How to normalize data loaded from file? Here what I have. Data looks kind of like this:
65535, 3670, 65535, 3885, -0.73, 1
65535, 3962, 65535, 3556, -0.72, 1
Last value in each line is a target. I want to have the same structure of the data but with normalized values.
import numpy as np
dataset = np.loadtxt('infrared_data.txt', delimiter=',')
# select first 5 columns as the data
X = dataset[:, 0:5]
# is that correct? Should I normalize along 0 axis?
normalized_X = preprocessing.normalize(X, axis=0)
y = dataset[:, 5]
Now the question is, how to pack correctly normalized_X
and y
back, that it has the structure:
dataset = [[normalized_X[0], y[0]],[normalized_X[1], y[1]],...]
np
looks like a module (I assumenumpy
!?). Please tag your question with it. That, on the one hand, helps people to better understand the question, on the other hand, get the attention of people with a more profound knowledge about this. :)numpy
, so I don't know, whether this works):dataset = [a + [b] for a, b in zip(normalized_X, y)]
(no guarantee!)[(array([ 1. , 0.0202, 1. , 0.0455, 0.2121]), 1.0), (array([ 1. , 0.0301, 1. , 0.0255, 0.2273]), 1.0)]
. How to get rid of thisarray()
and make the elements of outer tuple just coma separated?numpy
. in normal python it would have worked.dataset = [magic_function_to_convert_to_normal_list(a) + [b] for a, b in zip(normalized_X, y)]
^^ but I would not recommend it, as you would loose the magic ofnumpy