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Quantitative Applications In Management


  Faculty – Mr.    Ashu Jain

  Course – “Quantitative Applications In Management.”
  Programme – MBA-IB; 1st Semester

     Amity International Business School
Arithmetic Mean (Direct
Method)
 Individual Series
     x¯ = ∑X / N
     Here ∑X = Sum of variables
     And N = Number of Items
 Discrete Series
     x¯ = ∑fX / ∑f
     Here ∑f = Total no of Frequencies
 Continuous Series
     x¯ = ∑fX / ∑f
     Here X = Mid values of class intervals
Arithmetic Mean (Short cut Method)
 Individual Series
      x¯ = A + ∑dx / N
      Here ∑dx = Sum of deviations taken from
       assumed mean
      A = Assumed Mean
 Discrete Series
      x¯ = A + ∑(fdx) / ∑f
      Here ∑fdx = Sum of Multiplication of Frequency
       with deviations taken from assumed mean
 Continuous Series
      x¯ = A + ∑(fdx) / ∑f
Median
   Individual Series
       N+1 / 2th Item
           Here N = Total No. of Items arranged in ascending or descending order.

   Discrete Series
       ∑f+1 / 2th Item
           Here (∑f+1 / 2th) Item will be judged on the basis of cumulative
            frequency.
   Continuous Series
       N / 2th Item
       L1 + N/2 – C.F. * i
                     F
           Here L1 = Lower limit of Median class
           N/2 = Median item
           C.F. = Cumulative Frequency preceding class interval
           F = Frequency against Median class interval
           i = Gap of Median class interval
Mode
 Continuous Series

    L1 +    | f1 – f 0 l * i
           | f1-f0 | + | f1-f2 |
      Here L = Lower limit of the Modal Class
              1


       Interval.
      f = Frequency of Modal class
        1
Quartile Deviation

 Q.D. = Q – Q / 2
           3     1




    Here, Q3 = 3rd quartile
    And, Q1 = 1st quartile
Mean Deviation / Average Deviation


 Individual Series
   M.D. =( ∑ldxl ) / N
     Here, dx = X – Mean / Median / Mode


 Discrete Series, Continuous Series
   M.D. =( ∑f ldxl ) / ∑f
     Here, dx = X – Mean / Median / Mode
Standard Deviation

   Individual Series
     S.D. = √∑dx² / N

          Here, dx = X – Actual Mean

   Discrete Series
     S.D. = √∑fdx² / ∑f

          Here, dx = X – Actual Mean
   Continuous Series
     S.D. = √∑fdx² / ∑f

          Here, dx = X – Actual Mean
           And, X = Mid Values of class intervals
Variance and Coefficient of Variation


 Variance   = (S.D.)²

 Coefficient of Variation =   S.D.   X 100
                               Mean
Karl Pearson’s Coefficient of
Correlation (Direct Method)


 r = ∑dxdy
       N σx σy


 r=     ∑dxdy
       √∑dx² √∑dy²
Karl Pearson’s Coefficient of Correlation
(Short cut / Assumed Mean Method)

o r = ∑dxdy - ∑dx∑dy
                     N
     √∑dx² - (∑dx)² √∑dy² - (∑dy)²
               N              N
 r = ∑fdxdy – (∑fdx)(∑fdy)
                      N
     √∑fdx² - (∑fdx)² √∑fdy² - (∑fdy)²
                N                N
Spearman’s Rank Correlation Method

 When Ranks are not Repeated:-


 rk = 1 - 6 ∑D²
             N(N²-1)

   Here D = Rank 1 – Rank 2
Regression Equations
 General Form:-
            X on Y

   X – X = r σx (Y – Y)
              σy
•   r   σx = bxy = Regression Coefficient of Equation X on Y
        σy
                 Y on X

   Y – Y = r σy (X – X)
              σx
•   r   σy = byx = Regression Coefficient of Equation Y on X
        σx
Regression Equations
 Actual Mean Method:-
        X on Y

