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I have two matrices, one of texts and one of word frequencies in the text. I remove one row from word frequency matrix. How can I then extract a row from the word frequency matrix, using the text number (row index from the text matrix)?

For example:

Step 1: List of texts

I have a list of texts in rows, where each text is referred to by its row number:

>>print type(texts)
>>print texts.shape
<type 'numpy.ndarray'>
(53,)

Step 2: Select texts based on their row number

And I have a range like this:

>>print train_range
>>[ 1  2  3  4  5  6  7  8  9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25
  26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50
  51 52]

This range is used to select rows from texts. This basically means deleting one text, as only 52 row indices in the train_range. In the below example, the first row (row 0) is removed, as 0 is not in train_range:

texts[train_range]

Step 3: Get word frequencies of texts

The texts are then analysed (by word frequency) to return a sparse matrix train_X. Since each text is a row in texts, the word frequencies for each text are placed in a row in train_X. So texts has 53 rows, texts[train_range] has 52 rows, and train_X has 52 rows:

trainX = get_word_freq_matrix( texts[train_range] )
>>print train_X.shape
(52, 6237)
>>print type(train_X)
<class 'scipy.sparse.csr.csr_matrix'>

Step 4: Get word frequencies for some texts

I now want to get rows from train_X with their original text number, using a new range, like this:

apply_range = [4,7,8]
train_X[apply_range]

However, the numbers in apply_range (like train_range) refer to the rows in texts. The numbers don't refer to the rows in train_X. How can I use this range to get the correct frequencies from train_X based on where they appear in texts?

I have tried referencing rows in a matrix using index from another matrix. However, I'm not sure how this can work, as the function doesn't take into account WHICH text was deleted from texts.

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You'll probably have to save somewhere some information about which rows were deleted and then get the correct indexes to be used for train_X using a function. Something like train_X[get_correct_indexes([4,7,8], who_got_deleted)]. At least this shouldn't be too hard to implement, maybe there are better ways of doing this. –  Bakuriu Sep 7 '12 at 18:03
    
From a cursory look, it seems that you're associating different types of data together. Rather than storing them in separate parallel lists (where the association is based in position in the list), perhaps a dictionary datatype of key/value pairs might better serve your needs? –  abought Sep 7 '12 at 18:16
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1 Answer

With everything else like you explained in the question, just do

apply_range = [4,7,8]
train_X[[train_range.index(i) for i in apply_range]]
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