Monte Carlo Simulation and Python 15 - Analysis of D'Alembert
Monte Carlo Simulation with Python Playlist: http://www.youtube.com/watch?v=9M_KPXwnrlE&feature=share&list=PLQVvvaa0QuDdhOnp-FnVStDsALpYk2hk0
In this video, we view the results of the D'Alembert strategy.
In the monte carlo simulation with Python series, we test various betting strategies. A simple 50/50 strategy, a martingale strategy, and the d'alembert strategy. We use the monte carlo simulator to calculate possible paths, as well as to calculate preferred variables to use including wager size, how many wagers, and more.
There are many purposes for a monte carlo simulator. Some people use them as a form of brute force to solve complex mathematical equations. A popular example used is to have a monte carlo simulator solve for pi. In our case, we are using the Monte Carlo simulator to account for randomness and the degree of risk associated with a betting strategy. In the world of stock trading and investing, people can use the Monte Carlo simulator to test a given strategy's risk.
It used to be very much the case that only performance was considered, for the most part, to decide on a trader's value. Only until recently has the paradigm shifted to consider a strategy's risk more closely. Through this series, you will be able to see just how much random variability can affect the outcome, regardless of how "good" or "bad" a strategy might have been.
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Видео Monte Carlo Simulation and Python 15 - Analysis of D'Alembert канала sentdex
In this video, we view the results of the D'Alembert strategy.
In the monte carlo simulation with Python series, we test various betting strategies. A simple 50/50 strategy, a martingale strategy, and the d'alembert strategy. We use the monte carlo simulator to calculate possible paths, as well as to calculate preferred variables to use including wager size, how many wagers, and more.
There are many purposes for a monte carlo simulator. Some people use them as a form of brute force to solve complex mathematical equations. A popular example used is to have a monte carlo simulator solve for pi. In our case, we are using the Monte Carlo simulator to account for randomness and the degree of risk associated with a betting strategy. In the world of stock trading and investing, people can use the Monte Carlo simulator to test a given strategy's risk.
It used to be very much the case that only performance was considered, for the most part, to decide on a trader's value. Only until recently has the paradigm shifted to consider a strategy's risk more closely. Through this series, you will be able to see just how much random variability can affect the outcome, regardless of how "good" or "bad" a strategy might have been.
http://seaofbtc.com
http://sentdex.com
http://hkinsley.com
https://twitter.com/sentdex
Bitcoin donations: 1GV7srgR4NJx4vrk7avCmmVQQrqmv87ty6
Видео Monte Carlo Simulation and Python 15 - Analysis of D'Alembert канала sentdex
Python (Software) Monte Carlo Method (Ranked Item) Statistics (Field Of Study) monte carlo simulator python simulation monte carlo martingale d'alembert dalembert betting strategies wager gambling testing back testing back analysis programming program generator tutorial how-to stock trading Jean Le Rond D'Alembert (Author) risk management assessment stocks investing strategy system random Python (Programming Language)
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1 апреля 2014 г. 22:00:03
00:07:41
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