Thorem stating how much of a population is within n standard deviations from the mean












2














In a statistics class I took in college, I remember learning about a theorem stating that 50% of the population must be within 1σ from μ, 75% within 1σ, and so on, regardless of the distribution. The distribution can be tighter, but this much is a guarantee.



People don't seem to be familiar with this, I'm not sure I remembered the numbers right, and I'm not sure this even exists. Is this a thing?










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    2














    In a statistics class I took in college, I remember learning about a theorem stating that 50% of the population must be within 1σ from μ, 75% within 1σ, and so on, regardless of the distribution. The distribution can be tighter, but this much is a guarantee.



    People don't seem to be familiar with this, I'm not sure I remembered the numbers right, and I'm not sure this even exists. Is this a thing?










    share|cite|improve this question







    New contributor




    David Ehrmann is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
    Check out our Code of Conduct.























      2












      2








      2







      In a statistics class I took in college, I remember learning about a theorem stating that 50% of the population must be within 1σ from μ, 75% within 1σ, and so on, regardless of the distribution. The distribution can be tighter, but this much is a guarantee.



      People don't seem to be familiar with this, I'm not sure I remembered the numbers right, and I'm not sure this even exists. Is this a thing?










      share|cite|improve this question







      New contributor




      David Ehrmann is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
      Check out our Code of Conduct.











      In a statistics class I took in college, I remember learning about a theorem stating that 50% of the population must be within 1σ from μ, 75% within 1σ, and so on, regardless of the distribution. The distribution can be tighter, but this much is a guarantee.



      People don't seem to be familiar with this, I'm not sure I remembered the numbers right, and I'm not sure this even exists. Is this a thing?







      probability-distributions standard-deviation






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      asked 1 hour ago









      David Ehrmann

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          2 Answers
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          You're thinking of Chebyshev's inequality.



          For any $k$, in any distribution with a mean and standard deviation, the probability of being more than $k$ standard deviations away from the mean is no more than $frac1{k^2}$.



          Most distributions, of course, are much tighter than this; the theorem is the worst case.






          share|cite|improve this answer





























            3














            Yes, some of it is true, and comes from Tschebychev inequality. It says that
            $$P(|X-mu|le nsigma)ge 1-frac1{n^2}.$$
            This gives the mentioned $0.75$ for $n=2$, but the $0.5$ actually appears if you take $n=sqrt2=1.41ldots$. It says nothing for $n=1$.



            This is valid for any distribution, provided it has a well defined finite mean and a finite variance/s.d. For other distributions exact values can be determined, which are necessarily equal or greater (quite bigger, for most usual distributions) than those given by this theorem.






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              2 Answers
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              2 Answers
              2






              active

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              active

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              active

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              4














              You're thinking of Chebyshev's inequality.



              For any $k$, in any distribution with a mean and standard deviation, the probability of being more than $k$ standard deviations away from the mean is no more than $frac1{k^2}$.



              Most distributions, of course, are much tighter than this; the theorem is the worst case.






              share|cite|improve this answer


























                4














                You're thinking of Chebyshev's inequality.



                For any $k$, in any distribution with a mean and standard deviation, the probability of being more than $k$ standard deviations away from the mean is no more than $frac1{k^2}$.



                Most distributions, of course, are much tighter than this; the theorem is the worst case.






                share|cite|improve this answer
























                  4












                  4








                  4






                  You're thinking of Chebyshev's inequality.



                  For any $k$, in any distribution with a mean and standard deviation, the probability of being more than $k$ standard deviations away from the mean is no more than $frac1{k^2}$.



                  Most distributions, of course, are much tighter than this; the theorem is the worst case.






                  share|cite|improve this answer












                  You're thinking of Chebyshev's inequality.



                  For any $k$, in any distribution with a mean and standard deviation, the probability of being more than $k$ standard deviations away from the mean is no more than $frac1{k^2}$.



                  Most distributions, of course, are much tighter than this; the theorem is the worst case.







                  share|cite|improve this answer












                  share|cite|improve this answer



                  share|cite|improve this answer










                  answered 1 hour ago









                  jmerry

                  1,26916




                  1,26916























                      3














                      Yes, some of it is true, and comes from Tschebychev inequality. It says that
                      $$P(|X-mu|le nsigma)ge 1-frac1{n^2}.$$
                      This gives the mentioned $0.75$ for $n=2$, but the $0.5$ actually appears if you take $n=sqrt2=1.41ldots$. It says nothing for $n=1$.



                      This is valid for any distribution, provided it has a well defined finite mean and a finite variance/s.d. For other distributions exact values can be determined, which are necessarily equal or greater (quite bigger, for most usual distributions) than those given by this theorem.






                      share|cite|improve this answer


























                        3














                        Yes, some of it is true, and comes from Tschebychev inequality. It says that
                        $$P(|X-mu|le nsigma)ge 1-frac1{n^2}.$$
                        This gives the mentioned $0.75$ for $n=2$, but the $0.5$ actually appears if you take $n=sqrt2=1.41ldots$. It says nothing for $n=1$.



                        This is valid for any distribution, provided it has a well defined finite mean and a finite variance/s.d. For other distributions exact values can be determined, which are necessarily equal or greater (quite bigger, for most usual distributions) than those given by this theorem.






                        share|cite|improve this answer
























                          3












                          3








                          3






                          Yes, some of it is true, and comes from Tschebychev inequality. It says that
                          $$P(|X-mu|le nsigma)ge 1-frac1{n^2}.$$
                          This gives the mentioned $0.75$ for $n=2$, but the $0.5$ actually appears if you take $n=sqrt2=1.41ldots$. It says nothing for $n=1$.



                          This is valid for any distribution, provided it has a well defined finite mean and a finite variance/s.d. For other distributions exact values can be determined, which are necessarily equal or greater (quite bigger, for most usual distributions) than those given by this theorem.






                          share|cite|improve this answer












                          Yes, some of it is true, and comes from Tschebychev inequality. It says that
                          $$P(|X-mu|le nsigma)ge 1-frac1{n^2}.$$
                          This gives the mentioned $0.75$ for $n=2$, but the $0.5$ actually appears if you take $n=sqrt2=1.41ldots$. It says nothing for $n=1$.



                          This is valid for any distribution, provided it has a well defined finite mean and a finite variance/s.d. For other distributions exact values can be determined, which are necessarily equal or greater (quite bigger, for most usual distributions) than those given by this theorem.







                          share|cite|improve this answer












                          share|cite|improve this answer



                          share|cite|improve this answer










                          answered 1 hour ago









                          Alejandro Nasif Salum

                          4,279118




                          4,279118






















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