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Book ChapterDOI

Personality Prediction of Social Network Users Using Ensemble and XGBoost

TLDR
Predicting personality using social media is a new approach where direct interaction with people can be eliminated and accurate predictions can be built and high accuracy of 82.59% with an Ensemble is indicated.
Abstract
Machine learning has gained tremendous attention from researchers recently. It has wide applications in tasks such as prediction and classification. Current work focuses on the effective detection of the personality of social network users. Personality is a combination of one’s thinking and behavior. Having knowledge about personality of a person has many applications in real world such as varied recommendation systems or HR departments. Personality of a person can be better understood by interacting with him/her. Predicting personality using social media is a new approach where direct interaction with people can be eliminated and accurate predictions can be built. Although different machine learning methods have been used by researchers recently for the task of prediction, the use of Ensembles has not been explored. Current work focuses on advanced classifiers such as XGBoost and Ensemble for prediction. Experimentation on the real-time Twitter dataset indicates high accuracy of 82.59% with an Ensemble. These results are encouraging for future research.

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Citations
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Proceedings ArticleDOI

Machine intelligence based personality prediction using social profile data

TL;DR: The aim of this research is to predict the personality of user by using the status information present in their social media profile to set up a framework that can predict the individual's personality based on Facebook user details.
Book ChapterDOI

Image Sentiment Analysis Using Deep Learning

TL;DR: It is indicative that a combination of fast recurrent neural networks and CNN may produce high accuracy with minimum time complexity, as existing researchers reflect CNN provides around 96.50% average accuracy for sentiment classification on the flicker image dataset.
Journal ArticleDOI

Knowledge Graph-Enabled Text-Based Automatic Personality Prediction

TL;DR: A novel knowledge graph-enabled approach to text-based APP that relies on the Big Five personality traits is presented, which indicated considerable improvements in prediction accuracies in all of the suggested classifiers.
Journal ArticleDOI

Comparison of machine learning algorithms for content based personality resolution of tweets

TL;DR: This study endeavored to build a system that could predict an individual's personality through SM conversation using six supervised machine learning algorithms to handle unstructured and unbalanced SM conversations.
Journal ArticleDOI

Assessing Machine Learning Techniques for Identifying Field Line Resonance Frequencies From Cross-Phase Spectra

TL;DR: This work surveys several supervised ML algorithms for identifying FLR frequencies by using measurements of the European quasi‐Meridional Magnetometer Array and evaluates the algorithm performance on four different station pairs, showing that tree‐based algorithms are robust and accurate models to achieve this goal.
References
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Proceedings ArticleDOI

Predicting Temperament from Twitter Data

TL;DR: This paper proposes a framework for temperament classification according to the theory of psychologist David Keirsey, and presents an accuracy higher than 70% for the Artisan and Guardian types.
Proceedings ArticleDOI

Predicting Emotions From Multimodal Users' Data

TL;DR: A deep multi-modal architecture for emotions predic-tion, which takes advantage of deep learning, user multimodal data and the hierarchy of human memory is presented.
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