Psychology and Behavioral Sciences

Special Issue

Advances in Cognitive Modeling using Statistical-Relational Machine Learning & Uncertainty Theory

Submission deadline: Sep. 30, 2024
Status: Open for Submission
In the ever-evolving landscape of industrial and organizational psychology, understanding human cognition and behavior has become paramount for optimizing individual and organizational performance. Traditional approaches to studying human factors and decision-making have often relied on static models and limited data sets. However, with the advent of advanced technologies and the increasing availability of vast amounts of data, new frontiers have opened up, offering novel avenues to explore the complexities of human cognition. One such promising area is the integration of relational machine learning and uncertainty theory, which holds immense potential for unraveling the intricacies of human cognition in the context of industrial and organizational psychology.
Relational machine learning, a branch of artificial intelligence, focuses on analyzing complex networks of relationships and interactions among variables, thereby capturing the dynamic nature of human cognition. By considering the interdependencies and contextual influences between various psychological constructs, relational machine learning allows for a more nuanced understanding of how these factors shape decision-making processes, behavior patterns, and organizational dynamics. This approach goes beyond traditional linear models, enabling researchers to identify hidden patterns, uncover nonlinear relationships, and make accurate predictions.
Uncertainty theory, on the other hand, provides a framework for handling and quantifying uncertainty in decision-making and cognitive processes. In industrial and organizational psychology, where individuals are constantly confronted with ambiguous and uncertain situations, uncertainty theory offers valuable insights into how people cope with uncertainty, make judgments, and form beliefs. By incorporating uncertainty measures into relational machine learning models, researchers can better capture the inherent uncertainties and variability in human cognition, thus enhancing the accuracy and robustness of their analyses.
The intersection of relational machine learning and uncertainty theory presents a unique opportunity to advance our understanding of human cognition in the industrial and organizational context. By leveraging the power of these approaches, researchers can delve into a wide range of topics, such as human capital management, psychopharmacology, behavioral economics, organizational behavior, and decision-making processes. For instance, relational machine learning can shed light on the complex network of relationships between employee traits, job satisfaction, and organizational performance, enabling organizations to design more effective human resource strategies. Moreover, this integrated approach can provide valuable insights into the impact of contextual factors, such as organizational culture, leadership styles, and team dynamics, on individual and collective cognitive processes. By capturing the nuances of these interactions, researchers can inform evidence-based interventions and strategies to optimize organizational functioning, enhance employee well-being, and improve decision-making.
In this special issue, we aim to bring together leading researchers and practitioners from various disciplines, including industrial and organizational psychology, machine learning, cognitive science, and uncertainty theory. Through a collection of high-quality research articles, we seek to explore the potential of relational machine learning and uncertainty theory in advancing our understanding of human cognition in industrial and organizational psychology. By fostering interdisciplinary collaboration, we aspire to propel the field forward, paving the way for innovative approaches and transformative insights.
This special issue offers a platform to showcase cutting-edge research, present novel methodologies, and promote collaborations that bridge the gap between theory and practice. By harnessing the power of relational machine learning and uncertainty theory, we endeavor to unlock the hidden intricacies of human cognition and contribute to the development of evidence-based strategies for improving individual and organizational performance in the ever-changing landscape of industrial and organizational psychology.


  1. Relational Machine Learning
  2. Human Resources Management
  3. Data Mining
  4. Network Analysis
  5. Predictive Analytics
  6. Logic
  7. Decision Support Systems
  8. Organizational Design
Lead Guest Editor
Guest Editor
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