Convolutional neural network with margin loss for fake news detection

Abstract The advent of online news platforms such as social media, news blogs, and online newspapers in recent years and their facilitated features such as swift information flow, easy access, and low costs encourage people to seek and raise their information by consuming their provided news. Furthermore, these platforms increase the opportunities for deceiver parties to influence public opinion and awareness by producing fake news, i.e., the news which consists of false and deceptive information and is published for achieving specific political and economic gains. Since the discerning of fake news through their contents by individuals is very difficult, the existence of an automatic fake news detection approach for preventing the spread of such false information is mandatory. In this paper, Convolutional Neural Networks (CNN) with margin loss and different embedding models proposed for detecting fake news. We compare static word embeddings with the non-static embeddings that provide the possibility of incrementally up-training and updating word embedding in the training phase. Our proposed architectures are evaluated on two recent well-known datasets in the field, namely ISOT and LIAR. Our results on the best architecture show encouraging performance, outperforming the state-of-the-art methods by 7.9% on ISOT and 2.1% on the test set of the LIAR dataset.

[1]  Diana Inkpen,et al.  Exploring deep neural networks for multitarget stance detection , 2018, Comput. Intell..

[2]  Anastasios Tefas,et al.  Face Verification and Recognition for Digital Forensics and Information Security , 2019, 2019 7th International Symposium on Digital Forensics and Security (ISDFS).

[3]  Zhidong Deng,et al.  Densely Connected CNN with Multi-scale Feature Attention for Text Classification , 2018, IJCAI.

[4]  Yann LeCun,et al.  Dimensionality Reduction by Learning an Invariant Mapping , 2006, 2006 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'06).

[5]  Nripendra P. Rana,et al.  Attention-Based LSTM Network for Rumor Veracity Estimation of Tweets , 2020, Information Systems Frontiers.

[6]  Yoon Kim,et al.  Convolutional Neural Networks for Sentence Classification , 2014, EMNLP.

[7]  Geoffrey E. Hinton,et al.  Dynamic Routing Between Capsules , 2017, NIPS.

[8]  Jimmy Ba,et al.  Adam: A Method for Stochastic Optimization , 2014, ICLR.

[9]  Yimin Chen,et al.  Automatic deception detection: Methods for finding fake news , 2015, ASIST.

[10]  Issa Traoré,et al.  Detection of Online Fake News Using N-Gram Analysis and Machine Learning Techniques , 2017, ISDDC.

[11]  Jeffrey Pennington,et al.  GloVe: Global Vectors for Word Representation , 2014, EMNLP.

[12]  Sebastian Tschiatschek,et al.  Fake News Detection in Social Networks via Crowd Signals , 2017, WWW.

[13]  James Philbin,et al.  FaceNet: A unified embedding for face recognition and clustering , 2015, 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[14]  Qiang Zhang,et al.  Reply-Aided Detection of Misinformation via Bayesian Deep Learning , 2019, WWW.

[15]  Meng Yang,et al.  Large-Margin Softmax Loss for Convolutional Neural Networks , 2016, ICML.

[16]  Preslav Nakov,et al.  Unsupervised User Stance Detection on Twitter , 2019, ICWSM.

[17]  Francesco Marcelloni,et al.  A survey on fake news and rumour detection techniques , 2019, Inf. Sci..

[18]  Benjamin C. M. Fung,et al.  Detecting breaking news rumors of emerging topics in social media , 2020, Inf. Process. Manag..

[19]  Chu-Ren Huang,et al.  Fake News Detection Through Multi-Perspective Speaker Profiles , 2017, IJCNLP.

[20]  William Yang Wang “Liar, Liar Pants on Fire”: A New Benchmark Dataset for Fake News Detection , 2017, ACL.

[21]  Verónica Pérez-Rosas,et al.  Automatic Detection of Fake News , 2017, COLING.

[22]  Fenglong Ma,et al.  EANN: Event Adversarial Neural Networks for Multi-Modal Fake News Detection , 2018, KDD.

[23]  Simrat Ahluwalia,et al.  Fake News Detection: A Deep Learning Approach , 2018 .

[24]  Philip S. Yu,et al.  Double Embeddings and CNN-based Sequence Labeling for Aspect Extraction , 2018, ACL.

[25]  Dinesh Kumar Vishwakarma,et al.  Fake news, rumor, information pollution in social media and web: A contemporary survey of state-of-the-arts, challenges and opportunities , 2020, Expert Syst. Appl..

[26]  Jie Cao,et al.  Dual Cross-Entropy Loss for Small-Sample Fine-Grained Vehicle Classification , 2019, IEEE Transactions on Vehicular Technology.

[27]  Qiang Zhang,et al.  From Stances' Imbalance to Their HierarchicalRepresentation and Detection , 2019, WWW.

[28]  Sungyong Seo,et al.  CSI: A Hybrid Deep Model for Fake News Detection , 2017, CIKM.

[29]  Kathleen M. Carley,et al.  Parameterized Convolutional Neural Networks for Aspect Level Sentiment Classification , 2019, EMNLP.

[30]  Alfonso J. García-Cerezo,et al.  CNN-Based Methods for Object Recognition With High-Resolution Tactile Sensors , 2019, IEEE Sensors Journal.

[31]  Shutao Li,et al.  A CNN With Multiscale Convolution and Diversified Metric for Hyperspectral Image Classification , 2019, IEEE Transactions on Geoscience and Remote Sensing.

[32]  Yuan Luo,et al.  Graph Convolutional Networks for Text Classification , 2018, AAAI.