Unlocking Potential: Personality-Aware TVET Course Recommendations Revolutionize Skill Development

Abstract

Personality is a complex amalgamation of ideas, behaviors, and social constructs that shape our self-perception and influence our interactions with others. It tends to remain relatively stable over time. The development of personality-aware recommendation systems is driven by the understanding that human behavior and personality play a significant role in skill acquisition, career progression, and overall success. Technical and Vocational Education and Training (TVET) is crucial in building a skilled workforce, particularly in response to the demands of Industry 5.0. Unlike conventional recommendation systems, personality-aware systems effectively address persistent challenges such as the cold start problem and data sparsity. This paper introduces the Personality-aware TVET Course Recommender System (TCRS), which suggests the top three TVET courses by considering trainees' personality traits, demographic information, and the historical success patterns of previous trainees in similar courses. A standout feature of the TCRS is its Academic System Learner, which continuously incorporates insights from individual trainees' progress in TVET courses, thereby enhancing the accuracy of its machine learning model for predictive analysis. The effectiveness of the TCRS is assessed using seven classifiers, yielding notable prediction accuracies: 99% with Random Forest, 98% with Decision Tree, and 89% with k-Nearest Neighbors (kNN). In real-time testing, the TCRS demonstrated an accuracy rate of 84%.

Authors and Affiliations

Rana Hammad Hassan, Malik Tahir Hassan

Keywords

Related Articles

Catalytic PerformanceofElectro-Oxidative Natural Manganese Sand forAmmonium Nitrogen Removal

The environmental risks associated with ammonium nitrogen (NH₄⁺-N) pollution have led to a growing focus on prevention. Electrochemical advanced oxidation is an effective and ecofriendly method that only requires electr...

Optimizing Human Activity Recognition with Ensemble Deep Learning on Wearable Sensor Data

In recent years, the research community has shown a growing interest in the continuous temporal data gathered from motion sensors integrated into wearable devices. This type of data is highly valuable for analyzing hum...

Comprehensive Review on Postoperative Central Nervous System Infections (PCNSI): Causes, Prevention Strategies, and Therapeutic Approaches using Computer Based Electronic Health Record (EHR)

The central nervous system is susceptible to various infections. Over centuries, bacterial infections have proven lethal in various surgical procedures. Infections that occur after craniotomy are often due to the reope...

AI-Based Predictive Tool-Life Computation in Manufacturing Industry

For maximum productivity and optimal utilization of tools, predictive maintenance serves as a standard operation procedure in the manufacturing industry. However, unnecessary or delayed maintenance both causes increas...

Predictive Analysis and Email CategorizationUsing Large Language Models

With the global rise in internet users, email communication has become an integral part of daily life. Categorizing emails based on their intent can significantly save time and boost productivity. While previous resear...

Download PDF file
  • EP ID EP760416
  • DOI -
  • Views 35
  • Downloads 0

How To Cite

Rana Hammad Hassan, Malik Tahir Hassan (2024). Unlocking Potential: Personality-Aware TVET Course Recommendations Revolutionize Skill Development. International Journal of Innovations in Science and Technology, 6(3), -. https://europub.co.uk/articles/-A-760416