The early warning of financial risk is to identify and analyze existing financial risk factors, determine the possibility and severity of occurring risks, and provide scientific basis for risk prevention and management. The fragility of financial system and the destructiveness of financial crisis make it extremely important to build a good financial risk early-warning mechanism. The main idea of the K-means clustering algorithm is to gradually optimize clustering results and constantly redistribute target dataset to each clustering center to obtain optimal solution; its biggest advantage lies in its simplicity, speed, and objectivity, being widely used in many research fields such as data processing, image recognition, market analysis, and ...
With the development of information technology and computer science, high-capacity data appear in ou...
In the current era, the market competition is becoming increasingly fierce, complicated and unpredic...
In the process of gas prediction and early warning, outliers in the data series are often discarded....
Keywords:financial risk; neural network model;early warning mechanism Abstract.Establishment and opt...
Aiming at the problem of food risk prediction, this paper proposes a method based on clustering algo...
Because there are many factors affecting the financial risk of enterprises, it is difficult to asses...
The financial market has certain volatility in its stability due to the influence of many factors. I...
One of the biggest problems of SMEs is their tendencies to financial distress because of insufficien...
The K-means algorithm has been extensively investigated in the field of text clustering because of i...
Logistic regression is the best fit, the very best the model is a numerical demonstration method. Ar...
The purpose is to promote the orderly development of China's Internet financial transactions and min...
In order to deal with the problems of traditional e-banking risk measurement and early warning metho...
The k-means algorithm and its variants are popular clustering techniques. Their purpose is to uncove...
AbstractIt is difficult for E-commerce (electronic commerce)operation to predict the risk results du...
The following paper treats both types of forecasting: qualitative and quantitative. It highlightsthe...
With the development of information technology and computer science, high-capacity data appear in ou...
In the current era, the market competition is becoming increasingly fierce, complicated and unpredic...
In the process of gas prediction and early warning, outliers in the data series are often discarded....
Keywords:financial risk; neural network model;early warning mechanism Abstract.Establishment and opt...
Aiming at the problem of food risk prediction, this paper proposes a method based on clustering algo...
Because there are many factors affecting the financial risk of enterprises, it is difficult to asses...
The financial market has certain volatility in its stability due to the influence of many factors. I...
One of the biggest problems of SMEs is their tendencies to financial distress because of insufficien...
The K-means algorithm has been extensively investigated in the field of text clustering because of i...
Logistic regression is the best fit, the very best the model is a numerical demonstration method. Ar...
The purpose is to promote the orderly development of China's Internet financial transactions and min...
In order to deal with the problems of traditional e-banking risk measurement and early warning metho...
The k-means algorithm and its variants are popular clustering techniques. Their purpose is to uncove...
AbstractIt is difficult for E-commerce (electronic commerce)operation to predict the risk results du...
The following paper treats both types of forecasting: qualitative and quantitative. It highlightsthe...
With the development of information technology and computer science, high-capacity data appear in ou...
In the current era, the market competition is becoming increasingly fierce, complicated and unpredic...
In the process of gas prediction and early warning, outliers in the data series are often discarded....