# How to calculate slope in numpy

If I have an array of 50 elements, how would I calculate a 3 period slope and a 5 period slope? The docs dont add much.....

``````>>> from scipy import stats
>>> import numpy as np
>>> x = np.random.random(10)
>>> y = np.random.random(10)
>>> slope, intercept, r_value, p_value, std_err = stats.linregress(x,y)
``````

Would this work?

``````def slope(x, n):
if i<len(x)-n:
slope = stats.linregress(x[i:i+n],y[i:i+n])[0]
return slope
``````

but the would the arrays be the same length

@joe:::

``````xx = [2.0 ,4, 6, 8, 10, 12, 14, 16, 18, 20, 22, 24, 26, 28, 30]
x = np.asarray(xx, np.float)
s = np.diff(x[::3])/3

window = [1, 0, 0, 0,  -1]
window2 = [1, 0,  -1]
slope = np.convolve(x, window, mode='same') / (len(window) - 1)
slope2 = np.convolve(x, window2, mode='same') / (len(window2) - 1)

print x
print s

print slope
print slope2
``````

Results.....

``````[  2.   4.   6.   8.  10.  12.  14.  16.  18.  20.  22.  24.  26.  28.  30.]
[ 2.  2.  2.  2.]
[ 1.5  2.   2.   2.   2.   2.   2.   2.   2.   2.   2.   2.   2.  -6.  -6.5]
[  2.   2.   2.   2.   2.   2.   2.   2.   2.   2.   2.   2.   2.   2. -14.]
``````

The slope and slope2 are what Im after except the -6, -6.5 and -14 arent the results I am looking for.

this worked.......

``````window = [1, 0, 0, -1]
slope = np.convolve(xx, window, mode='valid') / float(len(window) - 1)
padlength = len(window) -1
slope = np.hstack([np.ones(padlength), slope])
print slope
``````
-
Running linear regression on the entire set of 50 observations would give you a slope and an intercept. Could you explain what exactly you mean by an "N-period slope"? –  NPE Sep 8 '11 at 15:30
if series 1,2 ...........50, I would like slope of 46,47,48,49,50, and slope of 48,49,50. As a array. so all elements have corresponding slopes –  Merlin Sep 8 '11 at 15:33

I'm assuming you mean the slope calculated on every 3rd and 5th element so that you have a series of (exact, not least-squares) slopes?

If so, you'd just do something along the lines of:

``````third_period_slope = np.diff(y[::3]) / np.diff(x[::3])
fifth_period_slope = np.diff(y[::5]) / np.diff(x[::5])
``````

I'm probably entirely misunderstanding what you mean, though. I've never head the term "3 period slope" before...

If you want more of a "moving window" calculation (so that you have the same number of input elements as output elements), just model it as a convolution with a window of `[-1, 0, 1]` or `[-1, 0, 0, 0, 1]`.

E.g.

``````window = [-1, 0, 1]
slope = np.convolve(y, window, mode='same') / np.convolve(x, window, mode='same')
``````
-
I dont understend 'convolve' , get 'con' fused –  Merlin Sep 8 '11 at 16:00
Read up a bit on convolutions, you'll thank yourself for doing it later on. They're rather ubiquitous! :) The difference between the convolution and @tom's answer above is that the convolution will use only the 1st and 3rd points, then only the 2nd and 4th points, etc, rather than using the 1st, 2nd, and 3rd, then 2nd, 3rd, and 4th points, etc. As I said earlier, I'm assuming that you didn't want a linear regression, but rather an exact fit. (The linear regression will be a couple orders of magnitude slower, but if you don't have a ton of points, it won't matter much.) –  Joe Kington Sep 8 '11 at 16:34
what if y is not defined, there is only a array of x? –  Merlin Sep 8 '11 at 17:00
In that case, you can just divide by the step size. e.g. `slope = np.convolve(x, window, mode='same') / (len(window) - 1)` –  Joe Kington Sep 8 '11 at 17:17
see edits please –  Merlin Sep 8 '11 at 17:45
show 3 more comments

Just use the subset of the data that contains the points (periods -- I'm assuming you're talking about financial data here) you're interested in:

``````for i in range(len(x)):
if i<len(x)-3:
slope, intercept, r_value, p_value, std_err = stats.linregress(x[i:i+3],y[i:i+3])
if i<len(x)-5:
slope, intercept, r_value, p_value, std_err = stats.linregress(x[i:i+5],y[i:i+5])
``````

(This isn't the most efficient approach, btw, if all you want is the slopes, but it's easy.)

-
I was thinking some like slope(x,3) or slope (x,5) where return was only the slope vector or array ..... –  Merlin Sep 8 '11 at 15:49
see edit, for idea –  Merlin Sep 8 '11 at 15:54
That's the basic idea, except in your def, what's i?, in mine it's the loop variable, so each i gives the slope of a different set of points; and also, linregress will return a tuple, not a single value, so you can either assign them all to variables, or just assign the tuple and pick off the first entry, like r = stats.linregress(x[i:i+n], y[i:i+n]), then slope = r[0], or just slope = (stats.linregress(x[i:i+n],y[i:i+n]))[0]. –  tom10 Sep 8 '11 at 15:59
can you fix answer above with comment solution. –  Merlin Sep 8 '11 at 16:13