PROTECTED SOURCE SCRIPT
GARCH 1.1

GARCH stands for heteroscedastic conditional generalized autoregressive model.
The GARCH model is a generalized autoregressive model that captures volatility clusters of returns through conditional variance.
In other words, the GARCH model finds the average volatility in the medium term through an autoregression that depends on the sum of the lagged shocks and the sum of the lagged variances.
The GARCH model and its extensions are used for their ability to predict volatility in the short to medium term.
This script was developed to predict the volatility of stock options in real time and indicate a reference volatility through the application of a percentage reducer, which can be changed by the user depending on his operating model.
- Generalized because it takes into account recent and historical observations.
- Autoregressive because the dependent variable returns on itself.
- Conditional because future variation depends on historical variation.
- Heteroscedastic because the variance varies as a function of the observations.
The GARCH model is a generalized autoregressive model that captures volatility clusters of returns through conditional variance.
In other words, the GARCH model finds the average volatility in the medium term through an autoregression that depends on the sum of the lagged shocks and the sum of the lagged variances.
The GARCH model and its extensions are used for their ability to predict volatility in the short to medium term.
This script was developed to predict the volatility of stock options in real time and indicate a reference volatility through the application of a percentage reducer, which can be changed by the user depending on his operating model.
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受保護腳本
此腳本以閉源形式發佈。 不過,您可以自由且不受任何限制地使用它 — 在此處了解更多資訊。
免責聲明
這些資訊和出版物並不意味著也不構成TradingView提供或認可的金融、投資、交易或其他類型的意見或建議。請在使用條款閱讀更多資訊。