In recent years, as global financial markets have become increasingly connected, the degree of correlation between financial assets has become closer, and technological advances have made the transmission of information faster and faster, and information networks have integrated capital markets into one, making it easier for single financial market risk problems to form systemic risk through a high degree of market linkage effects. Based on the characteristics of financial markets containing both linear and nonlinear components, this paper chooses to use Autoregressive Integrated Moving Average (ARIMA) model and feedback Support Vector Regression (SVR) models to effectively integrate the ARIMA model and the SVR model, taking into account th...
Stock prices tend to show trends or seasonality or have random walk movements. Time series statistic...
Forecasting financial time series is one of the most challenging problems in economics and business....
Forecasting financial time series is one of the most challenging problems in economics and business....
Stock investment provides high-profit opportunities but also has a high risk of loss. Investors use ...
Forecasting future values of Colombian companies traded on the New York Stock Exchange is a daily ch...
Time series forecasting remains a challenging task owing to its nonlinear, complex and chaotic behav...
Recurrent Support Vector Regression for a Nonlinear ARMA Model with Applications to Forecasting Fina...
Many models have been proposed for forecasting stock prices. One is the Autoregressive Integrated Mo...
Recurrent Support Vector Regression for a Nonlinear ARMA Model with Applications to Forecasting Fina...
Recurrent Support Vector Regression for a Nonlinear ARMA Model with Applications to Forecasting Fina...
Recurrent Support Vector Regression for a Nonlinear ARMA Model with Applications to Forecasting Fina...
Recurrent Support Vector Regression for a Nonlinear ARMA Model with Applications to Forecasting Fina...
Stock prices tend to show trends or seasonality or have random walk movements. Time series statistic...
Volatility is a key parameter when measuring the size of the errors made in modelling returns and o...
Investment in the stock market requires a delicate balance between profitability and risk management...
Stock prices tend to show trends or seasonality or have random walk movements. Time series statistic...
Forecasting financial time series is one of the most challenging problems in economics and business....
Forecasting financial time series is one of the most challenging problems in economics and business....
Stock investment provides high-profit opportunities but also has a high risk of loss. Investors use ...
Forecasting future values of Colombian companies traded on the New York Stock Exchange is a daily ch...
Time series forecasting remains a challenging task owing to its nonlinear, complex and chaotic behav...
Recurrent Support Vector Regression for a Nonlinear ARMA Model with Applications to Forecasting Fina...
Many models have been proposed for forecasting stock prices. One is the Autoregressive Integrated Mo...
Recurrent Support Vector Regression for a Nonlinear ARMA Model with Applications to Forecasting Fina...
Recurrent Support Vector Regression for a Nonlinear ARMA Model with Applications to Forecasting Fina...
Recurrent Support Vector Regression for a Nonlinear ARMA Model with Applications to Forecasting Fina...
Recurrent Support Vector Regression for a Nonlinear ARMA Model with Applications to Forecasting Fina...
Stock prices tend to show trends or seasonality or have random walk movements. Time series statistic...
Volatility is a key parameter when measuring the size of the errors made in modelling returns and o...
Investment in the stock market requires a delicate balance between profitability and risk management...
Stock prices tend to show trends or seasonality or have random walk movements. Time series statistic...
Forecasting financial time series is one of the most challenging problems in economics and business....
Forecasting financial time series is one of the most challenging problems in economics and business....