2021
DOI: 10.4018/jgim.293288
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CVaR Prediction Model of the Investment Portfolio Based on the Convolutional Neural Network Facilitates the Risk Management of the Financial Market

Abstract: In summary, firstly, a method for establishing a portfolio model is proposed based on the risk management theory of the financial market. Then, a prediction model for CVaR is established based on the convolutional neural network, and the improved particle swarm algorithm is employed to solve the model. The actual data analysis is implemented to prove the feasibility of CVaR prediction model based on deep learning and particle swarm optimization algorithm in financial market risk management. The test results sh… Show more

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Cited by 4 publications
(3 citation statements)
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“…Over time, models based on artificial intelligence applications, such as artificial neural networks and deep learning, have been highlighted in various scientific studies and applications in different sectors (Chang, Wang, & Chuang, 2022;Du & Shu, 2022;Feng & Chen, 2022;Hossain et al, 2022;Hou et al, 2022;Li, Shang et al, 2022;Paul, Riaz, & Das, 2022;Qiu, 2022;Rashidin et al, 2022;Shrivastav, 2022;Sun et al, 2022;Varsha et al, 2021;Wu, Qiao et al, 2022;Wu, Zhu et al, 2022;Xu, Xiang, & He, 2022;Yang & Wu, 2022;Zhao, 2022). However, the financial sector -FinTech, has shown strong growth in using this method to provide financial solutions.…”
Section: Discussionmentioning
confidence: 99%
“…Over time, models based on artificial intelligence applications, such as artificial neural networks and deep learning, have been highlighted in various scientific studies and applications in different sectors (Chang, Wang, & Chuang, 2022;Du & Shu, 2022;Feng & Chen, 2022;Hossain et al, 2022;Hou et al, 2022;Li, Shang et al, 2022;Paul, Riaz, & Das, 2022;Qiu, 2022;Rashidin et al, 2022;Shrivastav, 2022;Sun et al, 2022;Varsha et al, 2021;Wu, Qiao et al, 2022;Wu, Zhu et al, 2022;Xu, Xiang, & He, 2022;Yang & Wu, 2022;Zhao, 2022). However, the financial sector -FinTech, has shown strong growth in using this method to provide financial solutions.…”
Section: Discussionmentioning
confidence: 99%
“…Financial frauds are difficult to detect manually since the instances of corporate frauds are always concealed (Zakolyukina, 2018; Amiram et al, 2020), particularly in the case of that fraud methods are getting diversified and complicated as corporate business expands and innovates continuously (Li et al, 2022; Yang & Wu, 2022). Fortunately, machine learning develops rapidly in recent years, providing efficient approaches to exploring the relationship between financial risks and the growing financial data (Du & Shu, 2022; Li et al, 2022; Wu et al, 2022). Therefore, many scholars are devoted to developing novel fraud detection models using machine learning, such as Logistic Regression, Naive Bayes, Support Vector Machine, Neural Network, Random Forest, Ensemble Method and many more (Song et al, 2014; Cao et al, 2015; Vasarhelyi et al, 2015; Brown et al, 2020; Ding et al, 2020; Bertomeu et al, 2021; Chen & Zhai, 2023; Xu et al, 2023; Achakzai & Peng, 2023; Li et al, 2023; Pan et al, 2023; Riskiyadi, 2023; Rahman & Zhu, 2023; Zhou et al, 2023).…”
Section: Introductionmentioning
confidence: 99%
“…Among them, CNN (Involuntary Neural Networks) has made its mark in this respect, providing revolutionary improvements for computer vision, medical image processing, video analysis and many other applications. In the past decade, with the popularity of social media, mobile devices and the Internet of Things, we have witnessed the explosive growth of data, especially in image and video content, with billions of new content uploaded to the network every day [1]. This data growth brings new opportunities, but it also poses new challenges: how to extract meaningful information and knowledge from these data.…”
Section: Introductionmentioning
confidence: 99%