Modelling human boredom at work: mathematical formulations and a probabilistic framework

Autor: Ming Liang, Nader Azizi, Saeed Zolfaghari
Rok vydání: 2013
Předmět:
Zdroj: Journal of Manufacturing Technology Management. 24:711-746
ISSN: 1741-038X
DOI: 10.1108/17410381311327981
Popis: PurposeBoredom is believed to be the common cause of workers' absenteeism, accidents, job dissatisfaction, and performance variations in manufacturing environments with repetitive jobs. Effectively measuring and possibly predicting job boredom is the key to the design and implementation of appropriate strategies to deal with such undesirable emotional state. The purpose of this paper is to present new methodologies to measure and predict human boredom at work.Design/methodology/approachTwo series of mathematical formulations, linear and nonlinear, to describe the variation of human boredom at work are first presented. Given the complexity of human emotions, the authors also present a probabilistic framework based on state‐of‐the‐art Bayesian networks to model employees' boredom at work.FindingsThe proposed methods centre on the prediction and measurement of human boredom at work. They enable managers to take proactive actions to deal with human boredom at work. Examples of such actions are task rotation and job redesign.Research limitations/implicationsThe proposed methods are verified using a number of cases describing a set of phenomena that may occur in the real world. However, further research is required to demonstrate the validity of the models using real world data.Originality/valueAccording to accessible literature, human boredom is being measured by self reporting scales thus far. This study describes and demonstrates analytical approaches to model human boredom at work.
Databáze: OpenAIRE