 X – X = ∑dxdy (Y – Y)
           ∑dy²

          Y on X

 Y – Y = ∑dxdy (X – X)
            ∑dx²
Regression Equations
 Assumed Mean Method:-
        X on Y
 X – X = ∑dxdy - ∑dx∑dy   (Y – Y)
                     N
          ∑dy² - (∑dy)²
                   N

        Y on X
 Y – Y = ∑dxdy - ∑dx∑dy   (X – X)
                     N
           ∑dx² - (∑dx)²
                    N
Regression Equations
 Assumed Mean Method ( Continuous Series ) :-
       X on Y
   X – X = ∑fdxdy - ∑fdx∑fdy            (Y – Y)
                        N       x   ix
             ∑fdy² - (∑fdy)²        iy
                        N

           Y on X
   Y – Y = ∑fdxdy - ∑fdx∑fdy             (X– X)
                          N     x   iy
             ∑fdx² - (∑fdx)²        ix
                        N
Simple Aggregative Method
o   P01 = ∑P1 x 100
            ∑P0

    Here,
     P01 = Price Index for the Current year
     ∑P1 = Total of Current year Prices
     ∑P0 = Total of Base year Prices
   P01 = ∑(P1/ P0 x 100)
                  N

    Here,
     P01 = Price Index for the Current year
     ∑P1 = Current year Price
     ∑P0 = Base year Price
     N = Total Number of Years
Chain Base Index

Chain Base Index =

  Current year Link Relative x Previous year Chain Index
                          100
Base Shifting


New Base Index Number =

  Old Index Number of Current Year x 100
  Old Index Number of New Base Year
Laspeyre’s Method / Aggregate
Expenditure Method

o P01 = ∑P1Q0 x 100
        ∑P0Q0
Paasche’s Method

o P01 = ∑P1Q1 x 100
        ∑P0Q1
Dorbish and Bowley’s Method
o P01   =   ∑P1Q0   + ∑P1Q1
            ∑P0Q0       ∑P0Q1   x 100

                    2
Marshall-Edgeworth’s Method
o P01   =   ∑P1Q0   + ∑P1Q1   x 100
            ∑P0Q0   + ∑P0Q1
Fisher’s Method
o P01 =√ ∑P1Q0 x ∑P1Q1 x 100
          ∑P0Q0   ∑P0Q1
Kelly’s Method

o P01 = ∑P1Q x 100
        ∑P0Q

     Here,
     Q = Q0 + Q1
             2
Weighted Average of Price Relative /
Family Budget Method

 P01 = ∑PV
          ∑V

 Here, P = Price Relatives
       V = P0Q0
Components of Time Series


 Secular Trend

 Cyclical Variations

 Seasonal Variations

 Irregular or Random Variations
Methods of Measuring Trend

 Free Hand Curve Method

 Semi Average Method

 Moving Average Method

 Method of Least Square
Semi Average Method

 Annual Change =
Difference of Two Semi Average Values
Difference of Years of Semi Average
Method of Least Square

o Equation for Time Series
         Y = a + bX

To calculate a and b, Solve the following Equations:
    ∑Y = aN + b∑X
    ∑XY = a∑X + b∑X²

Here,
    Y = Given Data i.e. Sales or Profit etc.
    X= Years in terms of Units like 1,2,3 etc.

