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智慧城市中金融科技平台的风险评估与监管算法。

Risk Assessment and Regulation Algorithm for Financial Technology Platforms in Smart City.

机构信息

School of Economics and Finance, Xi'an Jiaotong University, Xi'an City 710049, Shaanxi, China.

Xi'an Institute of Space Radio Technology, Xi'an City 710100, Shaanxi, China.

出版信息

Comput Intell Neurosci. 2022 Mar 25;2022:9903364. doi: 10.1155/2022/9903364. eCollection 2022.

Abstract

The informatization of cities has been further promoted, and the construction of smart cities supported by technological innovation has been upgraded. The financial industry and data are closely related. Whether the financial industry can make good use of new information technology is the key to its successful transformation. The development of smart cities has a significant effect on the development of people's livelihood, the process of urbanization, the use of technology, the solution of urban problems, and the improvement of economic levels. This also provides a good choice for the development of cities in each country. For better development, it needs technical support. Therefore, it is very important to improve the technical level. This research mainly discusses the risk assessment and regulation algorithms of financial technology platforms in smart cities. This study divides the risk decision channels into two paths based on the smart city theory, considers the internal risk factors and external risk factors of the robo-advisory service platform from the three perspectives of platform characteristics, corporate characteristics, and investor characteristics and exploring the construction of a robo-advisory service platform risk prediction model based on the machine learning perspective. The design and implementation of a personalized financial investment prototype system, a Python-based web development framework Django, and a variety of toolkits have realized a B/S architecture robo-advisor. Among them, the function of buying and selling ETF and the trend recording function after buying are realized by simulating the transaction data collected by the data collection module. The study found that the key potential characteristics that constitute platform risks are mainly the listing year of the background company, the age of the platform, the investment threshold, and the search index. To a certain extent, this provides data support for investors and regulatory authorities to evaluate platform capabilities and platform selection. Investors should comprehensively consider platform qualifications when making platform decisions and pay attention to information such as the age of listing of companies with platform background, platform age, and investment thresholds. Only when the quality of people is improved, the quality of the population of this city improves, so that the development of the city has a broad room for growth. The accuracy of the similar formula calculation method in the big data proposed in this study reached 88%. This research provides new ideas for perfecting the black box regulatory system of robo-advisory algorithms.

摘要

城市信息化进一步推进,以技术创新为支撑的智慧城市建设升级。金融业与数据息息相关,金融业能否用好新技术是其成功转型的关键。智慧城市的发展对民生发展、城市化进程、技术应用、城市问题解决、经济水平提高都有显著的影响。这也为各国城市的发展提供了很好的选择。为了更好的发展,需要技术支持。因此,提高技术水平是非常重要的。本研究主要探讨了智慧城市中金融科技平台的风险评估和调控算法。本研究基于智慧城市理论,将风险决策渠道分为两条路径,从平台特征、企业特征和投资者特征三个角度考虑机器人咨询服务平台的内部风险因素和外部风险因素,探索基于机器学习视角的机器人咨询服务平台风险预测模型的构建。个性化金融投资原型系统的设计与实现、基于 Python 的 Web 开发框架 Django 以及各种工具包实现了 B/S 架构的机器人顾问。其中,通过模拟数据采集模块收集的交易数据,实现了买卖 ETF 以及买入后的趋势记录功能。研究发现,构成平台风险的关键潜在特征主要是背景公司的上市年限、平台年龄、投资门槛和搜索指数。在一定程度上,这为投资者和监管机构评估平台能力和平台选择提供了数据支持。投资者在做出平台决策时应综合考虑平台资质,关注平台背景公司上市年限、平台年龄、投资门槛等信息。只有当人的素质提高了,这个城市的人口素质才会提高,这样城市的发展才会有更广阔的增长空间。本研究提出的大数据中相似公式计算方法的准确率达到了 88%。这为完善机器人咨询算法的黑箱监管体系提供了新的思路。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3103/8975694/44f5af351265/CIN2022-9903364.001.jpg

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