In this paper, we describe how we created a meta-classifier to detect the message-level sentiment of tweets. We participated in SemEval-2014 Task 9B by combining the results of several existing classifiers using a random forest. The results of 5 other teams from the competition as well as from 7 general purpose commercial classifiers were used to train the algorithm. This way, we were able to get a boost of up to 3.24 F1 score points
This paper describes the system that was sub-mitted to SemEval2015 Task 10: Sentiment Analysis in Tw...
This paper describes our participation at SemEval-2014 sentiment analysis task, in both contextual a...
People often use social media as an outlet for their emotions and opinions. Analysing social media t...
In this paper, we describe how we created a meta-classifier to detect the message-level sentiment of...
In this paper, we describe how we cre-ated a meta-classifier to detect the mes-sage-level sentiment ...
Abstract We describe a classifier for predicting message-level sentiment of English microblog messag...
We describe a classifier for predicting message-level sentiment of English microblog messages from T...
In this paper, we analyze the quality of several commercial tools for sentiment detection. All tools...
In this research, the well-known microblogging site, Twitter, was used for a sentiment analysis inve...
With the extensive availability of social media platforms, Twitter has become a significant tool for...
We describe our approach for the SemEval-2014 task 9: Sentiment Analysis in Twitter. We make use of ...
This paper covers the two approaches for sentiment analysis: i) lexicon based method; ii) machine le...
In this paper, we propose a classifier for predicting message-level sentiments of English micro-blog...
This paper reports on the use of ensemble learning to classify as either positive or negative the se...
This paper reports on the use of ensemble learning to classify the sentiment of tweets as being eith...
This paper describes the system that was sub-mitted to SemEval2015 Task 10: Sentiment Analysis in Tw...
This paper describes our participation at SemEval-2014 sentiment analysis task, in both contextual a...
People often use social media as an outlet for their emotions and opinions. Analysing social media t...
In this paper, we describe how we created a meta-classifier to detect the message-level sentiment of...
In this paper, we describe how we cre-ated a meta-classifier to detect the mes-sage-level sentiment ...
Abstract We describe a classifier for predicting message-level sentiment of English microblog messag...
We describe a classifier for predicting message-level sentiment of English microblog messages from T...
In this paper, we analyze the quality of several commercial tools for sentiment detection. All tools...
In this research, the well-known microblogging site, Twitter, was used for a sentiment analysis inve...
With the extensive availability of social media platforms, Twitter has become a significant tool for...
We describe our approach for the SemEval-2014 task 9: Sentiment Analysis in Twitter. We make use of ...
This paper covers the two approaches for sentiment analysis: i) lexicon based method; ii) machine le...
In this paper, we propose a classifier for predicting message-level sentiments of English micro-blog...
This paper reports on the use of ensemble learning to classify as either positive or negative the se...
This paper reports on the use of ensemble learning to classify the sentiment of tweets as being eith...
This paper describes the system that was sub-mitted to SemEval2015 Task 10: Sentiment Analysis in Tw...
This paper describes our participation at SemEval-2014 sentiment analysis task, in both contextual a...
People often use social media as an outlet for their emotions and opinions. Analysing social media t...