Fig. 1. Reuters Institute Digital News Report 2018
Fig. 2. Fake Information
Fig. 3. Fake news Paper Type
Fig. 4. Fake news Paper Dataset
Fig. 5. Fakenews Paper Language
Fig. 6. Fake news Paper Method
Table 1. Summary of works
References
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