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Open AccessJournal ArticleDOI

CoAID-DEEP: An Optimized Intelligent Framework for Automated Detecting COVID-19 Misleading Information on Twitter

TLDR
In this article, an updated deep neural network for identification of false news was proposed for detecting false news in tweets passing on data with respect to COVID-19 information, and the results obtained with the proposed framework reveal high accuracy in detecting Fake and non-Fake tweets containing COVID19 information.
Abstract
COVID-19 has affected all peoples’ lives Though COVID-19 is on the rising, the existence of misinformation about the virus also grows in parallel Additionally, the spread of misinformation has created confusion among people, caused disturbances in society, and even led to deaths Social media is central to our daily lives The Internet has become a significant source of knowledge Owing to the widespread damage caused by fake news, it is important to build computerized systems to detect fake news The paper proposes an updated deep neural network for identification of false news The deep learning techniques are The Modified-LSTM (one to three layers) and The Modified GRU (one to three layers) In particular, we carry out investigations of a large dataset of tweets passing on data with respect to COVID-19 In our study, we separate the dubious claims into two categories: true and false We compare the performance of the various algorithms in terms of prediction accuracy The six machine learning techniques are decision trees, logistic regression, k nearest neighbors, random forests, support vector machines, and naive Bayes (NB) The parameters of deep learning techniques are optimized using Keras-tuner Four Benchmark datasets were used Two feature extraction methods were used (TF-ID with N-gram) to extract essential features from the four benchmark datasets for the baseline machine learning model and word embedding feature extraction method for the proposed deep neural network methods The results obtained with the proposed framework reveal high accuracy in detecting Fake and non-Fake tweets containing COVID-19 information These results demonstrate significant improvement as compared to the existing state of art results of baseline machine learning models In our approach, we classify the data into two categories: fake or nonfake We compare the execution of the proposed approaches with Six machine learning procedures The six machine learning procedures are Decision Tree (DT), Logistic Regression (LR), K Nearest Neighbor (KNN), Random Forest (RF), Support Vector Machine (SVM), and Naive Bayes (NB) The parameters of deep learning techniques are optimized using Keras-tuner Four Benchmark datasets were used Two feature extraction methods were used (TF-ID with N-gram) to extract essential features from the four benchmark datasets for the baseline machine learning model and word embedding feature extraction method for the proposed deep neural network methods The results obtained with the proposed framework reveal high accuracy in detecting Fake and non-Fake tweets containing COVID-19 information These results demonstrate significant improvement as compared to the existing state of art results of baseline machine learning models

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Citations
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Journal ArticleDOI

COVID-19 Misinformation Online and Health Literacy: A Brief Overview.

TL;DR: In this article, the authors provide a quick overview of the magnitude of the problem of COVID-19 misinformation on social media, its devastating effects, and its intricate relation to digital health literacy.
Journal ArticleDOI

ANTi-Vax: a novel Twitter dataset for COVID-19 vaccine misinformation detection

- 01 Feb 2022 - 
TL;DR: In this article , a machine learning-based COVID-19 vaccine misinformation detection framework was introduced to detect vaccine misinformation on social media platforms, where the classification models explored were XGBoost, LSTM and BERT transformer model.
Journal ArticleDOI

Application of Deep Learning Techniques in Diagnosis of Covid-19 (Coronavirus): A Systematic Review

TL;DR: DL-based Covid-19 detection systems are the key focus of this review article, evaluating causal agents, pathophysiology, immunological reactions, and epidemiological illness.
Journal ArticleDOI

COVID-19 outbreak: An ensemble pre-trained deep learning model for detecting informative tweets

TL;DR: This article used a majority voting technique-based ensemble deep learning (MVEDL) model to identify COVID-19 related (INFORMATIVE) tweets and investigated how to use the MVEDL model for sentiment analysis on 226668 unlabeled COVID19 tweets and their informative tweets.
Journal ArticleDOI

An efficient multi-thresholding based COVID-19 CT images segmentation approach using an improved equilibrium optimizer

TL;DR: In this article , an improved version of the EO that combines the standard operators with the dimension learning hunting (DLH) is introduced, which is tested over the CEC 2020 benchmark functions.
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