Normal Distribution
Dr. Anup Kumar Sharma
      Department of Mathematics
 National Institute of Technology, Raipur
         December 12, 2022
Dr. Anup Kumar Sharma   Normal Distribution
Normal distribution
      The most important continuous probability distribution in the
      entire field of statistics is the normal distribution.
      Its graph, called the normal curve, is the bell-shaped curve ,
      which approximately describes many phenomena that occur in
      nature, industry, and research.
      For example, physical measurements in areas such as
      meteorological experiments, rainfall studies, and
      measurements of manufactured parts are often more than
      adequately explained with a normal distribution.
      In addition, errors in scientific measurements are extremely
      well approximated by a normal distribution.
      The normal distribution is often referred to as the Gaussian
      distribution.
                  Dr. Anup Kumar Sharma   Normal Distribution
Normal curve
                    Figure 1: The normal curve.
               Dr. Anup Kumar Sharma   Normal Distribution
Normal probability density function
      A continuous random variable X having the bell-shaped
      distribution of Figure 1 is called a normal random variable.
      The mathematical equation for the probability distribution of
      the normal variable depends on the two parameters µ and σ,
      its mean and standard deviation, respectively.
      Hence, we denote the values of the density of X by n(x; µ, σ).
  Normal distribution
  The density of the normal random variable X, with mean µ and
  variace σ 2 , is
                              1
                         1  −    (x−µ)2
           n(x; µ, σ) = √ e 2σ 2        , −∞ < x < ∞
                       σ 2π
                  Dr. Anup Kumar Sharma   Normal Distribution
Normal probability density function
      Once µ and σ are specified, the normal curve is completely
      determined.
      For example, if µ = 50 and σ = 5, then the ordinates
      n(x; 50, 5) can be computed for various values of x and the
      curve drawn.
           Figure 2: Normal curves with µ1 < µ2 and σ1 = σ2 .
                  Dr. Anup Kumar Sharma   Normal Distribution
Normal probability density function
          Figure 3: Normal curves with µ1 = µ2 and σ1 < σ2 .
                 Dr. Anup Kumar Sharma   Normal Distribution
Normal probability density function
          Figure 4: Normal curves with µ1 < µ2 and σ1 < σ2 .
                 Dr. Anup Kumar Sharma   Normal Distribution
Properties of normal curve
   1. The mode, which is the point on the horizontal axis where the
      curve is a maximum, occurs at x = µ.
   2. The curve is symmetric about a vertical axis through the
      mean µ.
   3. The curve has its points of inflection at x = µ ± σ; it is
      concave downward if µ − σ < X < µ + σ and is concave
      upward otherwise.
   4. The normal curve approaches the horizontal axis
      asymptotically as we proceed in either direction away from the
      mean.
   5. The total area under the curve and above the horizontal axis
      is equal to 1.
                  Dr. Anup Kumar Sharma   Normal Distribution
Areas under the normal curves
      The curve of any continuous probability distribution or density
      function is constructed so that the area under the curve
      bounded by the two ordinates x = x1 and x = x2 equals the
      probability that the random variable X assumes a value
      between x = x1 and x = x2 .
      Thus, for the normal curve in Figure 5,
                            Zx2                      Zx2          1
                                                             1  −    (x−µ)2
      P(x1 < X < x2 ) =           n(x; µ, σ)dx =            √ e 2σ 2        dx
                                                           σ 2π
                            x1                      x1
      is represented by the area of the shaded region.
                  Dr. Anup Kumar Sharma   Normal Distribution
Areas under the normal curves
        Figure 5: P(x1 < X < x2 ) = area of the shaded region.
                 Dr. Anup Kumar Sharma   Normal Distribution
Standardization
      The area under the curve between any two ordinates depend
      on the values µ and σ.
      This is evident in Figure 6 , where we have shaded regions
      corresponding to P(x1 < X < x2 ) for two curves with different
      means and variances.
      The two shaded regions are different in size; therefore, the
      probability associated with each distribution will be different
      for the two given values of X.
      There are many types of statistical software that can be used
      in calculating areas under the normal curve.
      The difficulty encountered in solving integrals of normal
      density functions necessitates the tabulation of normal curve
      areas for quick reference.
      However, it would be a hopeless task to attempt to set up
      separate tables for every conceivable value of µ and σ.
                  Dr. Anup Kumar Sharma   Normal Distribution
Standardization
         Figure 6: P(x1 < X < x2 ) for different normal curves.
                  Dr. Anup Kumar Sharma   Normal Distribution
Standardization
      Fortunately, we are able to transform all the observations of
      any normal random variable X into a new set of observations
      of a normal random variable Z with mean 0 and variance 1.
      This can be done by means of the transformation
                                          X −µ
                                    Z=         .
                                            σ
      Whenever X assumes a value x, the corresponding value of Z
      is given by z = x−µ
                       σ .
      Therefore, if X falls between the values x = x1 and x = x2 ,
      the random variable Z will fall between the corresponding
      values z1 = x1σ−µ and z2 = x2σ−µ .
