Towards better representation learning using hybrid deep learning model for fake news detection

被引:0
作者
Nabeela Kausar
Asghar AliKhan
Mohsin Sattar
机构
[1] Iqra University Islamabad Campus,Department of Computing and Technology
[2] Data Science Lab,undefined
[3] Artificial Intelligence Technology Center,undefined
[4] National Center for Physics,undefined
来源
Social Network Analysis and Mining | 2022年 / 12卷
关键词
Fake news; Long short-term memory (LSTM); -gram model; Representation learning; Fake news on social media; Fake using deep learning;
D O I
暂无
中图分类号
学科分类号
摘要
Detection of Fake news articles over the internet is a difficult task due to huge amount of content being proliferated. Fake news proliferation is a major issue as it has socio-political impacts and it may change the opinion of the people. The easy dissemination of information through social media has added to exponential growth of fake news. Thus, it is challenging task to detect the fake news on the internet. In the literature, fake news detection techniques have been developed using machine learning approaches. Usually, fake news consists of sequential data. Recently, different variants of the Recurrent Neural Networks have been used for fake news detection due to better handling of sequential data and preserving better context information. Due to diversity in fake news data there is still need to develop the fake news detection techniques with better performance. In this work, we have developed a hybrid fake news detection model which aims at better representation learning to enhance the fake news detection performance. The proposed hybrid model has been developed using N-gram with TF-IDF to extract the content-based features then sequential features have been extracted using deep learning model [LSTM or bidirectional Encoder representation from transformers (BERT)]. The performance of the proposed approach has been evaluated using two publicly available datasets. It is observed from results that the proposed approach performs better the fake news detection approaches developed in the literature. The proposed approach has given the accuracies of 96.8% and 94% for the WELFAKE and KaggleFakeNews datasets, respectively.
引用
收藏
相关论文
共 20 条
[1]  
Aurpa TT(2021)Abusive Bangla comments detection on Facebook using transformer-based deep learning models Soc Netw Anal Min 12 24-213
[2]  
Sadik R(2020)An emotional analysis of false information in social media and news articles ACM Trans Internet Technol 20 19-11788
[3]  
Ahmed MS(2019)Behind the cues: a benchmarking study for fake news detection Expert Syst Appl 128 201-14
[4]  
Ghanem B(2022)Information dissemination modeling based on rumor propagation in online social networks with fuzzy logic Soc Netw Anal Min 12 34-893
[5]  
Rosso P(2019)exBAKE: automatic fake news detection model based on bidirectional encoder representations from transformers (BERT) Appl Sci 9 4062-undefined
[6]  
Rangel F(2021)FakeBERT: Fake news detection in social media with a BERT-based deep learning approach Multimedia Tools Appl 80 11765-undefined
[7]  
Gravanis G(2018)Analytical sociology and computational social science J Comput Soc Sci 1 3-undefined
[8]  
Hosseini S(2022)Social media analytics system for action inspection on social networks Soc Netw Anal Min 12 33-undefined
[9]  
Zandvakili A(2021)Knowledge-aware multi-modal adaptive graph convolutional networks for fake news detection ACM Trans Multimedia Comput Commun Appl 17 98-undefined
[10]  
Jwa H(2022)A survey on the use of graph convolutional networks for combating fake news Future Internet 14 70-undefined