This paper compares Active Learning selection strategies for sentiment analysis of Twitter data. We focus mainly on category-driven strategies, which select training instances taking into consideration the confidence of the system as well as the category of the tweet (e.g. positive or negative). We show that this com- bination is particularly effective when the performance of the system is unbalanced over the different categories. This work was conducted in the framework of automatically ranking the songs of “Festival di Sanremo 2017” based on sentiment analysis of the tweets posted during the contest
Twitter has become one of the most popular micro blogging platforms recently. Near about 800 Million...
The goal of this master thesis is to classify short Twitter messages with respect to their sentiment...
Sentiment classification is an important branch of cognitive computation—thus the further studies of...
This paper describes our approach to the SemEval 2016 task 4, “Sentiment Analysis in Twitter”, where...
This paper covers the two approaches for sentiment analysis: i) lexicon based method; ii) machine le...
Twitter has become a popular microblogging tool where users are increasing every minute. It allows i...
This paper reports on the use of ensemble learning to classify the sentiment of tweets as being eith...
Social media are becoming an increasingly important source of information about the public mood rega...
The uncritical application of automatic analysis techniques can be insidious. For this reason, the s...
We examine methods for improving models for automatically labeling social media data. In particular ...
This paper reports on the use of ensemble learning to classify the sentiment of tweets as being eith...
We describe a Twitter sentiment analysis sys-tem developed by combining a rule-based classifier with...
The huge variability of trends, community interests and jargon is a crucial challenge for the applic...
People often use social media as an outlet for their emotions and opinions. Analysing social media t...
This paper describes a simple and princi-pled approach to automatically construct sen-timent lexicon...
Twitter has become one of the most popular micro blogging platforms recently. Near about 800 Million...
The goal of this master thesis is to classify short Twitter messages with respect to their sentiment...
Sentiment classification is an important branch of cognitive computation—thus the further studies of...
This paper describes our approach to the SemEval 2016 task 4, “Sentiment Analysis in Twitter”, where...
This paper covers the two approaches for sentiment analysis: i) lexicon based method; ii) machine le...
Twitter has become a popular microblogging tool where users are increasing every minute. It allows i...
This paper reports on the use of ensemble learning to classify the sentiment of tweets as being eith...
Social media are becoming an increasingly important source of information about the public mood rega...
The uncritical application of automatic analysis techniques can be insidious. For this reason, the s...
We examine methods for improving models for automatically labeling social media data. In particular ...
This paper reports on the use of ensemble learning to classify the sentiment of tweets as being eith...
We describe a Twitter sentiment analysis sys-tem developed by combining a rule-based classifier with...
The huge variability of trends, community interests and jargon is a crucial challenge for the applic...
People often use social media as an outlet for their emotions and opinions. Analysing social media t...
This paper describes a simple and princi-pled approach to automatically construct sen-timent lexicon...
Twitter has become one of the most popular micro blogging platforms recently. Near about 800 Million...
The goal of this master thesis is to classify short Twitter messages with respect to their sentiment...
Sentiment classification is an important branch of cognitive computation—thus the further studies of...