Publication
Title
LT3 at SemEval-2018 Task 1: A classifier chain to detect emotions in tweets
Author
Abstract
This paper presents an emotion classification system for English tweets, submitted for the SemEval shared task on Affect in Tweets, subtask 5: Detecting Emotions. The system combines lexicon, n-gram, style, syntactic and semantic features. For this multi-class multi-label problem, we created a classifier chain. This is an ensemble of eleven binary classifiers, one for each possible emotion category, where each model gets the predictions of the preceding models as additional features. The predicted labels are combined to get a multi-label representation of the predictions. Our system was ranked eleventh among thirty five participating teams, with a Jaccard accuracy of 52.0% and macro- and micro-average F1-scores of 49.3% and 64.0%, respectively.
Language
English
Source (book)
Proceedings of The 12th International Workshop on Semantic Evaluation, June 5–6, 2018, New Orleans, Louisiana
Publication
Association for Computational Linguistics , 2018
ISBN
978-1-948087-20-9
DOI
10.18653/V1/S18-1016
Volume/pages
p. 123-127
Full text (Publisher's DOI)
Full text (open access)
UAntwerpen
Publication type
Subject
External links
Record
Identifier
Creation 06.11.2023
Last edited 17.06.2024
To cite this reference