International audienceWe present, in this paper, our contribution in SemEval2017 task 4 : " Sentiment Analysis in Twitter " , subtask A: " Message Polarity Classification " , for En-glish and Arabic languages. Our system is based on a list of sentiment seed words adapted for tweets. The sentiment relations between seed words and other terms are captured by cosine similarity between the word embedding representations (word2vec). These seed words are extracted from datasets of annotated tweets available online. Our tests, using these seed words, show significant improvement in results compared to the use of Turney and Littman's (2003) seed words, on polarity classification of tweet messages
This paper describes our participation at SemEval- 2014 sentiment analysis task, in both contextual ...
Message-level and word-level polarity classification are two popular tasks in Twitter sentiment anal...
International audienceThis paper presents the contribution of our team at task 2 of SemEval 2013: Se...
We present, in this paper, our contribution in SemEval2017 task 4 : " Sentiment Analysis in Twitter ...
We present, in this paper, our contribution in DEFT 2018 task 2 : "Global polarity", determining the...
This paper describes the system we have used for participating in Subtasks A (Message Polarity Class...
Sentiment analysis refers to automatically extracting the sentiment present in a given natural langu...
With the purpose of classifying text based on its sentiment polarity (positive or negative), we prop...
Twitter is one of the most popular micro-blogging services on the web. The service allows sharing, i...
This paper describes the CoLing Lab system for the EVALITA 2014 SENTIment POLarity Classification (...
This paper describes the CoLing Lab system for the participation in the constrained run of the EVALI...
This paper describes the system that was sub-mitted to SemEval2015 Task 10: Sentiment Analysis in Tw...
National audienceMost of the work on polarity detection consists in finding out negative or positive...
Twitter sentiment analysis or the task of automatically retrieving opinions from tweets has received...
We present a sentiment classification sys-tem that participated in the SemEval 2014 shared task on s...
This paper describes our participation at SemEval- 2014 sentiment analysis task, in both contextual ...
Message-level and word-level polarity classification are two popular tasks in Twitter sentiment anal...
International audienceThis paper presents the contribution of our team at task 2 of SemEval 2013: Se...
We present, in this paper, our contribution in SemEval2017 task 4 : " Sentiment Analysis in Twitter ...
We present, in this paper, our contribution in DEFT 2018 task 2 : "Global polarity", determining the...
This paper describes the system we have used for participating in Subtasks A (Message Polarity Class...
Sentiment analysis refers to automatically extracting the sentiment present in a given natural langu...
With the purpose of classifying text based on its sentiment polarity (positive or negative), we prop...
Twitter is one of the most popular micro-blogging services on the web. The service allows sharing, i...
This paper describes the CoLing Lab system for the EVALITA 2014 SENTIment POLarity Classification (...
This paper describes the CoLing Lab system for the participation in the constrained run of the EVALI...
This paper describes the system that was sub-mitted to SemEval2015 Task 10: Sentiment Analysis in Tw...
National audienceMost of the work on polarity detection consists in finding out negative or positive...
Twitter sentiment analysis or the task of automatically retrieving opinions from tweets has received...
We present a sentiment classification sys-tem that participated in the SemEval 2014 shared task on s...
This paper describes our participation at SemEval- 2014 sentiment analysis task, in both contextual ...
Message-level and word-level polarity classification are two popular tasks in Twitter sentiment anal...
International audienceThis paper presents the contribution of our team at task 2 of SemEval 2013: Se...