Ml Meets EI: The Role of Machine Learning in Enhancing Emotional Intelligence

Authors

  • Neeru Narang Assistant Professor, Department of computer science, Arya College for Boys, Ludhiana, India
  • Neha Marwaha Assistant Professor, Department of computer science, Arya College for Boys, Ludhiana, India

Keywords:

Emotional Intelligence, Machine Learning, Workplace, Behavior, Data Mining

Abstract

Emotions are a vital part of our organic make-up, and each morning they march into the workplace with us and impact our behavior. Our ultimate awareness is on Emotional Intelligence (EI) and we integrate it with data mining. Coping with employees' feelings with the usage of machine learning is one of the exceptional researches in modern global. Right here, we observe to what extent the personnel are aware of their very own self and discover the ideas and views of an individual regarding themselves and others. Without the right expertise about their persona, it will likely be very difficult for a person to control their personal feelings. This paper explores the intersection of Machine Learning (ML) and Emotional Intelligence (EI) and investigates the role of ML in enhancing EI. Emotional intelligence, which includes the ability to recognize, understand, and manage emotions in various aspects of human life. It provides a comprehensive understanding of the current state, challenges, and future prospects in this emerging field.

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Published

2024-08-02