EDITOR BOARD MEMBERS :  VIEW ALL

Dr Bikasih Thapa & Dr Maheswar Prasad (Nepal) - Hideo Wada MD PhD (japan) - Dr a Lavra Castrocatesana (Mexico) - Dr Mrs N.M. Hettiarachechui (Srilanka) - Dr Jorge Aldrete Velasco (Mexico) - Prof Hans Peter Kohler (Switzerland) - Dr Hermanus Suhartono S Sp.OG(K) PhD - Dr Isabel Pinheiro (Portugal) - Dr Suranga (Srilanka) - Jovia Dino Jansen Amsterdam,Holand - Hideo Wada MD PhD University Graduate School of Medicine Departement of Moleculer and Laboratory Medicine Japan - DR Bikash Thapa Internal Medicine Nepal University - DR Maheswar Prasad Internal Medicine Nepal University - Dr a Lavra Castro Castresana Colegio de Medicina interna de Mexico - Dr Suransa Manilgama University of Srilanka Internal Departement Medicine - Dr Mrs N.M. Hettiarachechui University of Medicine Srilanka - Dr Jorge Aldrete Velaso .Colegio de Medicina Interna de Mexico - Prof Hans Peter Kholer M.D FACD Profesor of Medicine University ot Switzerland - Dr Ramezan Ali Atace . Baqiyatallah University of Medical Sciences Departement of Micrology Tehran Iran - Ezekiel Wong Toh Yoon Dr. Gastroenterology of Japan - D Eric Beck,MD Bethesda Hospital Capitol Boelevard St Paul USA - Dr Emine Guderen Sahin Istambul University of Internal Medicine Turky - Dr Selmin Toplan Istambul University - Dr Nicholas New Australia - Dr Kughan Govinden. Tropical Infection of Internal Medicine Malaysia - Dr Godfrey M Rwegerera Princes Marina Hospital Bostwana -

Title : FAKE SOCIAL PROFILE DETECTION USING MACHINE LEARNING

Author : TALARI SIVALAKSHMI,K BALAJI SUNIL CHANDRA, KUMMARA RANGA SWAMY

Abstract :

One of the most popular and widely utilised platforms for digital marketing, social media allows firms to keep tabs on public trends and preferences, and it also provides valuable insights into consumer behaviour. The number of false social media accounts that disseminate misinformation is on the rise. In order to address the issues surrounding the identification of false social media profiles, this study examines several machine learning techniques.Jupyter Notebook makes use of Python and a number of machine learning and data analytics libraries, including Numpy, Pandas, Sklearn, and others. Using AUC Score, Confusion Matrix, and total number of Fake and Genuine Users discovered, this article compares three machine learning algorithms: Support Vector Machines (SVM), Random Forest, and Neural Networks. For easier examination and comparison across all methods, results are shown as graphs. The dataset that was used for this project can be found in the following link: At t

[ PDF ]

Editor Board
Editor in chief

Dr. Arend L Mapanawang, Sp.PD, FINASIM, PhD

Subject Area

Every article submitted to IJHMCR is screened by Turnitin software.

Indexing

PENGUNJUNG KAMI DARI BERBAGAI BELAHAN DUNIA