Effect of Lean Production on Enterprise Performance Based on Bayesian Network
Abstract
The market competition pressure of modern enterprise is more and more big, in order to enhance enterprise benefit, lean production model is widely adopted. How to effectively measure the effect of lean production on enterprise performance is the object of this paper. This paper will analyze the impact of different lean techniques combinations on the financial performance and non-financial performance of the enterprise, in which the four performance indicators, that is, flexibility, reliability, quality and time will be adopted, and the financial performance, non-financial performance and sustainability are determined as performance decision variables. Bayesian networks will be used to build inference model. Using the means of simulation, three different scenarios will show the impact of lean techniques promotion on enterprise performance.
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DOI: http://dx.doi.org/10.3968/10058
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