Liu Jia, Fu Shuai
School of Economics and Management, Harbin University, Harbin, 150086, Heilongjiang, China.
Changchun Humanities and Sciences College, Changchun, 130117, Jilin, China.
Sci Rep. 2024 Apr 24;14(1):9395. doi: 10.1038/s41598-024-59244-8.
With the acceleration of China's economic integration process, enterprises have gained greater advantages in the fierce market competition, and gradually formed the trend of grouping and large-scale. However, as the scale of the company increases, the establishment of a branch also causes many problems. For example, in order to obtain more benefits, the business performance of the company can generate false growth, resulting in financial and operational risks. This paper analyzed the current situation and needs of enterprise financial control from two aspects of theory and practice, combined with specific engineering projects, taking ZH Group as an example, according to the actual situation of the enterprise. The article first introduces the basic situation of the enterprise; Then, the financial control strategy was designed, and different modules were designed to achieve financial control; Afterwards, use a reverse neural network to evaluate the effectiveness of financial management and risk warning; Relying on particle swarm optimization algorithm to seek the optimal solution and applying it to financial management and risk warning, in order to improve the level of introspection and risk management in decision-making. Finally, the value of computer intelligence algorithms in financial big data management is evaluated by constructing a financial risk indicator system. Through the analysis of enterprise financial management, the total asset turnover rate of ZH Group decreased by 0.39 times in 5 years. After 5 years of adjustment of the company's business, the company's overall operational capabilities still needed to be improved, and the company's comprehensive business capabilities also still needed to be improved. Therefore, the application of intelligent algorithms for financial control is very necessary.
随着中国经济一体化进程的加速,企业在激烈的市场竞争中获得了更大优势,并逐渐形成了集团化和规模化趋势。然而,随着公司规模的扩大,设立分公司也引发了诸多问题。例如,为获取更多利益,公司的经营业绩可能产生虚假增长,从而导致财务和运营风险。本文从理论和实践两个方面分析了企业财务控制的现状与需求,结合具体工程项目,以ZH集团为例,依据企业实际情况展开研究。文章首先介绍了企业的基本情况;接着,设计了财务控制策略,并针对不同模块进行设计以实现财务控制;随后,运用反向神经网络对财务管理的有效性和风险预警进行评估;依托粒子群优化算法寻求最优解并将其应用于财务管理和风险预警,以提高决策中的自省和风险管理水平。最后,通过构建财务风险指标体系评估计算机智能算法在财务大数据管理中的价值。通过对企业财务管理的分析,ZH集团的总资产周转率在5年内下降了0.39次。经过公司业务5年的调整,公司整体运营能力仍有待提高,公司综合业务能力也仍需提升。因此,应用智能算法进行财务控制非常必要。