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1. Prove 0! = 1 in two ways
a. Algebraic approach

   If n! is defined as the product of all positive integers from 1 to n, then:
       1! = 1 ⋅ 1 = 1
       2! = 1 ⋅ 2 = 2
       3! = 1 ⋅ 2 ⋅ 3 = 6
       4! = 1 ⋅ 2 ⋅ 3 ⋅ 4 = 24
       ...
        n ! = 1 ⋅ 2 ⋅ 3 ⋅ ... ⋅ ( n − 2 ) ⋅ ( n − 1) ⋅ n
   Logically, n ! can also be expressed as n ! = n ⋅ ( n − 1) ! .

   Therefore, at n = 1 , using n ! = n ⋅ ( n − 1) !
       1! = 1 ⋅ ( 1 − 1) !
       1! = 1 ⋅ 0!

   Since we have shown above that 1! = 1 , we substitute it. Now we have,
       1 = 1 ⋅ 0!
   which simplifies to 1 = 0! or 0! = 1

b. Higher function (gamma function)

   The gamma function Γ ( n ) is defined by the following integral:
                                                                      ∞
                                                           Γ ( n ) = ∫ e− x x n −1dx
                                                                     0

   We derive an expression for Γ ( n + 1) as a function of Γ ( n )
                              ∞
        Γ ( n + 1) = ∫ e− x x n +1−1dx
                             0
                              ∞
                          = ∫ e− x x n dx
                             0

   We use integration by parts to solve this integral
                                      ∞
                          − xn 
            ∞                        ∞
        ∫       e x dx =  x  + n ∫ e − x x n −1dx
                 −x   n

                          e 0
         0                          0


   At infinity, Bernoulli’s rule states that
            − xn        − n!⋅ x 0
                 = lim            =0
        lim
        x →∞ e x           ex
                   x →∞
                                            ∞
                       − xn 
   So the first term,  x  , evaluates to zero, which leaves
                       e 0
                                  ∞
        Γ ( n + 1) = n ∫ e − x x n −1dx
                                 0

                          = nΓn = n !

   Using this formula derive a pattern
Γ ( 3) = Γ ( 2 + 1) = 2Γ ( 2 ) = 2 ⋅ 1! = 2! = 2
       Γ ( 4 ) = Γ ( 3 + 1) = 3Γ ( 3) = 3 ⋅ 2! = 3! = 6
       Γ ( n + 1) = nΓ ( n ) = n ⋅ ( n − 1) ! = n !

   If we use n=1
       Γ ( 1 + 1) = Γ ( 2 ) = 1Γ ( 1)
                1! = 1 ⋅ ( 1 − 1) !
                     = 1 ⋅ ( 0!)
               0! = 1

                                                                                                           2
                                                                                                n 
                                                                                       n
                                                              n
                                                                                    n∑ xi 2 −  ∑ xi 
                                                          ∑( x          − x)
                                                                               2
                                                                    i
2. Prove the variance                                                                            i =1 
                                                                                   = i =1
                                                s2 =      i =1

                                                                                          n ( n − 1)
                                                                   n −1
   Proof by definition:
               n

              ∑( x               − x)
                                        2
                         i
       s2 =   i =1

                     n −1
               n

              ∑( x               − 2 xxi + x 2 )
                             2
                         i
          =   i =1

                                 n −1
               n                            n                 n

              ∑x             − 2 x ∑ xi + ∑ x 2
                         2
                     i
          =   i =1                      i =1              i =1

                                    n −1
               n                            n

              ∑ xi 2 − 2 x ∑ xi + nx 2
          =   i =1                      i =1

                                   n −1
                                                  n

                                                ∑x        i
   By replacing x with                                            we’ll have,
                                                 i =1

                                                      n
                                                                                            2
                                                                   n                 
                                            n

                           ∑ xi                                      ∑ xi
                                                       n                             
              n

            ∑                                           ∑ xi  + n  i =1
                 xi 2 − 2  i =1                                                        
                          n                            i =1      n                 
            i =1
                                                                                     
                                                                                     
          =
                                                      n −1
                                                                                         2
                        n  n          n 
                        ∑ xi  ∑ xi  n  ∑ xi 
              n

            ∑ xi 2 − 2  i =1  i =1  +  i =n12 
                              n
          = i =1
                              n −1
2
                     n  n   n 
                     ∑ xi  ∑ xi   ∑ xi 
             n

           ∑ xi − 2  i =1  i =1  +  i =1n 
                2

                            n
         = i =1
                           n −1
                                                        2
                     n  n   n 
             n
          n∑ xi − 2  ∑ xi  ∑ xi  +  ∑ xi 
                 2

                     i =1  i =1   i =1 
         = i =1
                          n ( n − 1)
                                      2         2
                      n  n 
             n
          n∑ xi 2 − 2  ∑ xi  +  ∑ xi 
                       i =1   i =1 
         = i =1
                      n ( n − 1)
                                            2
                             n 
                              n
                 n∑ xi −  ∑ xi  2

   We now have 2              i =1 
              s = i =1
                       n ( n − 1)



