Mervat Ragab Bakry Ramadan

Teaching Assistant

Basic Informations

C.V

2023 Department of Information Systems - College of Computing and Artificial Intelligence. Helwan University
Master's Degree in Information Systems - “Personality classification model for social network profiles based on their activities and contents”

2012-2016 - Department of Information Systems - College of Computing and Artificial Intelligence. Beni Suef University
Bachelor's. Information systems with a general rating of excellent

Master Title

Psychological Personality Classification on User Generated Content by Using Machine Learning Techniques

Master Abstract

Social networks have become a vital part of everyday life, particularly after the latest technologies such as tablets, smartphones, and laptops have become widespread. Individuals spend a lot of time on social media and express their feelings and opinions through status updates, comments, and updates, which could be a way to understand and classify their personalities. The personalities in psychological science are categorized into five classes according to the Big-5 model (Openness, Extraversion, Consciousness, Agreeableness, and Neurotic). This model demonstrates the key features with their weights for each personality. In this thesis, a proposed model is developed for detecting personality features from users’ activities in social networks. In this model, machine learning techniques are used for predicting the personalities by assigning a score to each Big-five trait and sorting them in descending order. The personality classification model will be useful in developing a better understanding of the user profile and specifically targeting users with appropriate advertising. Any social media network user's personality can be predicted by using their posts and status updates to get better accuracy. The experimental results of the model in this study provide an enhancement because it can predict the precise score of one user in each factor of the Big- five. In this study, the proposed model is based on the LinearSVC and was tested on a dataset extracted from Facebook and manually classified posts into 31 classes by experts, and it achieved 92.52% accuracy.

PHD Title

Not found

PHD Abstract

Not found

All rights reserved ©Mervat Ragab Bakry Ramadan