                  Dr. Anup Kumar Sharma   Normal Distribution
Standardization
      Consequently, we may write
                                          Zx2          1
                                                  1  −    (x−µ)2
              P(x1 < X < x2 ) =                  √ e 2σ 2        dx
                                                σ 2π
                                          x1
                                          Zz2       1
                                                 1 − z2
                                     =          √ e 2   dz
                                                 2π
                                          z1
                                          Zz2
                                     =          n(z; 0, 1)dz
                                          z1
                                     = P(z1 < Z < z2 ),
      where Z is seen to be a normal random variable with mean 0
      and variance 1.
                  Dr. Anup Kumar Sharma        Normal Distribution
Sandardization
  Definition
  The distribution of a normal random variable with mean 0 and
  variance 1 is called a standard normal distribution.
  The original and transformed distributions are illustrated in Figure 7. Since all
  the values of X falling between x1 and x2 have corresponding z values between
  z1 and z2 , the area under the X-curve between the ordinates x = x1 and x = x2
  in Figure 7 equals the area under the Z-curve between the transformed
  ordinates z = z1 and z = z2 .
         Figure 7: The original and transformed normal distributions.
                      Dr. Anup Kumar Sharma   Normal Distribution
Standardization
      Cumulative probability at z=a, denoted by
              Ra           1 2
      Φ(a) = −∞ σ√12π e − 2 z dz, is area under the standard normal
      curve left to Z= a.
       Figure 8: The original and transformed normal distributions.
                  Dr. Anup Kumar Sharma   Normal Distribution
Normal probabilities
  To make approximations it is useful to remember the following rule
  of thumb for three approximate probabilities from the standard
  normal distribution:
                                           X −µ
    1 P(µ − σ < X < µ + σ) = P(−1 <               < 1)
                                             σ
       = P(−1 < Z < 1) ≈ 0.68.
                                             X −µ
    2 P(µ − 2σ < X < µ + 2σ) = P(−2 <               < 2)
                                                σ
       = P(−2 < Z < 2) ≈ 0.95.
                                             X −µ
    3 P(µ − 3σ < X < µ + 3σ) = P(−3 <               < 3)
                                                σ
       = P(−3 < Z < 3) ≈ 0.99.
  Remember
  P(X < µ) = P(Z < 0) = 0.5 and P(X > µ) = P(Z > 0) = 0.5 .
                  Dr. Anup Kumar Sharma   Normal Distribution
Figure 9: Probabilities as areas under the graph
     Dr. Anup Kumar Sharma   Normal Distribution
Standard Normal Distribution Table
     A standard normal distribution table comes into use to
     determine the area under the standard nomal curve.
     The standard normal distribution table is used to calculate the
     probability of a standardized random variable Z, whose mean
     is 0 and standard deviation is 1.
     A standard normal distribution table basically displays a
     probability linked with a particular z-score.
         The rows of the standard normal distribution table represent
         the whole number and tenth place of the z-score.
         The columns of the standard normal distribution table
         represent the hundredth place.
         The probability (from 0 to the z-score) are visible in the cell of
         the table.
                 Dr. Anup Kumar Sharma   Normal Distribution
Normal Probability table
               Dr. Anup Kumar Sharma   Normal Distribution
Example (1)
Given a standard normal distribution, find the area under the curve
that lies
(a) to the right of z = 1.84 and
(b) between z = -1.97 and z = 0.86.
                  Figure 10: Areas for Example (1)
                Dr. Anup Kumar Sharma   Normal Distribution
Solution:
(a) The area to the right of 1.84 =
P(Z > 1.84) = P(0 < Z < ∞) − P(0 < Z < 1.84) =
0.5 − 0.4671 = 0.0329.
              Dr. Anup Kumar Sharma   Normal Distribution
(b) The area between z=-1.97 and z = 0.86 is equal to
    P(−1.97 < Z < 0.86) = P(0 < Z < 0.86) + P(−1.97 < Z < 0)
              = P(0 < Z < 0.86) + P(0 < Z < 1.97)
                   = 0.3051 + 0.4756 = 0.7807
.
                 Dr. Anup Kumar Sharma   Normal Distribution
Dr. Anup Kumar Sharma   Normal Distribution
Example (2)
An electrical firm manufactures light bulbs that have a life, before
burn-out, that is normally distributed with mean equal to 800
hours and a standard deviation of 40 hours. Find the probability
that a bulb burns between 778 and 834 hours.
                 Dr. Anup Kumar Sharma   Normal Distribution
Solution:
The z values corresponding to x1 = 778 and x2 = 834 are
                             778 − 800
                     z1 =              = −0.55
                                 40
and
                              834 − 800
                      z2 =              = 0.85.
                                  40
Hence,
  P(778 < X < 834) = P(−0.55 < Z < 0.85)
                        = P(−0.55 < Z < 0) + P(0 < Z < 0.85)
                        = P(0 < Z < 0.55) + P(0 < Z < 0.85)
                        = 0.2088 + 0.3023
                        = 0.5111.
                Dr. Anup Kumar Sharma   Normal Distribution