Detection of Fake News Using Binary Classification
Journal: International Journal of Scientific Engineering and Research (IJSER) (Vol.9, No. 5)Publication Date: 2021-05-05
Authors : Abhyudya Bajpai; Amit Kumar Tripathi;
Page : 1-5
Keywords : Fake news; Binary Classification; Multinomial Na?ve Bayes algorithm; Passive Aggressive Classifier algorithm; outliers; TFIDF Vectorizer;
Abstract
The idea behind this project is to detect the accuracy of the fake news using Binary Classification such as Multinomial Na?ve Bayes, Passive Aggressive classifier. Here the two datasets are provided i.e., test dataset and train dataset. Test data is later matched with groups of train dataset and accuracy is found using Binary classification. This helps in determining whether given news is fake or real. It delivers maximum accuracy and helps to identify fabricated news. The data is pruned by removing stop words and common English words by using vectorizer.
Other Latest Articles
- Experimental Investigation of Different Electrolytes on Stainless Steel 316 Using Electrochemical Micromachining
- Study of Petrography and Ore Mineralisation of Buddini Area, Lingasugur Taluk, Hutti-Maski Schist Belt, Raichur District, Karnataka, India
- A Study on Nutritional Quality and Identification of Biogenic Amine Forming Bacteria in Marine Edible Species Portunus sanguinolentus and Penaeus notialis from Tuticorin, Southeast Coast of India
- Developing Life Skills and Tolerance among School Students towards Accelerated Digitalization
- KISAN Protest in India (The Farmer Strike): A Complete Case Study
Last modified: 2021-07-08 16:55:56