The application of big data technology in the predictive analysis of enterprise capital operation risk

IF 0.9 Q3 COMPUTER SCIENCE, THEORY & METHODS
Jian Wang, Yuzhen Wang
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引用次数: 0

Abstract

The background of the big data era makes enterprise tax management face many opportunities and challenges, in order to improve the management of enterprise capital operation risks and promote the enterprise to take the road of sustainable development. This paper firstly indexes risk names with the help of web crawler technology, establishes data sources, and then circulates the crawler to obtain the required information. Secondly, a hashing algorithm is applied to compress the massive data into a unique and extremely compact section of hash values by means of constant mapping. Then association rules are used to determine the set of frequent risk items, and the values of the two are continuously changed to derive the final predictive analysis. Finally, a capital operation risk prediction and analysis platform is built by combining the above processes. In this paper, the effectiveness of the proposed platform is verified, and the practical results show that the accuracy of the proposed platform for risk prediction discovery is as high as 97%, and the time spent for risk discovery is controlled within 30 minutes. The relevant data results verify that big data technology improves the accuracy of enterprise capital operation risk prediction and analysis while accelerating the speed of risk discovery.
大数据技术在企业资本运营风险预测分析中的应用
大数据时代的背景使企业税务管理面临诸多机遇和挑战,以提高企业资本运营风险管理水平,促进企业走可持续发展之路。本文首先利用网络爬虫技术对风险名称进行索引,建立数据源,然后循环爬虫获取所需信息。其次,采用哈希算法,通过常数映射将海量数据压缩成哈希值的唯一且极其紧凑的部分。然后利用关联规则确定频繁风险项集合,并不断改变两者的值,得出最终的预测分析结果。最后,结合以上流程构建资本运营风险预测分析平台。本文对所提平台的有效性进行了验证,实践结果表明,所提平台的风险预测发现准确率高达97%,风险发现时间控制在30分钟以内。相关数据结果验证,大数据技术提高了企业资本运营风险预测分析的准确性,同时加快了风险发现的速度。
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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来源期刊
3C Tic
3C Tic COMPUTER SCIENCE, THEORY & METHODS-
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