Sammanfattning
In this paper, we introduce a multi-stage multiple criteria latent class model within a Bayesian framework that can be used to evaluate and rank-order objects based on multiple performance criteria. The latent variable extraction in our methodology relies on Bayesian analysis and Monte Carlo simulation, which uses a Gibbs sampler. Ranking of clusters of objects is completed using the extracted latent variables. We apply the methodology to evaluate the resiliency of e-commerce companies using balanced scorecard performance dimensions. Cross-validation of the latent class model confirms a superior fit for classifying the e-commerce companies. Specifically, using the methodology we determine the ability of different perspectives of the balanced scorecard method to predict the continued viability and eventual survival of e-commerce companies. The novel methodology may also be useful for performance evaluation and decision making in other contexts. In general, this methodology is useful where a ranking of elements within a set, based on multiple objectives, is desired. A significant advantage of this methodology is that it develops weighting scheme for the multiple objective based on intrinsic characteristics of the set with minimal subjective input from decision makers.
| Originalspråk | Engelska |
|---|---|
| Referentgranskad vetenskaplig tidskrift | International Journal of Production Economics |
| Volym | 148 |
| Nummer | February |
| Sidor (från-till) | 1-13 |
| Antal sidor | 13 |
| ISSN | 0925-5273 |
| DOI | |
| Status | Publicerad - 01.02.2014 |
| MoE-publikationstyp | A1 Originalartikel i en vetenskaplig tidskrift |
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