Text classification is a fundamental part of natural language processing. In this thesis, methods for text classification are used in an attempt to predict the political party affiliation of members of parliament (MPs). The objective is to evaluate the performance of Support Vector Machines (SVM), naive Bayes, and a fine-tuned Bidirectional Encoder Representations from Transformers (BERT) model in predicting MPs' political party affiliation based on speeches given in the Chamber of the Swedish Parliament. This study shows that BERT outperforms SVM and naive Bayes in correctly classifying MPs, and SVM makes better predictions than naive Bayes and performs reasonably well compared to BERT. The results show that all models correctly predict MP...
ChatGPT is a recently released chatbot that through the use of deep learning can generate human-like...
2018 International Symposium on Networks, Computers and Communications (2018 : Rome; Italy)Increasin...
This work shows the value of word-level statistical data from the US Congressional Record for studyi...
Text classification is a fundamental part of natural language processing. In this thesis, methods fo...
A number of recent research works have used supervised machine learning approaches with a bag-of-wor...
The Greek Parliament is a critical institution for the Greek Democracy, where important decisions ar...
Over the years, a variety of methods have been used in order toestimate policy positions for politic...
Recent advances in Natural Language Processing and Information Retrieval have opened a new world of ...
Abstract In the current era of social media, different platforms such as Twitter and Facebook have f...
The inference of politically-oriented information from text data is a popular research topic in Natu...
This thesis explores to what extent Multinomial Naive Bayes (MNB) and Support Vector Machines (SVM) ...
Mapping political party systems to metric policy spaces is one of the major methodological problems ...
By the evolvement in technology, the way of expressing opinions switched direction to the digital wo...
Comparative researchers in politics are deeply interested in the ways in which political discourse i...
The paper focuses on the task of predicting political views of social media users. The aim of this s...
ChatGPT is a recently released chatbot that through the use of deep learning can generate human-like...
2018 International Symposium on Networks, Computers and Communications (2018 : Rome; Italy)Increasin...
This work shows the value of word-level statistical data from the US Congressional Record for studyi...
Text classification is a fundamental part of natural language processing. In this thesis, methods fo...
A number of recent research works have used supervised machine learning approaches with a bag-of-wor...
The Greek Parliament is a critical institution for the Greek Democracy, where important decisions ar...
Over the years, a variety of methods have been used in order toestimate policy positions for politic...
Recent advances in Natural Language Processing and Information Retrieval have opened a new world of ...
Abstract In the current era of social media, different platforms such as Twitter and Facebook have f...
The inference of politically-oriented information from text data is a popular research topic in Natu...
This thesis explores to what extent Multinomial Naive Bayes (MNB) and Support Vector Machines (SVM) ...
Mapping political party systems to metric policy spaces is one of the major methodological problems ...
By the evolvement in technology, the way of expressing opinions switched direction to the digital wo...
Comparative researchers in politics are deeply interested in the ways in which political discourse i...
The paper focuses on the task of predicting political views of social media users. The aim of this s...
ChatGPT is a recently released chatbot that through the use of deep learning can generate human-like...
2018 International Symposium on Networks, Computers and Communications (2018 : Rome; Italy)Increasin...
This work shows the value of word-level statistical data from the US Congressional Record for studyi...