Implementing a Hybrid method For Fake News Detection
Journal: International Journal of Emerging Trends in Engineering Research (IJETER) (Vol.10, No. 12)Publication Date: 2022-12-10
Authors : Sumit Kumar Jyoti Tiwari;
Page : 461-465
Keywords : Fake news Data mining; Naïve Bayes; SVM; NBSVM;
Abstract
The increasing consumption of news on social media platforms is mainly due to its cheap and attractive nature and it's capable of spreading the fake news. The spread of fake news has negative effects on society. Some people make it up to get attention or gain political gain. Machine learning and deep learning techniques have been developed to detect fake news. However, they tend to generate inaccurate reports. To detect fake news, we used a Hybrid model that combines SVM and Naive Bayes (NBSVM) framework. It was able to classify the news with an accuracy of 84.85%. This model was tested and trained on a fake news challenge dataset. We used various evaluation metrics (precision, recall, F1- measure, etc.) to measure the model's efficiency
Other Latest Articles
- Design of Improved 3D Radar charts for Multidimensional Data Visualization
- Design of Intelligent Ultrasonic Guided Vehicle
- Spoken Language Identification using CNN with Log Mel Spectrogram Features in Indian Context
- Simulation Based Analysis of Hierarchical Timed Colored Petri Nets Model of the Restaurant Food Serving Process
- On the Adoption of Emerging Technologies in Securing and Confidentializing the Healthcare Medical Data: Survey Study
Last modified: 2022-12-10 14:13:06