S'identifier

Chebyshev’s theorem, also known as Chebyshev’s Inequality, states that the proportion of values of a dataset for K standard deviation is calculated using the equation:

Equation1

Here, K is any positive integer greater than one. For example, if K is 1.5, at least 56% of the data values lie within 1.5 standard deviations from the mean for a dataset. If K is 2, at least 75% of the data values lie within two standard deviations from the mean of the dataset, and if K is equal to 3, then at least 89% of the data values lie within three standard deviations from the mean of that dataset.

Interestingly, Chebyshev’s theorem estimates the proportion of data that will fall inside (minimum proportion) and outside (maximum proportion) a given number of standard deviations. If K is equal to 2, then the rule suggests a possibility that 75% of the data values lie inside two standard deviations from the mean and 25 % of the data value lie outside the two standard deviations away from the mean. It is important to understand that this theorem provides only approximations and not exact answers.

One of the advantages of this theorem is that it can be applied to datasets having normal, unknown, or skewed distributions. In contrast, the empirical or three-sigma rule can only be used for datasets with a normal distribution.

Tags
Chebyshev s TheoremChebyshev s InequalityStandard DeviationData ValuesK Standard DeviationsMeanDataset DistributionApproximationsEmpirical RuleNormal DistributionSkewed Distribution

Du chapitre 4:

article

Now Playing

4.10 : Chebyshev's Theorem to Interpret Standard Deviation

Measures of Variation

4.0K Vues

article

4.1 : Qu’est-ce que la variation ?

Measures of Variation

10.9K Vues

article

4.2 : Gamme

Measures of Variation

10.8K Vues

article

4.3 : Écart type

Measures of Variation

15.5K Vues

article

4.4 : Erreur type de la moyenne

Measures of Variation

5.4K Vues

article

4.5 : Calcul de l’écart-type

Measures of Variation

7.0K Vues

article

4.6 : Variance

Measures of Variation

9.1K Vues

article

4.7 : Coefficient de variation

Measures of Variation

3.6K Vues

article

4.8 : Règle empirique de l’intervalle pour interpréter l’écart-type

Measures of Variation

8.7K Vues

article

4.9 : Méthode empirique d’interprétation de l’écart-type

Measures of Variation

5.0K Vues

article

4.11 : Écart absolu moyen

Measures of Variation

2.5K Vues

JoVE Logo

Confidentialité

Conditions d'utilisation

Politiques

Recherche

Enseignement

À PROPOS DE JoVE

Copyright © 2025 MyJoVE Corporation. Tous droits réservés.