Title: Insult detection using a partitional CNN-LSTM model
Authors: Mohamed Maher Ben Ismail
Addresses: Computer Science Department, College of Computer and Information Sciences, King Saud University, Riyadh, KSA
Abstract: Recently, deep learning has been coupled with noticeable advances in natural language processing-related research. In this work, we propose a general framework to detect verbal offense in social networks comments. We introduce a partitional CNN-LSTM architecture in order to automatically recognise verbal offense patterns in social network comments. Specifically, we use a partitional CNN along with a LSTM model to map the social network comments into two predefined classes. In particular, rather than considering the whole document/comments as input as performed using typical CNN, we partition the comments into parts in order to capture and weight the locally relevant information in each partition. The resulting local information is then sequentially exploited across partitions using LSTM for verbal offense detection. The combination of the partitional CNN and LSTM yields the integration of the local within comments information and the long-distance correlation across comments. The proposed approach was assessed using real dataset, and the obtained results proved that our solution outperforms existing relevant solutions.
Keywords: supervised learning deep learning; social networks; insult detection.
DOI: 10.1504/IJDATS.2022.129175
International Journal of Data Analysis Techniques and Strategies, 2022 Vol.14 No.4, pp.336 - 349
Accepted: 27 Oct 2022
Published online: 27 Feb 2023 *