INVITE-ONLY SCRIPT
Volatility Simulation & Analysis

🙏🏻 The main purpose of this tool is to define your stop-losses and take-profits, even tho it's really fast (time complexity O(n)), it does Monte Carlo simulations inside, providing you the Way higher info gain.
This method is more advanced than using structural volatility analysis, such as stdev on raw data, in a sense that the outputs have lower variance but higher bias. However, in return for that, it provides means to know where to look for breakeven exits, smth you can't really do non-arbitrary with structural volatility.
...
How to use:
The script outputs 4 lines, 2 outer lines are used for hard stop-losses and take-profits distances, and inner 2 lines are used for the soft stop-losses and take-profits distances.
Hard ones are used to setup final SLs and TP.
Soft ones are used to trigger attempts to exit at breakeven.
The choice of direction (blue/red line) should be based according to your initial position direction. So for longs you'll need blue lines for soft & hard take profits, and red lines for soft & hard stop-losses. Vice versa for shorts.
Feel free to improve it, but that's the baseline ruleset and tbh it's more than enough.
...
How it works
It's fully O(N).
This method is closely related to Monte Carlo and VaR, but adapts them to live use for more practical tasks rather than offline simulations & post analysis. The method fully resides in L2.
I use 2 separate streams of innovations from MFPM model (explained here).
From each stream I learn it's parameters, and generate numerous Gamma distributed noise instances, that unlike Exponential noise are more flexible and allow to use both location and scale as separate parameters. Synthetic data generation is the Only part of the method that degrades it to O(N), everything else is O(1).
Then I process data cross-sectionally (all samples per one time-stamp), to discover location and scale of each section. These 2 streams then smoothed with attributing higher weights to higher values, so even tho we smooth, we still are honest to the higher importance of higher values.
Finally I construct soft and hard volatility envelopes, and scale them from local to global frame. Soft (inner) envelopes model the typical max excursions, while outer (hard) envelopes model rare extreme excursions.
...
be cool aye?
∞
This method is more advanced than using structural volatility analysis, such as stdev on raw data, in a sense that the outputs have lower variance but higher bias. However, in return for that, it provides means to know where to look for breakeven exits, smth you can't really do non-arbitrary with structural volatility.
...
How to use:
The script outputs 4 lines, 2 outer lines are used for hard stop-losses and take-profits distances, and inner 2 lines are used for the soft stop-losses and take-profits distances.
Hard ones are used to setup final SLs and TP.
Soft ones are used to trigger attempts to exit at breakeven.
The choice of direction (blue/red line) should be based according to your initial position direction. So for longs you'll need blue lines for soft & hard take profits, and red lines for soft & hard stop-losses. Vice versa for shorts.
Feel free to improve it, but that's the baseline ruleset and tbh it's more than enough.
...
How it works
It's fully O(N).
This method is closely related to Monte Carlo and VaR, but adapts them to live use for more practical tasks rather than offline simulations & post analysis. The method fully resides in L2.
I use 2 separate streams of innovations from MFPM model (explained here).
From each stream I learn it's parameters, and generate numerous Gamma distributed noise instances, that unlike Exponential noise are more flexible and allow to use both location and scale as separate parameters. Synthetic data generation is the Only part of the method that degrades it to O(N), everything else is O(1).
Then I process data cross-sectionally (all samples per one time-stamp), to discover location and scale of each section. These 2 streams then smoothed with attributing higher weights to higher values, so even tho we smooth, we still are honest to the higher importance of higher values.
Finally I construct soft and hard volatility envelopes, and scale them from local to global frame. Soft (inner) envelopes model the typical max excursions, while outer (hard) envelopes model rare extreme excursions.
...
be cool aye?
∞
僅限邀請腳本
僅作者批准的使用者才能訪問此腳本。您需要申請並獲得使用許可,通常需在付款後才能取得。更多詳情,請依照作者以下的指示操作,或直接聯絡gorx1。
TradingView不建議在未完全信任作者並了解其運作方式的情況下購買或使用腳本。您也可以在我們的社群腳本中找到免費的開源替代方案。
作者的說明
Please contact me via my business links if you're interested in gaining access to this script || source code || interested in a port
Gor Dragongor
t.me/synchro1_channel
linkedin.com/company/synchro1
t.me/synchro1_channel
linkedin.com/company/synchro1
免責聲明
這些資訊和出版物並非旨在提供,也不構成TradingView提供或認可的任何形式的財務、投資、交易或其他類型的建議或推薦。請閱讀使用條款以了解更多資訊。
僅限邀請腳本
僅作者批准的使用者才能訪問此腳本。您需要申請並獲得使用許可,通常需在付款後才能取得。更多詳情,請依照作者以下的指示操作,或直接聯絡gorx1。
TradingView不建議在未完全信任作者並了解其運作方式的情況下購買或使用腳本。您也可以在我們的社群腳本中找到免費的開源替代方案。
作者的說明
Please contact me via my business links if you're interested in gaining access to this script || source code || interested in a port
Gor Dragongor
t.me/synchro1_channel
linkedin.com/company/synchro1
t.me/synchro1_channel
linkedin.com/company/synchro1
免責聲明
這些資訊和出版物並非旨在提供,也不構成TradingView提供或認可的任何形式的財務、投資、交易或其他類型的建議或推薦。請閱讀使用條款以了解更多資訊。