Z-score normalization: Difference between revisions

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==Example==
==Example==
A feature with the mean of 500 and a standard deviation of 100.
A [[feature]] with the mean of 500 and a standard deviation of 100.
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Let us assume we have a dataset with two features, height (in cm) and weight (in kg), that we would like to apply Z-score normalization to. The data values for these features can be seen in the following table:
Let us assume we have a dataset with two features, height (in cm) and weight (in kg), that we would like to apply Z-score normalization to. The data values for these features can be seen in the following table:


Height (cm) | Weight (kg) |
{| class="wikitable"
| 180 | 85 | 150 | 55
|
|-
! Height (cm)
! Weight (kg
|-
| 180 || 85
|-
| 150 || 55
|-
|}


Before applying Z-score normalization to the dataset, we must first calculate the mean and standard deviation for each feature. These values can be found in the following table:
Before applying Z-score normalization to the dataset, we must first calculate the mean and standard deviation for each feature. These values can be found in the following table:


| Features | Mean | Standard Deviation |
{| class="wikitable"
Height (cm): 166 | 10.954
|
Weight (kg): 65.6 | 14.834 |
|-
! Features
! Mean
! Standard Deviation
|-
| Height (cm) || 166 || 10.954
|-
| Weight (kg) || 65.6 || 14.834
|-
|}


By applying the formula for Z-score normalization to each data value in our dataset, we can calculate Z-scores individually. The results are displayed in the following table:
By applying the formula for Z-score normalization to each data value in our dataset, we can calculate Z-scores individually. The results are displayed in the following table: