Chatbots and Socio-Emotional Cues in Corporate E-Learning: Evidence on Learning and Dropout

Authors

DOI:

https://doi.org/10.29393/RAN12-17CSMM60017

Keywords:

E-learning, Chatbot, Emojis, Dropout, Business training

Abstract

Purpose: This study examined whether instructional chatbots and emojis improved learning outcomes and reduced dropout in asynchronous corporate training. It also explored participant performance profiles through agent-based simulation.
Methodology: The study followed three phases: chatbot development, implementation of a four-week private online course using a 2 × 2 factorial experiment (chatbot: yes/no × emojis: yes/no), and simulation in NetLogo. A total of 120 employees were evenly assigned to four experimental conditions.
Results: Chatbot use and emoji presence were associated with better learning outcomes and lower dropout. The chatbot-plus-emoji condition showed the highest survival rates (68%–76%) and the lowest dropout risk (24%–32%). Posttest scores indicated significant retention after 15 days (? = 6.61, p < 0.001). The simulation reproduced the empirical ranking of the conditions and identified a high-performing profile characterized by prior experience with virtual training, longer organizational tenure, familiarity with podcasts, and stable weekly study time.
Implications: The findings indicate that combining cognitive support through chatbots with socio-emotional signaling through emojis can strengthen persistence in corporate e-learning.
Originality: This study integrates factorial experimentation and agent-based simulation to explain how expressive digital interactions support learning continuity.

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Published

2026-05-01

How to Cite

Medina-Labrador, M. . ., Marroquín-Ciendúa, F., Alvarado-Perdomo, L. C., Caballero-Villalobos, J. ., Hernández-Martínez, J. A., & Vargas-Méndez, J. C. (2026). Chatbots and Socio-Emotional Cues in Corporate E-Learning: Evidence on Learning and Dropout. RAN - Revista Academia & Negocios, 1-13. https://doi.org/10.29393/RAN12-17CSMM60017

Issue

Section

Research Article

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