Comprehensive Evaluation of the Level of Consumption Based on Principal Component Analysis and Cluster Analysis

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Abstract:

The residents' consuming level of the various provinces in China is not balanced, so accurate analysis of the various provinces and cities in China's consumer spending and identifying the key factors that affect the level of consuming are beneficial for the promotion of the construction of the country's overall development. The paper used principal component analysis, established a comprehensive evaluation of the principal component model, and combined cluster analysis with the analysis of the differences in consumption of the different regions of China. Finally, the paper carried on a comprehensive evaluation of the 31 provinces and cities in the level of consumption and offered a proposal for the evaluation results.

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Periodical:

Advanced Materials Research (Volumes 756-759)

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3079-3083

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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