RicardoSantos

FunctionSMCMC

RicardoSantos Wizard 已更新   
Library "FunctionSMCMC"
Methods to implement Markov Chain Monte Carlo Simulation (MCMC)

markov_chain(weights, actions, target_path, position, last_value) a basic implementation of the markov chain algorithm
  Parameters:
    weights: float array, weights of the Markov Chain.
    actions: float array, actions of the Markov Chain.
    target_path: float array, target path array.
    position: int, index of the path.
    last_value: float, base value to increment.
  Returns: void, updates target array

mcmc(weights, actions, start_value, n_iterations) uses a monte carlo algorithm to simulate a markov chain at each step.
  Parameters:
    weights: float array, weights of the Markov Chain.
    actions: float array, actions of the Markov Chain.
    start_value: float, base value to start simulation.
    n_iterations: integer, number of iterations to run.
  Returns: float array with path.
發布通知:
v2
outsourced the probability distribution sample selection to a external library:
-
Pine腳本庫

本著真正的TradingView精神,作者將此Pine代碼以開源腳本庫發布,以便我們社群的其他Pine程式設計師可以重用它。向作者致敬!您可以私下或在其他開源出版物中使用此庫,但在出版物中重用此代碼受網站規則約束。

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。

想使用這個腳本庫嗎?

複製以下行並將其黏貼到您的腳本中。