                  ∑                    ∑ fd ' 
                         fx                                  x − x'
3. Prove that x =             = x' + i         where d ' =        is unit deviation and x ' is assumed
                                      n
                     n                                         i
                                              
mean
                          x − x'
   From the given d ' =          we can derive the value of x
                            i
        ' x − x' 
       d =              i
                 i
       
       id ' = x − x '
   By adding x ' to both sides of the equality we’ll have
       x = id ' + x '

   We substitute the value of x to the equation x = ∑
                                                         fx
                                                       n
             ∑ f ( id + x )
                         '   '

       x=
                     n
             i ∑ f d ' + ∑ fx '
         =
                        n
             i ∑ f d ∑ fx '
                      '

       x=                +
                n            n

   We substitute the definition ∑ = 1 to x = ∑
                                                i f d ' ∑ fx '
                                    f
                                                         +
                                  n                n        n
             i∑ f d ∑ f '
                      '

       x=                +     x
                n           n
i∑ f d '
                              + ( 1) x '
              =
                    n
                  i∑ f d '
              =               + x'
                      n
                                           i∑ f d '
      We now have x = x ' +
                                                   n


4. Derive the equation of linear regression y = a + bx .
            ∑ y ∑ x − ∑ x∑ xy     2

          a=
              n∑ x − ( ∑ x )
                                               2
                                  2



            ∑ xy − ∑ x∑ y
         b=
            n∑ x − ( ∑ x )
                                           2
                          2




               y = ∑ a + bx
(1)
          ∑ y = an + b∑ x
              x ( y = a + bx )
(2)
               xy = ax + bx 2
          ∑ xy = a∑ x + b∑ x                   2




                                                                                      ( ∑ xy = a∑ x + b∑ x ) n
           ( ∑ y = an + b∑ x ) ∑ x                                                                             2
                                                       2
(3)
         ( ∑ xy = a∑ x + b∑ x ) ∑ x                                                     ( ∑ y = an + b∑ x ) ∑ x
                                                   2



                  ∑ x ∑ y = ∑ x ( an ) + ∑ x ( b∑ x )                                       n ∑ xy = an∑ x + bn∑ x
                              2                        2           2                                                 2

(4)
              - ∑ x ∑ xy = ∑ x ( a ∑ x ) + ∑ x ( b∑ x )                                 ∑ x∑ y = an∑ x + b∑ x∑ x
                                                                       2
                                                                                      -

      ∑ x ∑ y − ∑ x∑ xy = an∑ x − a ( ∑ x )                                     n∑ xy − ∑ x∑ y = bn∑ x − b ( ∑ x )
                                                                       2                                                 2
          2                                                2                                               2



                                                                               n∑ xy − ∑ x∑ y b ( n∑ x − ( ∑ x ) )
          ∑ x ∑ y − ∑ x∑ xy = a ( n∑ x − a ∑ x∑ x )
                                                                                                                         2
                                                                                                               2
                                                               2
                  2

                                                                                               =
(5)
             n∑ x − a ( ∑ x )      n∑ x − a ( ∑ x )
                                           2                               2
                                                                                n∑ x − ( ∑ x )    n∑ x − ( ∑ x )
                                                                                                2                    2
                      2                                        2                      2                    2




                                                                                    n∑ xy − ∑ x ∑ y
                  ∑ x ∑ y − ∑ x∑ xy
                      2
                                                                               b=
          a=
                                                                                    n∑ x 2 − ( ∑ x )
                   n∑ x − a ( ∑ x )
                                                                                                       2
                                                   2
                              2

