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I am trying to find the fastest and most efficient way to calculate slopes using Numpy and Scipy. I have a data set of three Y variables and one X variable and I need to calculate their individual slopes. For example, I can easily do this one row at a time, as shown below, but I was hoping there was a more efficient way of doing this. I also don't think linregress is the best way to go because I don't need any of the auxiliary variables like intercept, standard error, etc in my results. Any help is greatly appreciated.

    import numpy as np
    from scipy import stats

    Y = [[  2.62710000e+11   3.14454000e+11   3.63609000e+11   4.03196000e+11
        4.21725000e+11   2.86698000e+11   3.32909000e+11   4.01480000e+11
        4.21215000e+11   4.81202000e+11]
        [  3.11612352e+03   3.65968334e+03   4.15442691e+03   4.52470938e+03
        4.65011423e+03   3.10707392e+03   3.54692896e+03   4.20656404e+03
        4.34233412e+03   4.88462501e+03]
        [  2.21536396e+01   2.59098311e+01   2.97401268e+01   3.04784552e+01
        3.13667639e+01   2.76377113e+01   3.27846013e+01   3.73223417e+01
        3.51249997e+01   4.42563658e+01]]
    X = [ 1990.  1991.  1992.  1993.  1994.  1995.  1996.  1997.  1998.  1999.] 
    slope_0, intercept, r_value, p_value, std_err = stats.linregress(X, Y[0,:])
    slope_1, intercept, r_value, p_value, std_err = stats.linregress(X, Y[1,:])
    slope_2, intercept, r_value, p_value, std_err = stats.linregress(X, Y[2,:])
    slope_0 = slope/Y[0,:][0]
    slope_1 = slope/Y[1,:][0]
    slope_2 = slope/Y[2,:][0]
    b, a = polyfit(X, Y[1,:], 1)
    slope_1_a = b/Y[1,:][0]
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2 Answers 2

up vote 3 down vote accepted

The linear regression calculation is, in one dimension, a vector calculation. This means we can combine the multiplications on the entire Y matrix, and then vectorize the fits using the axis parameter in numpy. In your case that works out to the following

((X*Y).mean(axis=1) - X.mean()*Y.mean(axis=1)) / ((X**2).mean() - (X.mean())**2)

You're not interested in fit quality parameters but most of them can be obtained in a similar manner.

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thanks. exactly what I was looking for. –  hotshotiguana Mar 2 '12 at 19:15
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With X and Y defined the same way as in your question, you can use:

dY = (numpy.roll(Y, -1, axis=1) - Y)[:,:-1]
dX = (numpy.roll(X, -1, axis=0) - X)[:-1]

slopes = dY/dX

numpy.roll() helps you align the next observation with the current one, you just need to remove the last column which is the not useful difference between the last and first observations. Then you can calculate all slopes at once, without scipy.

In your example, dX is always 1, so you can save more time by computing slopes = dY.

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I need to clarify a bit because I am only looking for a single slope for all the points; what you get when you run a linear regression of Y on X. For example, slope, intercept = polyfit(X, Y[1,:], 1) gives me a slope value of 99.87. –  hotshotiguana Mar 2 '12 at 19:04
    
This gives you a slope for each set of data in Y (3). –  Benjamin Mar 2 '12 at 19:32
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