All right, I've done quite a bit of research on the subject, and I'm aware that NumPy only supports homogeneous matrices.

I'm working with in Python with the NLTK package to deal with some corpus linguistics data, and simply want to make a matrix with different Strings as the 'column names' and the actual data values (floats) as the rest of the matrix.

So far, I've made two matrices, one with the Strings and one with the floats, and used vstack to put them on top of each other. All was fine and dandy until I tried using NumPy's savetxt() method with this new 'matrix' of stacked matrices, but it won't write the .csv file because the matrix is not 'matrix-like' in that it's not homogeneous. FML.

I really want to be able to use NumPy for all the awesome methods it has for dealing with the actual data points, but I can't get a freakin' array of Strings to get put at the top of the matrix to turn into a .csv. Any ideas? I'd really love to not have to try this all again by making Python's list-of-lists approach to multidimensional arrays.

Here is le code:

```
import os.path
import sys
import nltk
from numpy import *
from nltk.corpus.reader import CHILDESCorpusReader
from nltk.probability import ConditionalFreqDist, FreqDist
n_rows = 12
n_cols = 19
init_row = 0
init_col = 0
neg_words = ["Age", "MLU", "All Tokens","no","not","don't","can't","won't","isn't","wasn't","wouldn't","shouldn't","couldn't","didn't","haven't","aren't","haven't","hasn't","doesn't"]
Matrix_headers = array(range(len(neg_words)), dtype='a12')
Matrix_values = zeros(n_rows*n_cols).reshape((n_rows, n_cols)) #the matrix with the data points (floats)
for entry in range(len(neg_words)):
Matrix_headers[entry] = neg_words[entry]
p = neg_words
q = Matrix_values
Matrix = vstack([p,q])
out_name = "/Users/nicholasmoores/Documents/Research/neg_table.csv"
savetxt(out_name, Matrix, fmt='%.3e',delimiter = "\t")
raw_input("\n\nPress the enter key to exit.")
```

`pandas`

'`DataFrame`

? – Brian Cain Jun 21 '13 at 1:13