If you wish to use this data please cite: Katarzyna Baraniak, Marcin Sydow, A dataset for Sentiment analysis of Entities in News headlines (SEN), Procedia Computer Science, Volume 192, 2021, Pages 3627-3636, ISSN 1877-0509, https://doi.org/10.1016/j.procs.2021.09.136. (https://www.sciencedirect.com/science/article/pii/S1877050921018755) bibtex: users.pja.edu.pl/~msyd/bibtex/sydow-baraniak-SENdataset-kes21.bib SEN is a novel publicly available human-labelled dataset for training and testing machine learning algorithms for the problem of entity level sentiment analysis of political news headlines. On-line news portals play a very important role in the information society. Fair media should present reliable and objective information. In ...
Identifying the frames of news is important to understand the articles’ vision, intention, message t...
News articles serve as a highly relevant source for individuals to inform themselves on current topi...
Sentiment Analysis outputs based on the combination of three classifiers for news headlines and body...
This data set contains automated sentiment and emotionality annotations of 23 million headlines from...
This dataset is part of the Monash, UEA & UCR time series regression repository. http://tseregressio...
This is a replication data for my paper under blind review. This paper develops a new prediction mo...
Sentiment analysis (SA) has become a vibrant area of research over the past several years. By and la...
This thesis employs machine learning in an effort to develop a sentiment analysis engine for the Nor...
Politically charged news usually have important and powerful information that is expected to reflect...
This dataset is part of the Monash, UEA & UCR time series regression repository. http://tseregressio...
Methods to automatically analyze media content are advancing significantly. Among others, it has bec...
Recent years have brought a significant growth in the volume of research in sentiment analysis, most...
We provide a large data set consisting of 2,057 sentences from 90 news articles and annotations of c...
This data set contains material for the purpose of scientific reproducibility of the accompanying ma...
These are datasets of economic sentiments derived from Uk newspapers using a dictionary and support ...
Identifying the frames of news is important to understand the articles’ vision, intention, message t...
News articles serve as a highly relevant source for individuals to inform themselves on current topi...
Sentiment Analysis outputs based on the combination of three classifiers for news headlines and body...
This data set contains automated sentiment and emotionality annotations of 23 million headlines from...
This dataset is part of the Monash, UEA & UCR time series regression repository. http://tseregressio...
This is a replication data for my paper under blind review. This paper develops a new prediction mo...
Sentiment analysis (SA) has become a vibrant area of research over the past several years. By and la...
This thesis employs machine learning in an effort to develop a sentiment analysis engine for the Nor...
Politically charged news usually have important and powerful information that is expected to reflect...
This dataset is part of the Monash, UEA & UCR time series regression repository. http://tseregressio...
Methods to automatically analyze media content are advancing significantly. Among others, it has bec...
Recent years have brought a significant growth in the volume of research in sentiment analysis, most...
We provide a large data set consisting of 2,057 sentences from 90 news articles and annotations of c...
This data set contains material for the purpose of scientific reproducibility of the accompanying ma...
These are datasets of economic sentiments derived from Uk newspapers using a dictionary and support ...
Identifying the frames of news is important to understand the articles’ vision, intention, message t...
News articles serve as a highly relevant source for individuals to inform themselves on current topi...
Sentiment Analysis outputs based on the combination of three classifiers for news headlines and body...