The task of classifying political tweets has been shown to be very difficult, with controversial results in many works and with non-replicable methods. Most of the works with this goal use rule-based methods to identify political tweets. We propose here two methods, being one rule-based approach, which has an accuracy of 62%, and a supervised learning approach, which went up to 97% of accuracy in the task of distinguishing political and non-political tweets in a corpus of 2.881 Dutch tweets. Here we show that for a data base of Dutch tweets, we can outperform the rule-based method by combining many different supervised learning methods
What people say on social media has turned into a rich source of information to understand social be...
Contains fulltext : 231117pub.pdf (publisher's version ) (Closed access)We study t...
Abstract. Opinion mining on Twitter recently attracted research interest in politics using Informati...
We examine methods for improving models for automatically labeling social media data. In particular ...
This paper deals with the quality of textual features in messages in order to classify tweets. The a...
We study the discursive practices of politicians and journalists on social media. For this we need m...
Abstract. Twitter conveys the opinions and interests of people in various topics and domains. In thi...
Scholars have access to a rich source of political discourse via social media. Although computationa...
We propose a system that assigns topical labels to automatically detected events in the Twitter stre...
Social media platforms make a significant contribution to modeling and influencing people’s opinions...
Machine Learning is one of the most impactful technology of our era. Increasingly powerful computers...
We propose a system that assigns topical labels to automatically detected events in the Twitter stre...
Politics is increasingly influenced by Twitter communications and more and more politicians are usin...
With the rise in popularity of public social media and micro-blogging services, most notably Twitter...
What people say on social media has turned into a rich source of information to understand social be...
Contains fulltext : 231117pub.pdf (publisher's version ) (Closed access)We study t...
Abstract. Opinion mining on Twitter recently attracted research interest in politics using Informati...
We examine methods for improving models for automatically labeling social media data. In particular ...
This paper deals with the quality of textual features in messages in order to classify tweets. The a...
We study the discursive practices of politicians and journalists on social media. For this we need m...
Abstract. Twitter conveys the opinions and interests of people in various topics and domains. In thi...
Scholars have access to a rich source of political discourse via social media. Although computationa...
We propose a system that assigns topical labels to automatically detected events in the Twitter stre...
Social media platforms make a significant contribution to modeling and influencing people’s opinions...
Machine Learning is one of the most impactful technology of our era. Increasingly powerful computers...
We propose a system that assigns topical labels to automatically detected events in the Twitter stre...
Politics is increasingly influenced by Twitter communications and more and more politicians are usin...
With the rise in popularity of public social media and micro-blogging services, most notably Twitter...
What people say on social media has turned into a rich source of information to understand social be...
Contains fulltext : 231117pub.pdf (publisher's version ) (Closed access)We study t...
Abstract. Opinion mining on Twitter recently attracted research interest in politics using Informati...