azLibKnn - PV

Provides functions to use a classification algorithm (KNN) to make classifications or predictions about the grouping of an individual data point.
featurize(src, flb, clb)
Adapts the given source into a KNN Feature based on the feature and classification lookback settings.
Parameters:
src: (series float) Source. The value series to calculate the feature from.
flb: (simple int) Optional. Feature Lookback. Specify how many periods to include from the source series. Default is 1.
clb: (simple int) Optional. Classification Lookback. Specify which periods to include from the source series. Default is 1.
Returns: (series float) Calculated feature value. In this case the average source value in the feature lookback period.
classify(srcOpen, srcClose, clb, cb, summarize)
Get calculated classification from given open and close price sources based on classification lookback and base settings.
Parameters:
srcOpen: (series float) Source Open Prices. The open price series to be used in the classification calculation.
srcClose: (series float) Source Close Prices. The close price series to be used in the classification calculation.
clb: (simple int) Optional. Classification Lookback. Specify which periods to include from the source series. Default is 1.
cb: (simple string) Optional. Classification Base. Specify how to calculate the classification. Default is 'PRICEDIFF'.
summarize: (simple bool) Optional. Summarize. Specify if the classification needs to be summarized to 0 (NEUTRAL), 1 (BULL), -1 (BEAR) or that the raw classification value needs to be used. Default is false (raw value).
Returns: (series float) Calculated (optionally summarized) classification value.
train(features1, features2, classifications, f1, f2, c, max, maxMode)
Stores the combination of features and classification to the KNN Model.
Parameters:
features1: (series array<float>) Id of Features 1 array.
features2: (series array<float>) Id of Features 2 array.
classifications: (series array<float>) Id of Classifications array.
f1: (series float) New Feature 1 value to add to the model.
f2: (series float) New Feature 2 value to add to the model.
c: (series float) New Classification value to add to the model.
max: (simple int) Optional. Specify the maximum model size. Default is 240.
maxMode: (simple string) Optional. Specifies the mode to use when the model reaches the maximum size. Default is FIFO.
predict(features1, features2, classifications, p1, p2, k)
Make a prediction based on parameter 1 and parameter 2, finding k nearest neighbours and use their classifications
Parameters:
features1: (series array<float>) Id of Features 1 array.
features2: (series array<float>) Id of Features 2 array.
classifications: (series array<float>) Id of Classifications array.
p1: (series float) Parameter 1 value to calculate distances from.
p2: (series float) Parameter 2 value to calculate distances from.
k: (simple int) Optional. Specify k nearest neighbours. Use odd value to avoid draw decissions. Default is 27.
Biblioteca Pine
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Biblioteca Pine
Fiel al espíritu de TradingView, el autor ha publicado este código de Pine como biblioteca de código abierto, para que otros programadores Pine de nuestra comunidad puedan reutilizarlo. ¡Enhorabuena al autor! Puede usar esta biblioteca de forma privada o en otras publicaciones de código abierto, pero la reutilización de este código en publicaciones está sujeta a nuestras Normas internas.
🔗 Check out how it works: youtu.be/gPNz0XiZl38
🔗 Strategy plus demo: youtu.be/jRpvt_ZdIOg
🔗 Join our discord: discord.com/invite/vT7AqmE