Abstract
Discrete time Markov models are used in a wide variety of social sciences. However, these models possess the memoryless property, which makes them less suitable for certain applications. Semi-Markov models allow for more flexible sojourn time distributions, which can accommodate for duration of stay effects. An overview of differences and possible obstacles regarding the use of Markov and semi-Markov models in manpower planning was first given by Valliant and Milkovich (1977). We further elaborate on their insights and introduce hybrid semi-Markov models for open systems with transition-dependent sojourn time distributions. Hybrid semi-Markov models aim to reduce model complexity in terms of the number of parameters to be estimated by only taking into account duration of stay effects for those transitions for which it is useful. Prediction equations for the stock vector are derived and discussed. Furthermore, the insights are illustrated and discussed based on a real world personnel dataset. The hybrid semi-Markov model is compared with the Markov and the semi-Markov models by diverse model selection criteria.
Highlights
Manpower planning is a key aspect of modern human resources management
The hybrid semi-Markov model is compared with the Markov model as well as with the semi-Markov model based on several criteria
On the other hand, they cannot be used to account for duration of stay effects and they are less flexible due to the so-called memoryless property, which implies that their sojourn time distributions are geometrical distributed by construction
Summary
Manpower planning is a key aspect of modern human resources management. The principal aim of manpower planning is the development of plans dealing with future human resource requirements. In this way, the hybrid semi-Markov model enables one to improve on the semi-Markov model in case the amount of available data is limited. The hybrid semi-Markov model is compared with the Markov model as well as with the semi-Markov model based on several criteria
Published Version (Free)
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have