Abstract
Labelling a large quantity of social media data for the task of supervised machine learning is not only time-consuming but also difficult and expensive. On the other hand, the accuracy of supervised machine learning
models is strongly related to the quality of the labelled data on which they train, and automatic sentiment
labelling techniques could reduce the time and cost of human labelling. We have compared three automatic
sentiment labelling techniques: TextBlob, Vader, and Afinn to assign sentiments to tweets without any human
assistance. We compare three scenarios: one uses training and testing datasets with existing ground truth
labels; the second experiment uses automatic labels as training and testing datasets; and the third experiment
uses three automatic labelling techniques to label the training dataset and uses the ground truth labels for
testing. The experiments were evaluated on two Twitter datasets: SemEval-2013 (DS-1) and SemEval-2016
(DS-2). Results show that the Afinn labelling technique obtains the highest accuracy of 80.17% (DS-1) and
80.05% (DS-2) using a BiLSTM deep learning model. These findings imply that automatic text labelling could
provide significant benefits, and suggest a feasible alternative to the time and cost of human labelling efforts.
| Original language | English (Ireland) |
|---|---|
| Title of host publication | Proceedings of the 11th International Conference on Data Science, Technology and Applications, DATA |
| DOIs | |
| Publication status | Published - 1 Jan 2022 |
Authors (Note for portal: view the doc link for the full list of authors)
- Authors
- Sumana Biswas and Karen Young and Josephine Griffith
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