Exploring Empirical-Theoretical Approaches for Conceptualizing and Specifying Cognitive Solutions in Complex Informally Structured Domains
Fecha
2025-01-12Autor
Olmos Sanchez, Karla Miroslava
Maldonado-Macías, Aide Aracely
Sánchez Solís, Julia Patricia
Jiménez-Galina, Alicia
Licona Olmos, Jazmín Georgina
206560
Metadatos
Mostrar el registro completo del ítemResumen
The involvement of multiple social, technical, cultural, and scientific aspects makes domains concerning the human factor inherently complex. For instance, work stress, with its dynamic nature and ambiguous boundaries, falls under what is referred to as a complex informal structured domain (CISD). Organizational decision-making, competitive advantage, innovation, and employee empowerment heavily rely on cognitive solutions enabling a profound understanding of complex scenarios and their implications. However, implementing such cognitive solutions in computer science within these domains presents a significant challenge. This article thoroughly explores and analyzes three empirical-theoretical approaches to conceptualize and specify cognitive solutions for real-world problems in CISD. These approaches involve a literature review on the use of specific machine learning artificial intelligence techniques to build work stress prevention models, employing cognitive solutions like ontologies, and integrating a systemic methodological framework for conceptualization and specification. This exploration underscores the necessity for a methodological model that effectively supports the conceptualization and specification of cognitive solutions in CISD. Additionally, the article elucidates the progress of the proposed methodological model, utilizing systemic thinking and knowledge management to develop effective, desirable, and feasible cognitive solutions that robustly facilitate decision-making in organizations.
Colecciones
El ítem tiene asociados los siguientes archivos de licencia:

