Bitcoin Gold Fair Value Model | AlphaNatt

A quantitative regression-based projection model that estimates Bitcoin’s fair value using gold as a macro-monetary benchmark.
This model, inspired by RJAlpha, applies a lag-adjusted statistical regression between gold and Bitcoin to identify the time-shifted correlation that historically aligns Bitcoin’s market value with gold’s macro trends. It produces a forward-looking projection, statistical confidence intervals, and explanatory metrics that assess the reliability of the relationship.
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🧠 Core Concept
- [] Gold serves as a proxy for global liquidity and real monetary value, often leading risk assets during liquidity expansions and contractions.
[] Bitcoin’s long-term trend tends to react to these same liquidity cycles, but with a measurable lag.
[] This indicator models that lag statistically, estimating Bitcoin’s “fair value” as if its price were fully caught up to gold’s recent movements.
[] The regression captures both directional influence and proportional magnitude through slope and intercept coefficients.
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⚙️ Model Features
- [] Dynamic Lag Regression – Uses a configurable leadDays period to align gold’s prior movements with Bitcoin’s current pricing behavior.
[] Rolling Sample Window – Continuously recalibrates the regression coefficients using a user-defined lookback length, allowing the model to adapt to new market conditions.
[] Forward Projection – Extends Bitcoin’s fair value into the future, based on present gold levels and the established lag relationship.
[] Volatility-Adjusted Confidence Bands – Displays one standard deviation and 95% confidence intervals around the projected path to visualize expected uncertainty.
[] Model Fitness Metric – Includes an R² score that quantifies the strength and stability of the BTC–Gold relationship within the active window.
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📈 Visualization Breakdown
- [] Cyan Line: Historical gold-driven fair value of Bitcoin.
[] Magenta Lines: Future fair value projection and confidence bands (offset by leadDays).
[] Projection Label: Displays the 60-day projected price target.
[] Statistical Table: Shows live model output including the projected fair value, 1-SD range, 95% confidence interval, and R² score.
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🔧 User Inputs
- [] Show 1 SD Bands? – Toggles visibility of the standard deviation boundaries.
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📊 Interpretation Guide
- [] When Bitcoin trades below its projected fair value, the model suggests it is temporarily undervalued relative to gold’s macro trend.
[] When Bitcoin trades above its projected fair value, it may be overextended in relation to the model’s equilibrium estimate.
[] A higher R² implies greater reliability — periods where gold explains a large portion of Bitcoin’s price variance.
[] Confidence intervals represent uncertainty, not directional certainty; deviation beyond them often implies a structural shift in correlation or market regime.
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⚠️ Disclaimer
This indicator is designed for quantitative research and macro correlation analysis. It does not constitute investment advice, price prediction, or trading signal generation. Always verify assumptions and cross-check results with independent analysis before using in a live environment.
Invite-only script
Only users approved by the author can access this script. You'll need to request and get permission to use it. This is typically granted after payment. For more details, follow the author's instructions below or contact AlphaNatt directly.
TradingView does NOT recommend paying for or using a script unless you fully trust its author and understand how it works. You may also find free, open-source alternatives in our community scripts.
Author's instructions
Disclaimer
Invite-only script
Only users approved by the author can access this script. You'll need to request and get permission to use it. This is typically granted after payment. For more details, follow the author's instructions below or contact AlphaNatt directly.
TradingView does NOT recommend paying for or using a script unless you fully trust its author and understand how it works. You may also find free, open-source alternatives in our community scripts.