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An evaluation model for the entrepreneurial driving force based on game equilibrium decision-making method and big data

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Published:14 March 2022Publication History

ABSTRACT

In order to quantitatively analyze the impact of innovation and entrepreneurship cognition on entrepreneurial driving force, this paper puts forward an evaluation model of innovation cognition on entrepreneurial driving force based on game equilibrium decision-making and big data method, and carries out empirical analysis with statistical data, constructs a statistical information analysis model of innovation and entrepreneurship cognition on entrepreneurial driving force, and evaluates the mining results of information according to the impact of innovation and entrepreneurship cognition on entrepreneurial driving force. Cluster the evaluation data of the impact of innovation and entrepreneurship cognition on entrepreneurial driving force, and establish a game model. Quantitative game evaluation of the influence of innovative cognition on entrepreneurial driving force and the explanatory variable and control variable models are constructed. The impact of innovation cognition on entrepreneurial driving force is optimized, and the test statistics are established to test and analyze the effectiveness of the impact evaluation. Through experiments, it can be found that this method has good reliability and adaptability in evaluating the impact of innovation cognition on entrepreneurial driving force, and can improve the evaluation level.

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  • Published in

    cover image ACM Other conferences
    AIAM2021: 2021 3rd International Conference on Artificial Intelligence and Advanced Manufacture
    October 2021
    3136 pages
    ISBN:9781450385046
    DOI:10.1145/3495018

    Copyright © 2021 ACM

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    Publication History

    • Published: 14 March 2022

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