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Goal: To add a column to a dataframe consisting of labels as follows:

(-10,5]=-2

(-5,0]= -1

[0,5)  = 0

[5,10)=  1

[10,15)= 2

....etc

If the df.ptdelta is between (-10,5] it receives -2 added to a column of df.

Attempt 1:

df=pd.read_csv("___.csv",names="a b c d e f".split())
df.set_index(["a", "b"], inplace=True)
d=df["d"]<5 
u=df["d"]>=0

p=df["d"][d & u]

This appears to find no instances: Series([], dtype=object)

But indeed there are doubles in df["d"] within this range.

Attempt 2:

zero=[x for x in df["d"] if (0<=df["d"]) & (df["d"]<5)]

Which results in:

ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()

Why do either of these fail? Many thanks.

df.head() gives: 

        price   ptdelta     II  pl
date    time                
date    time    price   ptdelta II  pl
1/5/2009    930     842     0   -   0
            1620    845.2   3.2     -   6.6
1/6/2009    930     851.8   6.6     -      -3.6
            1620    848.2   -3.6    -   -13
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1 Answer 1

You are binning the data and labeling it by bin. Happily, numpy.digitize can do that for you.

bins = [-10, -5, 0, 5, 10, 15]
labels = np.digitize(data, bins) - 3

Example:

In[1]: df = DataFrame({'d': np.random.randint(-20, 20, 100)})

In[2]: bins = [-10, -5, 0, 5, 10, 15]

In[3]: df['labels'] = np.digitize(df['d'], bins) - 3

In[4]: df.head()
Out[4]:
   d  labels
0 -8      -2
1  4       0
2 -7      -2
3 -3      -1
4  5       1

These bins are closed on the left, like [-10, 5). I think the bins you specified are not self-consistent. (Should I label 0 as -1 or 0?) Anyway, if the edge cases are crucial, see the documentation for more options.

http://docs.scipy.org/doc/numpy/reference/generated/numpy.digitize.html

Any data points less than -10 or greater than 15 will be labeled -3 and 3, respectively. You can discard them if need be.

share|improve this answer
    
Thanks for your idea. It seems that df['d'] is not agreeable(for my existing df["d"]) consisting of doubles: "TypeError: array cannot be safely cast to required type" I tried casting it to a list first which also didn't work. Also why do you subtract 3? –  Michele Reilly Mar 15 '13 at 20:57
    
np.digitize labels the bins starting with 1. You label the bins starting with -2. –  Dan Allan Mar 15 '13 at 21:01
    
I'm not sure what to make of that error. Can you post the output of df.head()? –  Dan Allan Mar 15 '13 at 21:02
    
Sure, I edited above to share df.head(). I actually label bins between [-60,60] (I was just writing that for the sake of simplicity). –  Michele Reilly Mar 15 '13 at 21:11
    
It looks like your input file starts with a header of labels, and these maybe mucking up your data. Try passing skiprows=3 to read_csv. –  Dan Allan Mar 15 '13 at 21:52

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