Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I've recently started using Python (and have also started looking at R).I came across an interesting example (copied below for reference) in R which I wanted to try and see if I could implement in Python (without using rpy or Pandas etc.).

R code-example

# Goal:
#       A stock is traded on 2 exchanges.
#       Price data is missing at random on both exchanges owing to non-trading.
#       We want to make a single price time-series utilising information
#       from both exchanges. I.e., missing data for exchange 1 will
#       be replaced by information for exchange 2 (if observed).
# Let's create some example data for the problem.
e1 <- runif(15)                         # Prices on exchange 1
e2 <- e1 + 0.05*rnorm(15)               # Prices on exchange 2.
cbind(e1, e2)
# Blow away 5 points from each at random.
e1[sample(1:15, 5)] <- NA
e2[sample(1:15, 5)] <- NA
cbind(e1, e2)
# Now how do we reconstruct a time-series that tries to utilise both?
combined <- e1                          # Do use the more liquid exchange here.
missing <- is.na(combined)
combined[missing] <- e2[missing]        # if it's also missing, I don't care.
cbind(e1, e2, combined)

I have tried

import numpy as np 
e1=np.random.random((15,)).reshape(-1,1)
e2=e1+0.05*np.random.standard_normal(15).reshape(-1,1)
np.concatenate((e1,e2),axis=1) # cbind equivalent on two vectors

I have not managed to do the next section i.e.

# Blow away 5 points from each at random

I did try python's np.random.random_sample command but could not get it to work at all.
I would very much appreciate your assistance please with this and the last section i.e. reconstructing the timeseries that tries to utilise both data arrays as described above.

share|improve this question

1 Answer 1

up vote 1 down vote accepted

You can use the "random" package

import numpy as np 
import random
e1=np.random.random((15,)).reshape(-1,1)
e2=e1+0.05*np.random.standard_normal(15).reshape(-1,1)
e1[random.sample(range(e1.shape[0]), 5),:] = np.nan
e2[random.sample(range(e2.shape[0]), 5),:] = np.nan
np.concatenate((e1,e2),axis=1)
share|improve this answer
    
Thank you (Kith) for your reply. I was able to finish the rest of the translation from R to Python code. Using the np.isnan(e1) function was easy to use. Big thumbs up for Python! –  willf Feb 13 '13 at 21:19
    
no problem. If the answer was helpful, why not hit the accept button? –  kith Feb 13 '13 at 22:06

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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