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Proj Stat

  • 1. 1. Prove 0! = 1 in two ways a. Algebraic approach If n! is defined as the product of all positive integers from 1 to n, then: 1! = 1 ⋅ 1 = 1 2! = 1 ⋅ 2 = 2 3! = 1 ⋅ 2 ⋅ 3 = 6 4! = 1 ⋅ 2 ⋅ 3 ⋅ 4 = 24 ... n ! = 1 ⋅ 2 ⋅ 3 ⋅ ... ⋅ ( n − 2 ) ⋅ ( n − 1) ⋅ n Logically, n ! can also be expressed as n ! = n ⋅ ( n − 1) ! . Therefore, at n = 1 , using n ! = n ⋅ ( n − 1) ! 1! = 1 ⋅ ( 1 − 1) ! 1! = 1 ⋅ 0! Since we have shown above that 1! = 1 , we substitute it. Now we have, 1 = 1 ⋅ 0! which simplifies to 1 = 0! or 0! = 1 b. Higher function (gamma function) The gamma function Γ ( n ) is defined by the following integral: ∞ Γ ( n ) = ∫ e− x x n −1dx 0 We derive an expression for Γ ( n + 1) as a function of Γ ( n ) ∞ Γ ( n + 1) = ∫ e− x x n +1−1dx 0 ∞ = ∫ e− x x n dx 0 We use integration by parts to solve this integral ∞  − xn  ∞ ∞ ∫ e x dx =  x  + n ∫ e − x x n −1dx −x n  e 0 0 0 At infinity, Bernoulli’s rule states that − xn − n!⋅ x 0 = lim =0 lim x →∞ e x ex x →∞ ∞  − xn  So the first term,  x  , evaluates to zero, which leaves  e 0 ∞ Γ ( n + 1) = n ∫ e − x x n −1dx 0 = nΓn = n ! Using this formula derive a pattern
  • 2. Γ ( 3) = Γ ( 2 + 1) = 2Γ ( 2 ) = 2 ⋅ 1! = 2! = 2 Γ ( 4 ) = Γ ( 3 + 1) = 3Γ ( 3) = 3 ⋅ 2! = 3! = 6 Γ ( n + 1) = nΓ ( n ) = n ⋅ ( n − 1) ! = n ! If we use n=1 Γ ( 1 + 1) = Γ ( 2 ) = 1Γ ( 1) 1! = 1 ⋅ ( 1 − 1) ! = 1 ⋅ ( 0!) 0! = 1 2 n  n n n∑ xi 2 −  ∑ xi  ∑( x − x) 2 i 2. Prove the variance  i =1  = i =1 s2 = i =1 n ( n − 1) n −1 Proof by definition: n ∑( x − x) 2 i s2 = i =1 n −1 n ∑( x − 2 xxi + x 2 ) 2 i = i =1 n −1 n n n ∑x − 2 x ∑ xi + ∑ x 2 2 i = i =1 i =1 i =1 n −1 n n ∑ xi 2 − 2 x ∑ xi + nx 2 = i =1 i =1 n −1 n ∑x i By replacing x with we’ll have, i =1 n 2   n  n  ∑ xi  ∑ xi  n   n ∑   ∑ xi  + n  i =1 xi 2 − 2  i =1  n   i =1  n  i =1         = n −1 2  n  n  n   ∑ xi  ∑ xi  n  ∑ xi  n ∑ xi 2 − 2  i =1  i =1  +  i =n12  n = i =1 n −1
  • 3. 2  n  n   n   ∑ xi  ∑ xi   ∑ xi  n ∑ xi − 2  i =1  i =1  +  i =1n  2 n = i =1 n −1 2  n  n   n  n n∑ xi − 2  ∑ xi  ∑ xi  +  ∑ xi  2  i =1  i =1   i =1  = i =1 n ( n − 1) 2 2 n  n  n n∑ xi 2 − 2  ∑ xi  +  ∑ xi   i =1   i =1  = i =1 n ( n − 1) 2 n  n n∑ xi −  ∑ xi  2 We now have 2  i =1  s = i =1 n ( n − 1) ∑  ∑ fd '  fx x − x' 3. Prove that x = = x' + i  where d ' = is unit deviation and x ' is assumed n n i   mean x − x' From the given d ' = we can derive the value of x i  ' x − x'  d = i i  id ' = x − x ' By adding x ' to both sides of the equality we’ll have x = id ' + x ' We substitute the value of x to the equation x = ∑ fx n ∑ f ( id + x ) ' ' x= n i ∑ f d ' + ∑ fx ' = n i ∑ f d ∑ fx ' ' x= + n n We substitute the definition ∑ = 1 to x = ∑ i f d ' ∑ fx ' f + n n n i∑ f d ∑ f ' ' x= + x n n
  • 4. i∑ f d ' + ( 1) x ' = n i∑ f d ' = + x' n i∑ f d ' We now have x = x ' + n 4. Derive the equation of linear regression y = a + bx . ∑ y ∑ x − ∑ x∑ xy 2 a= n∑ x − ( ∑ x ) 2 2 ∑ xy − ∑ x∑ y b= n∑ x − ( ∑ x ) 2 2 y = ∑ a + bx (1) ∑ y = an + b∑ x x ( y = a + bx ) (2) xy = ax + bx 2 ∑ xy = a∑ x + b∑ x 2 ( ∑ xy = a∑ x + b∑ x ) n ( ∑ y = an + b∑ x ) ∑ x 2 2 (3) ( ∑ xy = a∑ x + b∑ x ) ∑ x ( ∑ y = an + b∑ x ) ∑ x 2 ∑ x ∑ y = ∑ x ( an ) + ∑ x ( b∑ x ) n ∑ xy = an∑ x + bn∑ x 2 2 2 2 (4) - ∑ x ∑ xy = ∑ x ( a ∑ x ) + ∑ x ( b∑ x ) ∑ x∑ y = an∑ x + b∑ x∑ x 2 - ∑ x ∑ y − ∑ x∑ xy = an∑ x − a ( ∑ x ) n∑ xy − ∑ x∑ y = bn∑ x − b ( ∑ x ) 2 2 2 2 2 n∑ xy − ∑ x∑ y b ( n∑ x − ( ∑ x ) ) ∑ x ∑ y − ∑ x∑ xy = a ( n∑ x − a ∑ x∑ x ) 2 2 2 2 = (5) n∑ x − a ( ∑ x ) n∑ x − a ( ∑ x ) 2 2 n∑ x − ( ∑ x ) n∑ x − ( ∑ x ) 2 2 2 2 2 2 n∑ xy − ∑ x ∑ y ∑ x ∑ y − ∑ x∑ xy 2 b= a= n∑ x 2 − ( ∑ x ) n∑ x − a ( ∑ x ) 2 2 2