Related Implementation and Thinking of Mathematical Statistical Method in Economics

Di Wu

Abstract


Under the background of modern social development, with the gradual deepening of the reform of the market economic system, the social economy is developing rapidly, and more and more data are produced. Strengthening the comprehensive application of mathematical statistics method in economics is an important way to promote the comprehensive development of social economy. This paper mainly analyzes the application significance, problems and application paths of mathematical statistical methods in economics, aiming to further improve the in-depth application of mathematical statistical methods in economics.

Keywords


Mathematics; Statistical methods; Economics; Implementation

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DOI: https://doi.org/10.36012/fhe.v3i3.3983

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