INVITE-ONLY SCRIPT

Bitcoin Power Law Global Liqudity Model by G. Santostasi

已更新
In recent studies, we've observed a notable correlation between Bitcoin's price and global liquidity metrics. This relationship reveals significant insights into Bitcoin's price movements and offers a new perspective on using macroeconomic indicators to understand and predict Bitcoin's market trends.

Our analysis shows that Bitcoin's price exhibits periodic bubbles, which seem closely associated with oscillations in global liquidity. Notably, the overall price path of Bitcoin appears to be a complex function of global liquidity. This relationship is not as simple as the Bitcoin Power Law in time that can be described with a simple equation, Price ∼ time⁶.

Instead, we have developed a polynomial model to describe this complex relationship between liquidity and Bitcoin price. With a 4-degree polynomial (with 5 different parameters needed to fit the data), we can get a decent fit to the data.

The fit is obtained using 500 data points by polynomial regression. The vector coefficients of the polynomial are obtained such that the sum of squared error between the observations and theoretical polynomial model is minimized.

This model needs to be taken with a grain of salt given the warning by famous mathematician Von Neumann: "With four parameters I can fit an elephant, and with five I can make him wiggle his trunk." discussing a model created by Italian Physicist Fermi. By this he meant that the Fermi simulations relied on too many input parameters, presupposing an overfitting phenomenon.

We can still gain some insights into the relationship between Global Liquidity and the price evolution of Bitcoin using this complex model.

When the price of Bitcoin is plotted against our global liquidity index, we observe a polynomial relationship. This model allows us to see when Bitcoin's price deviates significantly from the predicted value based on global liquidity:

Above the Model: When Bitcoin's price is above the polynomial fit, it indicates a potential lack of sufficient liquidity to support the current price level, suggesting a likely correction.
Below the Model: Conversely, when the price is below the fit, it implies that liquidity might be higher than what is reflected in the price, indicating potential upward movement.

Our global liquidity index comprises several key macroeconomic metrics from major financial institutions worldwide. Here are some of the major components:

RRP (Reverse Repurchase Agreements): This metric indicates the level of liquidity in the financial system through temporary sales of securities with an agreement to repurchase them.
FED (Federal Reserve System): Represents the balance sheet of the US central bank, reflecting its monetary policy actions.
TGA (Treasury General Account): Reflects the US Treasury’s cash balance, impacting the liquidity in the banking system.
PBC (People's Bank of China): Shows the monetary policy actions and liquidity management by China’s central bank.
ECB (European Central Bank): Represents the balance sheet and liquidity management actions of the Eurozone's central bank.
BOJ (Bank of Japan): Reflects Japan's central bank's monetary policy and liquidity measures.
Other Central Banks: Includes metrics from various other central banks like the Bank of England, Bank of Canada, Reserve Bank of Australia, etc.
M2 Money Supply: This includes money supply metrics from various countries like the USA, Europe, China, Japan, and other significant economies.

These components collectively provide a comprehensive view of global liquidity, which is crucial for understanding its impact on Bitcoin's price.

Using the polynomial model and the author's Bitcoin power law model we can create 2 oscillators, one that shows deviations from the trend (normalized to the price to make the peaks more uniform) and the other showing deviations of the polynomial liquidity model from the power law trend.

The oscillators show the difference between the price and the power law model relative to the price, Orange Line. The Blue Line is instead the difference between the Global Liquidity Model of the price and the power law model relative to the model itself. The two oscillators can be overlayed to show their differences and similarities.

Analysis: In addition to similar observations from the discussion above we can see that most Bitcoin bottoms are not directly associated with bottoms in the liquidity model indicating a different mechanism at play that determines Bitcoin bottoms (probably due to miners' capitulation).

Using the new force_overlay function we plot the polynomial liquidity model directly over the Bitcoin price chart while we display the 2 oscillators in a separate panel.



發布通知
Added a shading indicating areas where the price is above the liquidity price model or vice-versa.
Centered OscillatorsCyclesOscillators
Quantonomyfund

僅限邀請腳本

僅限作者授權的用戶訪問此腳本,並且通常需要付費。您可以將其增加到收藏腳本中,但是只有在向作者請求並獲得許可之後,才能使用它。 請聯繫Quantonomyfund以了解更多信息,或按照下面作者的說明進行操作。

請注意,這是一個私有的、僅限邀請的腳本,腳本版主並未對其進行分析。因此,其是否符合網站規則尚未確定。 TradingView建議您不要購買並使用腳本,除非您完全信任其作者並理解腳本的工作原理。在許多情況下,您可以在我們的社群腳本中找到免費的優秀開源替代方案。

作者的說明

Please check our Website to see how to join our Discord Community and obtain this and other indicators. https://bitposeidon.com/power-law-indicators

想在圖表上使用此腳本?

警告:請閱讀,然後再請求訪問權限。

免責聲明