internet has become a popular way of expressing your thoughts...
Twitter sentiment analysis provides valuable feedback from public emotion concerning certain events ...
Along with the emergence of the Internet, the rapid development of handheld devices has democratized...
A popular application in Natural Language Processing (NLP) is the Sentiment Analysis (SA), i.e., the...
This study explores the application of the Transformer model in sentiment analysis of tweets generat...
With the extensive availability of social media platforms, Twitter has become a significant tool for...
The rise in popularity and ubiquity of Twitter has made sentiment analysis of tweets an important an...
The large source of information space produced by the plethora of social media platforms in general ...
Sentiment analysis plays a significant role in understanding public opinion, trends, and sentiments ...
We describe a state-of-the-art sentiment analysis system that detects (a) the sentiment of short inf...
This paper covers the two approaches for sentiment analysis: i) lexicon based method; ii) machine le...
In this paper, we develop a deep learn-ing system for message-level Twitter sen-timent classificatio...
Sentiment classification on Twitter has attracted increasing research in recent years.Most existing ...
Sentiment analysis is mainly concerned with identifying and classifying opinions or emotions that ar...
Tang et al. (2014) acknowledged the context-based word embeddings inability to dis-criminate betwee...
In recent years, micro-blogging on the Internet has become a popular way of expressing your thoughts...
Twitter sentiment analysis provides valuable feedback from public emotion concerning certain events ...