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{{see also|Machine learning terms}} | {{see also|Machine learning terms}} | ||
==Introduction== | ==Introduction== | ||
Z-score normalization is a type of data scaling that transforms data values to have a mean of zero and standard deviation of one. This transformation occurs by subtracting the mean from each value and dividing by its standard deviation. The results are known as Z-scores, which indicate how far away from the mean each data point is. | |||
Data normalization in machine learning is a critical preprocessing step that helps boost the performance of many algorithms. Normalization involves scaling data to a specified range or distribution to reduce the impact of differences in scale or units of features. | |||
==Example== | |||
A feature with the mean of 500 and a standard deviation of 100 | |||
{| class="wikitable" | |||
| | |||
|- | |||
! raw value | |||
! Z-score | |||
|- | |||
| 500 || 0 | |||
|- | |||
| 600 || 1 | |||
|- | |||
| 355 || -1.45 | |||
|- | |||
|} | |||
==Why is Z-score normalization used?== | ==Why is Z-score normalization used?== |