SOTAVerified

Fake News Detection

Fake News Detection is a natural language processing task that involves identifying and classifying news articles or other types of text as real or fake. The goal of fake news detection is to develop algorithms that can automatically identify and flag fake news articles, which can be used to combat misinformation and promote the dissemination of accurate information.

Papers

Showing 126150 of 490 papers

TitleStatusHype
Data Augmentation using Machine Translation for Fake News Detection in the Urdu Language0
Combat COVID-19 Infodemic Using Explainable Natural Language Processing Models0
Evaluating the Efficacy of Large Language Models in Detecting Fake News: A Comparative Analysis0
Collaborative Evolution: Multi-Round Learning Between Large and Small Language Models for Emergent Fake News Detection0
CLFD: A Novel Vectorization Technique and Its Application in Fake News Detection0
Annotation-Scheme Reconstruction for “Fake News” and Japanese Fake News Dataset0
Classifying COVID-19 Related Tweets for Fake News Detection and Sentiment Analysis with BERT-based Models0
ClaimTrust: Propagation Trust Scoring for RAG Systems0
Evaluating Deep Learning Approaches for Covid19 Fake News Detection0
Evolving to the Future: Unseen Event Adaptive Fake News Detection on Social Media0
ExFake: Towards an Explainable Fake News Detection Based on Content and Social Context Information0
Claim extraction from text using transfer learning.0
Claim Detection in Biomedical Twitter Posts0
Annotation-Scheme Reconstruction for "Fake News" and Japanese Fake News Dataset0
CIMTDetect: A Community Infused Matrix-Tensor Coupled Factorization Based Method for Fake News Detection0
Annotating and Analyzing Biased Sentences in News Articles using Crowdsourcing0
Adversarial Examples for Natural Language Classification Problems0
Enhancing Bangla Fake News Detection Using Bidirectional Gated Recurrent Units and Deep Learning Techniques0
An exploration of features to improve the generalisability of fake news detection models0
Challenges and Innovations in LLM-Powered Fake News Detection: A Synthesis of Approaches and Future Directions0
Adversarial Data Poisoning for Fake News Detection: How to Make a Model Misclassify a Target News without Modifying It0
BRENDA: Browser Extension for Fake News Detection0
BREAKING! Presenting Fake News Corpus for Automated Fact Checking0
A New cross-domain strategy based XAI models for fake news detection0
Adaptive Interaction Fusion Networks for Fake News Detection0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Sepúlveda-Torres R., Vicente M., Saquete E., Lloret E., Palomar M. (2021)Weighted Accuracy90.73Unverified
2ZAINAB A. JAWAD, AHMED J. OBAID (CNN and DNN with SCM, 2022)Weighted Accuracy84.6Unverified
3Bhatt et al.Weighted Accuracy83.08Unverified
4Bi-LSTM (max-pooling, attention)Weighted Accuracy82.23Unverified
53rd place at FNC-1 - Team UCL Machine Reading (Riedel et al., 2017)Weighted Accuracy81.72Unverified
6Neural method from Mohtarami et al. + TF-IDF (Mohtarami et al., 2018)Weighted Accuracy81.23Unverified
7Neural method from Mohtarami et al. (Mohtarami et al., 2018)Weighted Accuracy78.97Unverified
8Baseline based on skip-thought embeddings (Bhatt et al., 2017)Weighted Accuracy76.18Unverified
9Baseline based on word2vec + hand-crafted features (Bhatt et al., 2017)Weighted Accuracy72.78Unverified
10Neural baseline based on bi-directional LSTMs (Bhatt et al., 2017)Weighted Accuracy63.11Unverified
#ModelMetricClaimedVerifiedStatus
1Persuasive Writing StrategyF155.8Unverified
2HiSSF153.9Unverified
3CofCEDF151.1Unverified
4ReActF149.8Unverified
5Standard prompting with articlesF147.9Unverified
6CoTF144.4Unverified
#ModelMetricClaimedVerifiedStatus
1Text-Transformers + Five-fold five model cross-validation +Pseudo Label AlgorithmUnpaired Accuracy98.5Unverified
2Grover-MegaUnpaired Accuracy92Unverified
3Grover-LargeUnpaired Accuracy80.8Unverified
4BERT-LargeUnpaired Accuracy73.1Unverified
5GPT2 (355M)Unpaired Accuracy70.1Unverified
#ModelMetricClaimedVerifiedStatus
1Hybrid CNNs (Text + All)Test Accuracy0.27Unverified
2CNNsTest Accuracy0.27Unverified
3Hybrid CNNs (Text + Speaker)Test Accuracy0.25Unverified
4Bi-LSTMsTest Accuracy0.23Unverified
#ModelMetricClaimedVerifiedStatus
1Auxiliary IndicBertF1 score0.77Unverified
2Auxiliary IndicBertF1 score0.57Unverified
#ModelMetricClaimedVerifiedStatus
1Ensemble Model + Heuristic Post-ProcessingF10.99Unverified
#ModelMetricClaimedVerifiedStatus
1SEMI-FNDAccuracy85.8Unverified
#ModelMetricClaimedVerifiedStatus
1Convolutional Tsetlin Machine1:1 Accuracy91.21Unverified
#ModelMetricClaimedVerifiedStatus
1TextRNNAccuracy92.4Unverified
#ModelMetricClaimedVerifiedStatus
1SEMI-FNDAccuracy86.83Unverified