1. A Novel Three-Level Voting Model for Detecting Misleading Information on COVID-19
- Author
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Shovan Bhowmik, Priyo Ranjan Kundu Prosun, and Kazi Saeed Alam
- Subjects
Ensemble forecasting ,business.industry ,Computer science ,media_common.quotation_subject ,Feature extraction ,Machine learning ,computer.software_genre ,Categorization ,Voting ,Classifier (linguistics) ,Benchmark (computing) ,Social media ,Artificial intelligence ,business ,computer ,Reliability (statistics) ,media_common - Abstract
Fake or misleading information detection is attracting researchers from all around the world in recent years as both society and the political world are greatly influenced by it. Moreover, various popular social media sites such as Twitter, Facebook, Instagram, etc. have accelerated the increase in the dissemination of rumors, false cures, conspiracy theories in the forms of posts, articles, videos, URLs during the COVID-19 pandemic. Thus there is an extensive need to find new techniques to verify or check the reliability of the online contents, which has inspired us to conduct this research to automatically detect misleading information. Our main aim is to create a three-level voting model to categorize the information into two classes: ‘real’ or ‘misleading’. Five conventional mining algorithms and three ensemble models have been deployed with two distinct feature extraction techniques accompanying multiple sets of n-gram profiles on a benchmark dataset. Our research outcome shows that the Linear Support Vector Machine algorithm and Bagging ensemble model classifier have carried out significantly in recognizing misleading information which has been surpassed by our proposed novel three-level voting scheme. Our proposed model yields the best performance using TF-IDF for feature extraction with 96% accuracy.
- Published
- 2021
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