INVITE-ONLY SCRIPT
업데이트됨 Optimal Moving Average (AI/ML) [wbburgin]

Some traders swear by the 200-period moving average. Others, by the 100-period. Others, the 14-period. It depends on your asset, your timeframe, the trend…
The fact of the matter is that no moving average will ever be a consistent indicator for a serious trader - a fixed-length moving average will always need confirmation indicators and tests. When your instrument is trending, you need a faster moving average to better fit the data; when your instrument is ranging, you need a slower moving average that cleans the data. This just is not possible given the way the moving average is traditionally coded, which makes it a lagging indicator.
Thus we need a moving average that:
The Optimal Moving Average selects the optimal moving average length for a projected future price. The algorithm classifies moving averages by their effectiveness in predicting future price movement. If a moving average of length n has historically been accurate in predicting the next bar, the moving average will be tested compared to its peers (n-1, n+5, n-100, etc.) and promoted or demoted depending on its effectiveness. This means that the indicator will not have a length input like other static moving averages or machine-learning moving averages on TradingView- it will select the ideal length for your chart from the average that has the least error and best prediction.
Advantages over other ML Moving Averages on TradingView
The vast majority of AI/ML moving average algorithms classify their moving averages only by if the average is above or below the current price.
This approach is inherently flawed because the model
This indicator solves all those problems. It classifies moving averages by the scale of which their rate predicts the next price. Thus it is quick to catch trend changes but also acts as support or resistance, and models the projected price more accurately than a traditional moving average.
The fact of the matter is that no moving average will ever be a consistent indicator for a serious trader - a fixed-length moving average will always need confirmation indicators and tests. When your instrument is trending, you need a faster moving average to better fit the data; when your instrument is ranging, you need a slower moving average that cleans the data. This just is not possible given the way the moving average is traditionally coded, which makes it a lagging indicator.
Thus we need a moving average that:
- can project the next prices, and
- can change its length depending on what best fits these future prices.
The Optimal Moving Average selects the optimal moving average length for a projected future price. The algorithm classifies moving averages by their effectiveness in predicting future price movement. If a moving average of length n has historically been accurate in predicting the next bar, the moving average will be tested compared to its peers (n-1, n+5, n-100, etc.) and promoted or demoted depending on its effectiveness. This means that the indicator will not have a length input like other static moving averages or machine-learning moving averages on TradingView- it will select the ideal length for your chart from the average that has the least error and best prediction.
Advantages over other ML Moving Averages on TradingView
The vast majority of AI/ML moving average algorithms classify their moving averages only by if the average is above or below the current price.
This approach is inherently flawed because the model
- Is not predictive of future prices (the structural lagging problem still exists),
- Is not built on a variable-length MA (cannot select alternating lengths depending on the bar), and
- does not classify the scale of difference between the MA and the price.
This indicator solves all those problems. It classifies moving averages by the scale of which their rate predicts the next price. Thus it is quick to catch trend changes but also acts as support or resistance, and models the projected price more accurately than a traditional moving average.
초대 전용 스크립트
이 스크립트는 작성자가 승인한 사용자만 접근할 수 있습니다. 사용하려면 요청 후 승인을 받아야 하며, 일반적으로 결제 후에 허가가 부여됩니다. 자세한 내용은 아래 작성자의 안내를 따르거나 wbburgin에게 직접 문의하세요.
트레이딩뷰는 스크립트의 작동 방식을 충분히 이해하고 작성자를 완전히 신뢰하지 않는 이상, 해당 스크립트에 비용을 지불하거나 사용하는 것을 권장하지 않습니다. 커뮤니티 스크립트에서 무료 오픈소스 대안을 찾아보실 수도 있습니다.
작성자 지시 사항
Please visit the first link in my signature to access this script.
FAQ: I am gradually phasing out my Patreon because of the time it takes to maintain.
BTC: 35PdMMMXFCvPjXKwn8wsRFNwMEPgStaKUJ
Test my strategies on CryptoRobotics: cryptorobotics.co/?trade=f23b09
BTC: 35PdMMMXFCvPjXKwn8wsRFNwMEPgStaKUJ
Test my strategies on CryptoRobotics: cryptorobotics.co/?trade=f23b09
면책사항
해당 정보와 게시물은 금융, 투자, 트레이딩 또는 기타 유형의 조언이나 권장 사항으로 간주되지 않으며, 트레이딩뷰에서 제공하거나 보증하는 것이 아닙니다. 자세한 내용은 이용 약관을 참조하세요.
초대 전용 스크립트
이 스크립트는 작성자가 승인한 사용자만 접근할 수 있습니다. 사용하려면 요청 후 승인을 받아야 하며, 일반적으로 결제 후에 허가가 부여됩니다. 자세한 내용은 아래 작성자의 안내를 따르거나 wbburgin에게 직접 문의하세요.
트레이딩뷰는 스크립트의 작동 방식을 충분히 이해하고 작성자를 완전히 신뢰하지 않는 이상, 해당 스크립트에 비용을 지불하거나 사용하는 것을 권장하지 않습니다. 커뮤니티 스크립트에서 무료 오픈소스 대안을 찾아보실 수도 있습니다.
작성자 지시 사항
Please visit the first link in my signature to access this script.
FAQ: I am gradually phasing out my Patreon because of the time it takes to maintain.
BTC: 35PdMMMXFCvPjXKwn8wsRFNwMEPgStaKUJ
Test my strategies on CryptoRobotics: cryptorobotics.co/?trade=f23b09
BTC: 35PdMMMXFCvPjXKwn8wsRFNwMEPgStaKUJ
Test my strategies on CryptoRobotics: cryptorobotics.co/?trade=f23b09
면책사항
해당 정보와 게시물은 금융, 투자, 트레이딩 또는 기타 유형의 조언이나 권장 사항으로 간주되지 않으며, 트레이딩뷰에서 제공하거나 보증하는 것이 아닙니다. 자세한 내용은 이용 약관을 참조하세요.