Representation Learning for Constructive Comments Classification
- Resource Type
- Conference
- Authors
- Uribe, Diego; Cuan, Enrique; Urquizo, Elisa
- Source
- 2020 International Conference on Mechatronics, Electronics and Automotive Engineering (ICMEAE) ICMEAE Mechatronics, Electronics and Automotive Engineering (ICMEAE), 2020 International Conference on. :71-75 Nov, 2020
- Subject
- Computing and Processing
Deep learning
Mechatronics
Social networking (online)
Semantics
Convolutional neural networks
Automotive engineering
constructive comments
word embeddings
learning models
- Language
- ISSN
- 2573-3001
While the common scenario nowadays in social networks is the proliferation of offensive language, the focus of attention in this work is the identification of constructive online comments. In order to automatically identify constructive online comments we implement both traditional and deep learning models based on the use of sparse and dense vector semantics. We evaluate these classifiers on a recently created constructive comments corpus comprised of 12,000 annotated news comments, intended to improve the quality of online discussions. The obtained results show how our model based on learning embeddings (dense vectors) is able to match the performance of complicated architectures like recurrent and convolutional neural networks.