Calculadora de Normalización de Datos Gratis
Normaliza datos al rango [0,1] usando min-max u otros métodos. Prepara datos para análisis comparativo.
Normalized Value [0,1]
0.687500
Normalized Value [0,1] vs Value to Normalize
Fórmula
## How to Normalize Data (Min-Max) ### Formula **Normalized = (X - Min) / (Max - Min)** Min-max normalization rescales data to the [0, 1] interval. The minimum maps to 0 and the maximum maps to 1. This is useful when features have different scales and you need them comparable, such as in machine learning preprocessing.
Ejemplo Resuelto
Dataset ranges from 20 to 100. Normalize the value 75.
- 01Range = 100 - 20 = 80
- 02Normalized = (75 - 20) / 80 = 55 / 80 = 0.6875
- 0375 is 68.75% of the way from min to max
Preguntas Frecuentes
What if a new value falls outside the original min-max range?
The normalized value will be below 0 or above 1. This can happen with new data. You can clip to [0,1] or recalculate min and max. This sensitivity to outliers is a drawback of min-max normalization.
When should I use normalization vs. standardization?
Use min-max normalization when you need bounded [0,1] values or when the data does not follow a normal distribution. Use z-score standardization when you want mean=0, SD=1 and the data is roughly normal. Neural networks often prefer [0,1] inputs.
Does normalization change the distribution shape?
No. Min-max normalization is a linear transformation, so it preserves the relative distances and distribution shape. It only shifts and scales the data.
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