Prediction Algorithm of Collaborative Innovation Capability of High-End Equipment Manufacturing Enterprises Based on Random Forest

Zhen-Hong Xiao, Jianbang Shi, Rui Tan, Jun-wu Shen
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引用次数: 3

Abstract

This paper studies the competitiveness of listed companies in high-end equipment manufacturing industry by using random forest. Random forest is a supervised machine learning algorithm that is actually based on the regression and classification. It takes some important decisions that are always based upon the set of samples. It counts majority for the classification purposes while it takes an average for the regression. For empirical analysis, 88 listed companies are selected. It is found that there are great differences in comprehensive competitiveness among industries. Enterprise scale accounts for a high proportion in the comprehensive competitiveness, and its score often affects the comprehensive strength; and the gap between companies in the same industry is also obvious. The empirical evaluation results of this paper provide three enlightenments for enterprises to improve their comprehensive competitiveness, such as seizing the strategic opportunity to expand the market, expand the scale of enterprises, improve asset management, and narrow the industry gap.
基于随机森林的高端装备制造企业协同创新能力预测算法
本文运用随机森林理论对高端装备制造业上市公司竞争力进行了研究。随机森林是一种基于回归和分类的监督机器学习算法。它需要一些重要的决策总是基于样本集。为了分类目的,它计算大多数,而为了回归,它取平均值。实证分析选取了88家上市公司。研究发现,产业间综合竞争力存在较大差异。企业规模在综合竞争力中占有很高的比重,其得分往往影响企业的综合实力;而同行业企业之间的差距也很明显。本文的实证评价结果为企业把握战略机遇拓展市场、扩大企业规模、完善资产管理、缩小行业差距等提升综合竞争力提供了三点启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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