Different length of predictors to train a regression model
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I want to train a Gaussian regression model to predict the wind speed based on fan RPM.
I experimentally tested different d(RPM)/dt inputs and measured the wind speed for each input.
In other words the inputs are:
RPM1= 200:10:500;
RPM2=200:20:500;
RPM3=200:30:500;
and three velocity vectors (V1,V2 and V3) are measured.
Now I want to train a universal model with these predictors: RPM1, d(RPM1)/dt, d(RPM2)/dt and d(RPM3)/dt. The reponse value would be V1. But the length of the predicotrs are different. Also, they ( predictors) have different length campared to response (V1).
Question1)
What is the proper way to train the model? Examples would be exteremly helpful
Question 2)
In general, do I need to introduce d(RPM)/dt as a predictor or the algorithm is "smart" enough to figure that out? In other words, can I just feed the model with RPM1, RPM2 and RPM3?
Thanks
4 commentaires
harsha001
le 21 Mar 2019
I think you need to clarify the regression model.
This means not a verbal description like wind speed, but an unambiguous mathematical definition of what you are measuring/trying to fit? Where are your velocity vectors coming from? In other words, in your plots, what is your x-axis??
- If the variables increase at different time-dependent rates, AND run for the same time, then you will reach different endpoints.
- If you want the speed to saturate at 500, just pad your vectors with enough number of 500s at the end.
A regression model needs same length of predictors and co-variates (or put NaN where missing). This means everything is sampled at the same timepoints (or your equivalent index array) such that for index i=1 to N, your co-variate Y is modelled as a function F of the predictors X1,...,Xm:
Y(i) = F( X1(i), X2(i), .... , Xm(i) )
What are your Y and X's?
Example:
a) You want to fit 3 functions:
V1[time] = F1( RPM1[time], d(RPM1)/dt [time] )
and similarly for V2 and V3
OR
b)
V1[time] = F( RPM1[time], RPM2[time], ... ,d(RPM1)/dt [time], d(RPM2)/dt [time] )
In which case clarify these vectors as a function of time, making sure you use the same timepoints /time range
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