A Review: Machine Learning Approach and Deep Learning Approach for Fake News Detection
Journal: International Journal of Emerging Trends in Engineering Research (IJETER) (Vol.9, No. 8)Publication Date: 2021-08-12
Authors : Sumit Kumar Jyoti Tiwari;
Page : 1046-1050
Keywords : Convolutional neural network; support vector machine; LSTM.;
Abstract
Increasing number of social media platforms, emerging new technologies, and population growth which results in the rate of using social media has increased rapidly. With an increasing number of users on online platforms comes to a variety of problems like fake news. The extensive growth of fake news on social media can have a serious impact on the real world and became a cause of concern for net users and governments all over the world. Distinguishing between real news and fake news becoming more challenging. The amount of fake news has become a disguise. In this paper, we have done a survey on detection techniques for fake news using Algorithms and Deep learning techniques. We have compared machine learning algorithms like Naïve-Bayes, Decision tree, SVM, Adaboost, etc. Comparing the accuracy
Other Latest Articles
- ТАНИҚЛИ АДАБИЁТШУНОС-ФОЛЬКЛОРИСТ
- An Analytical Study of Relationship between Socio-Economic Profile and Impact of Minimum Support Price Scheme on Small Farmers of Begusarai District of Bihar
- Association between Knowledge, Adoption and Socio-Economic Profile of Maize Growers regarding Improved Maize Production Practices in Begusarai District of Bihar
- Constraints faced by the Respondents in Cultivation of Betel Vine in Malappuram District of Kerala
- Information Seeking Behavior and Utilization of Social Media for Agricultural Information by Farmers of Prayagraj District of Uttar Pradesh
Last modified: 2021-08-12 20:51:06