1

I've used scale from sklearn.preprocessing to scale my data on the X and Y axis which compressed my data to -2 < x < 2. When I plot this data, I want the original scaling back for use on the tick marks.

My code looks like:

scale(readings_array, copy=False)
plt.plot(readings_array)
ax = plt.gca()
ax.set_xticklabels(np.arange(0,24))
plt.ylabel("Total Traffic Volume")
plt.xlabel("Time")
plt.show()

Which looks like:

plot

What I really want is for the the xlabels to be 0->24 (0 at the smallest value) for hours of the day and the ylabels to be 0->600

2

My first answer is: just keep a copy of your original data. Much the simplest, most pythonic answer.

scaled_array = scale(readings_array, copy=True)
# do stuff like learning with scaled_array
plt.plot(readings_array)

If you are trying to avoid making copies of your data. use StandardScaler() instead of scale(). You can either inverse_transform() the data when you are done using the scaled data:

scaler = sklearn.preprocessing.StandardScaler(copy=False)
readings_array = scaler.fit_transform( readings_array )
# do stuff with scaled data
readings_for_plotting = scaler.inverse_transform( readings_array )

or use the scaling factors to create x_ticks and x_ticklabels:

my_xtick_labels = np.arange(0,25)
my_xticks = (my_xticks*scaler.std_) + scaler.mean_
plt.set_xticks( my_xticks )
plt.set_xticklables( my_xtick_labels )

With my apologies for typos.

  • I used the first suggestion, so simple I love it! – Jonno_FTW Jun 18 '15 at 3:00

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.