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I'm looking for a good way to store and use conditional probabilities in python.

I'm thinking of using a pandas dataframe. If the conditional probabilities of some X are P(X=A|P1=1, P2=1) = 0.2, P(X=B|P1=2, P2=1) = 0.9 etc., I would use the dataframe

         A    B
P1 P2          
1  1   0.2  0.8
   2   0.5  0.5
2  1   0.9  0.1
   2   0.9  0.1

and given the marginal probabilities of P1 and P2 as Series

1    0.4
2    0.6
Name: P1

1    0.7
2    0.3
Name: P2

I would like to obtain the Series of marginal probabilities of X, i.e. the series

A    0.602
B    0.398
Name: X

I can get what I want by

X = sum(
    sum(
        X.xs(i, level="P1")*P1[i]
        for i in P1.index
        ).xs(j)*P2[j]
    for j in P2.index
    )
X.name="X"

but this is not easily generalizable to more dependencies, the asymmetry between the first xs with level and the second one without looks weird and as usual when working with pandas I'm very sure that there is a better solution using it's tricks and methods.

Is pandas a good tool for this, should I represent my data in another way, and what is the best way to do this calculation, which is essentially an indexed tensor product, in pandas?

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1 Answer

up vote 0 down vote accepted

One way to vectorize is access the values in Series P1 and P2 by indexing with an array of labels.

In [20]: df = X.reset_index()

In [21]: mP1 = P1[df.P1].values

In [22]: mP2 = P2[df.P2].values

In [23]: mP1
Out[23]: array([ 0.4,  0.4,  0.6,  0.6])

In [24]: mP2
Out[24]: array([ 0.7,  0.3,  0.7,  0.3])

In [25]: mp = mP1 * mP2

In [26]: mp
Out[26]: array([ 0.28,  0.12,  0.42,  0.18])

In [27]: X.mul(mp, axis=0)
Out[27]: 
       A      B
P1 P2              
1  1   0.056  0.224
   2   0.060  0.060
2  1   0.378  0.042
   2   0.162  0.018

In [28]: X.mul(mp, axis=0).sum()
Out[28]: 
A    0.656
B    0.344

In [29]: sum(
    sum(
    X.xs(i, level="P1")*P1[i]
    for i in P1.index
    ).xs(j)*P2[j]
    for j in P2.index
    )
Out[29]: 
A    0.656
B    0.344

(Alternately, access the values of a MultiIndex without resetting the index as follows.)

In [38]: P1[X.index.get_level_values("P1")].values
Out[38]: array([ 0.4,  0.4,  0.6,  0.6])
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