DOI: 10.14704/nq.2018.16.6.1549

Evaluation of Resource-Capabilities of Original Equipment Manufacturers upgrading Based on BP Neural Network

Dali Hu, Jinrong Yu

Abstract


The functions of training, inspection and simulation of BP neural network are widely used in the field of enterprise management evaluation. This paper constructs a model of the resource- capabilities of Original Equipment Manufacturers (OEMs) upgrading, collects sample data through sending out a large number of questionnaires, and uses the BP neural network model of coupling factor analysis to evaluate and analyze the resource-capabilities of the sample upgrading companies, effectively avoiding the human-factor interferences in the conventional comprehensive evaluation methods and the subjective questions of weight determination, the rationality and scientificity of the evaluation upgrading indicator system for resource- capabilities were verified. Finally, this paper proposes suggestions for advancing the resource-upgrading capabilities.

Keywords


OEMs upgrading, Resource-Capabilities, Evaluation Indicator System, Factor Analysis, BP Neural Network

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