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Study on the Influence Factors of AHP-Grey Association Analysis on Regional GDP in Heilongjiang Province

Ran Mo, Wenjie Chu, Wenjing Shi

Abstract


Nowadays, with the comprehensive release of the epidemic in China, economic recovery has become the main tone of develop_x005fment. GDP, as a comprehensive statistical indicator of economic development, its influencing factors have gradually become a research topic
that economists pay more and more attention to. Based on this, according to the influencing factors of GDP in Heilongjiang Province, comprehensive hierarchical analysis method and gray association analysis method can study the factors influencing the GDP of the region. The
results show that the total output value of agriculture, the added value of accommodation and catering industry, the crude oil output and the
total forestry output value are the main factors affecting the regional GDP of Heilongjiang Province.

Keywords


Heilongjiang Province GDP; Hierarchy Analysis; Grey Correlation Analysis

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References


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DOI: http://dx.doi.org/10.18686/fm.v8i6.11733

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