基于计算机视觉技术的项目投资风险模糊综合评价模型

Hongjian Wang
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摘要

随着经济和实时嵌入式系统的发展以及科学技术的进步,人们的经济收入形式发生了巨大的变化,理财的概念在人们的财产收入安排中变得更加清晰。项目投资是大数据时代最流行的理财方式之一。无论是大型企业集团还是个体小资产阶级集团,都开始关注项目投资这种新的财务管理方式所带来的风险和收益。本文的目标是建立基于计算机视觉技术的项目投资风险模糊综合评价(FCE)模型,探索计算机视觉技术在项目投资风险评价中的应用。本文首先利用实时嵌入式系统了解项目投资的基本流程,并通过文献研究和案例分析,选择10位投资专家进行风险评估、风险分析以及风险产生的原因。然后,通过计算机视觉技术、实时嵌入式系统、大数据和人工智能技术中的神经网络模型,建立项目投资风险模糊综合评价模型,实现对项目投资风险的分析和预测。该评价模型采用模糊综合评价法和层次分析法对项目投资风险进行评价和预测。此外,本文还通过支持向量机分类算法、实时嵌入式系统、平均随机一致性指标对本研究的风险评估模型进行了训练和测试。研究表明,本文所建立的模糊综合评价模型对项目投资风险的评价比其他风险评价方法具有更高的准确性。例如,对于化纤项目的投资风险,本研究模型对组织、管理、技术、经济等因素进行了评价,发现风险均高于21.36%,说明化纤项目整体投资风险较高。
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Fuzzy Comprehensive Evaluation Model of Project Investment Risk Based on Computer Vision Technology
With the development of the economy and real-time embedded systems and the progress of science and technology, people’s economic income forms have undergone tremendous changes, and the concept of financial management has become clearer in people’s property income arrangements. Project investment is one of the most popular financial management methods in the era of big data. Both large enterprise groups and individual petty bourgeoisie groups have begun to pay attention to the risks and benefits brought by the new financial management method of project investment. This paper’s goal is to develop a fuzzy comprehensive evaluation (FCE) model for project investment risk based on computer vision technology and explore the application of computer vision technology in project investment risk evaluation. This article first uses a real-time embedded system to understand the basic process of project investment and select 10 investment experts for risk assessment, risks, and causes of the risks through literature research and case analysis. Then, this paper establishes a model of fuzzy comprehensive evaluation of project investment risk through computer vision technology, real-time embedded systems, and neural network models in big data and artificial intelligence technology to realize the analysis and prediction of project investment risk. The fuzzy comprehensive evaluation method and analytic hierarchy process (AHP) are used in this evaluation model to evaluate and forecast project investment risks. In addition, this paper also trains and tests the risk evaluation model of this research through the support vector machine classification algorithm, the real-time embedded system, and the average random consistency index. The research shows that the fuzzy comprehensive evaluation model of this study has higher accuracy for project investment risk evaluation than other risk evaluation methods. For example, for the investment risk of chemical fiber projects, this research model evaluated the factors such as organization, management, technology, and economy and found that the risks were all higher than 21.36%, which concluded that the overall investment risk of chemical fiber projects was relatively high.
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