INVITE-ONLY SCRIPT
업데이트됨 Kalman Momentum

Kalman Filter
The Kalman Filter is an algorithm used for recursive estimation and filtering of time-series data. It was developed by Rudolf E. Kálmán in the 1960s and has found widespread applications in various fields, including control systems, navigation, signal processing, and finance.
The primary purpose of the Kalman filter is to estimate the state of a dynamic system based on a series of noisy measurements over time. It operates recursively, meaning it processes each new measurement and updates its estimate of the system state as new data becomes available.
Kalman Momentum Indicator
This indicator implements the Kalman Filter to provide a smoothed momentum indicator using returns. The momentum in this indicator is calculated by getting the logarithmic returns and then getting the expected value.
The Kalman calculation in this indicator is used to filter and predict the next value based on the logarithmic returns expected value.
Here's a simplified explanation of the steps and how they are applied in the Script:
In this Script, the Kalman Filter is applied to estimate the state of the system, with two state variables.
When the Kalman Momentum is above 0, there is positive momentum or positive smoothed expected value.
When the Kalman Momentum is below 0, there is negative momentum or negative smoothed expected value.
How to Use:
Indicator Settings:
Understanding Expected Value in Trading:
The Expected Value is a fundamental concept that shows the potential outcomes of a trading strategy or individual trade over a series of occurrences. It is a measure that represents the average outcome when a particular action is repeated multiple times.
Images of the indicator:



The Kalman Filter is an algorithm used for recursive estimation and filtering of time-series data. It was developed by Rudolf E. Kálmán in the 1960s and has found widespread applications in various fields, including control systems, navigation, signal processing, and finance.
The primary purpose of the Kalman filter is to estimate the state of a dynamic system based on a series of noisy measurements over time. It operates recursively, meaning it processes each new measurement and updates its estimate of the system state as new data becomes available.
Kalman Momentum Indicator
This indicator implements the Kalman Filter to provide a smoothed momentum indicator using returns. The momentum in this indicator is calculated by getting the logarithmic returns and then getting the expected value.
The Kalman calculation in this indicator is used to filter and predict the next value based on the logarithmic returns expected value.
Here's a simplified explanation of the steps and how they are applied in the Script:
- State Prediction: Predict the current state based on the previous state estimate.
Error Covariance Prediction: Predict the covariance of the prediction error. - Correction Step:
Kalman Gain Calculation: Calculate the Kalman gain, which determines the weight given to the measurement.
State Correction: Update the state estimate based on the measurement.
Error Covariance Correction: Update the error covariance.
In this Script, the Kalman Filter is applied to estimate the state of the system, with two state variables.
When the Kalman Momentum is above 0, there is positive momentum or positive smoothed expected value.
When the Kalman Momentum is below 0, there is negative momentum or negative smoothed expected value.
How to Use:
- Trend Identification:
Positive values of the Kalman Momentum Indicator indicates positive expected value, while negative values suggest negative expected value.
You can look for changes in the sign of the indicator to identify potential shifts in market direction. - Volatility Analysis:
Observe the behavior of the indicator during periods of high and low volatility. Changes in the volatility of the Kalman Momentum Indicator may precede changes in market conditions. - Filtering Noise:
The Kalman Filter is known for its ability to filter out noise in time series data. Use the Kalman Momentum Indicator to filter out the noise in momentum to catch the trend more clearly. - Squeezes:
At time there may be squeezes, and these are zones with low volatility. What could follow after these zones are expansions and huge trending moves.
Indicator Settings:
- You can change the source of the calculations.
- There is also a lookback for the log returns.
Understanding Expected Value in Trading:
The Expected Value is a fundamental concept that shows the potential outcomes of a trading strategy or individual trade over a series of occurrences. It is a measure that represents the average outcome when a particular action is repeated multiple times.
Images of the indicator:
릴리즈 노트
Description Update초대 전용 스크립트
이 스크립트는 작성자가 승인한 사용자만 접근할 수 있습니다. 사용하려면 요청을 보내고 승인을 받아야 합니다. 일반적으로 결제 후에 승인이 이루어집니다. 자세한 내용은 아래 작성자의 지침을 따르거나 Traders_Endeavors에게 직접 문의하세요.
트레이딩뷰는 스크립트 작성자를 완전히 신뢰하고 스크립트 작동 방식을 이해하지 않는 한 스크립트 비용을 지불하거나 사용하지 않는 것을 권장하지 않습니다. 무료 오픈소스 대체 스크립트는 커뮤니티 스크립트에서 찾을 수 있습니다.
작성자 지시 사항
Get access here: https://www.patreon.com/user?u=80987417
경고: 액세스를 요청하기 앞서 초대 전용 스크립트에 대한 가이드를 읽어주세요.
Link Tree: linktr.ee/tradersendeavors
Access our indicators: patreon.com/user?u=80987417
Access our indicators: patreon.com/user?u=80987417
면책사항
이 정보와 게시물은 TradingView에서 제공하거나 보증하는 금융, 투자, 거래 또는 기타 유형의 조언이나 권고 사항을 의미하거나 구성하지 않습니다. 자세한 내용은 이용 약관을 참고하세요.
초대 전용 스크립트
이 스크립트는 작성자가 승인한 사용자만 접근할 수 있습니다. 사용하려면 요청을 보내고 승인을 받아야 합니다. 일반적으로 결제 후에 승인이 이루어집니다. 자세한 내용은 아래 작성자의 지침을 따르거나 Traders_Endeavors에게 직접 문의하세요.
트레이딩뷰는 스크립트 작성자를 완전히 신뢰하고 스크립트 작동 방식을 이해하지 않는 한 스크립트 비용을 지불하거나 사용하지 않는 것을 권장하지 않습니다. 무료 오픈소스 대체 스크립트는 커뮤니티 스크립트에서 찾을 수 있습니다.
작성자 지시 사항
Get access here: https://www.patreon.com/user?u=80987417
경고: 액세스를 요청하기 앞서 초대 전용 스크립트에 대한 가이드를 읽어주세요.
Link Tree: linktr.ee/tradersendeavors
Access our indicators: patreon.com/user?u=80987417
Access our indicators: patreon.com/user?u=80987417
면책사항
이 정보와 게시물은 TradingView에서 제공하거나 보증하는 금융, 투자, 거래 또는 기타 유형의 조언이나 권고 사항을 의미하거나 구성하지 않습니다. 자세한 내용은 이용 약관을 참고하세요.