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Qam formulas

  • 1. Quantitative Applications In Management Faculty – Mr. Ashu Jain Course – “Quantitative Applications In Management.” Programme – MBA-IB; 1st Semester Amity International Business School
  • 2. Arithmetic Mean (Direct Method)  Individual Series  x¯ = ∑X / N  Here ∑X = Sum of variables  And N = Number of Items  Discrete Series  x¯ = ∑fX / ∑f  Here ∑f = Total no of Frequencies  Continuous Series  x¯ = ∑fX / ∑f  Here X = Mid values of class intervals
  • 3. Arithmetic Mean (Short cut Method)  Individual Series  x¯ = A + ∑dx / N  Here ∑dx = Sum of deviations taken from assumed mean  A = Assumed Mean  Discrete Series  x¯ = A + ∑(fdx) / ∑f  Here ∑fdx = Sum of Multiplication of Frequency with deviations taken from assumed mean  Continuous Series  x¯ = A + ∑(fdx) / ∑f
  • 4. Median  Individual Series  N+1 / 2th Item  Here N = Total No. of Items arranged in ascending or descending order.  Discrete Series  ∑f+1 / 2th Item  Here (∑f+1 / 2th) Item will be judged on the basis of cumulative frequency.  Continuous Series  N / 2th Item  L1 + N/2 – C.F. * i F  Here L1 = Lower limit of Median class  N/2 = Median item  C.F. = Cumulative Frequency preceding class interval  F = Frequency against Median class interval  i = Gap of Median class interval
  • 5. Mode  Continuous Series  L1 + | f1 – f 0 l * i | f1-f0 | + | f1-f2 |  Here L = Lower limit of the Modal Class 1 Interval.  f = Frequency of Modal class 1
  • 6. Quartile Deviation  Q.D. = Q – Q / 2 3 1  Here, Q3 = 3rd quartile  And, Q1 = 1st quartile
  • 7. Mean Deviation / Average Deviation  Individual Series  M.D. =( ∑ldxl ) / N  Here, dx = X – Mean / Median / Mode  Discrete Series, Continuous Series  M.D. =( ∑f ldxl ) / ∑f  Here, dx = X – Mean / Median / Mode
  • 8. Standard Deviation  Individual Series  S.D. = √∑dx² / N  Here, dx = X – Actual Mean  Discrete Series  S.D. = √∑fdx² / ∑f  Here, dx = X – Actual Mean  Continuous Series  S.D. = √∑fdx² / ∑f  Here, dx = X – Actual Mean And, X = Mid Values of class intervals
  • 9. Variance and Coefficient of Variation  Variance = (S.D.)²  Coefficient of Variation = S.D. X 100 Mean
  • 10. Karl Pearson’s Coefficient of Correlation (Direct Method)  r = ∑dxdy N σx σy  r= ∑dxdy √∑dx² √∑dy²
  • 11. Karl Pearson’s Coefficient of Correlation (Short cut / Assumed Mean Method) o r = ∑dxdy - ∑dx∑dy N √∑dx² - (∑dx)² √∑dy² - (∑dy)² N N  r = ∑fdxdy – (∑fdx)(∑fdy) N √∑fdx² - (∑fdx)² √∑fdy² - (∑fdy)² N N
  • 12. Spearman’s Rank Correlation Method  When Ranks are not Repeated:-  rk = 1 - 6 ∑D² N(N²-1)  Here D = Rank 1 – Rank 2
  • 13. Regression Equations  General Form:-  X on Y  X – X = r σx (Y – Y) σy • r σx = bxy = Regression Coefficient of Equation X on Y σy  Y on X  Y – Y = r σy (X – X) σx • r σy = byx = Regression Coefficient of Equation Y on X σx
  • 14. Regression Equations  Actual Mean Method:-  X on Y  X – X = ∑dxdy (Y – Y) ∑dy²  Y on X  Y – Y = ∑dxdy (X – X) ∑dx²
  • 15. Regression Equations  Assumed Mean Method:-  X on Y  X – X = ∑dxdy - ∑dx∑dy (Y – Y) N ∑dy² - (∑dy)² N  Y on X  Y – Y = ∑dxdy - ∑dx∑dy (X – X) N ∑dx² - (∑dx)² N
  • 16. Regression Equations  Assumed Mean Method ( Continuous Series ) :-  X on Y  X – X = ∑fdxdy - ∑fdx∑fdy (Y – Y) N x ix ∑fdy² - (∑fdy)² iy N  Y on X  Y – Y = ∑fdxdy - ∑fdx∑fdy (X– X) N x iy ∑fdx² - (∑fdx)² ix N
  • 17. Simple Aggregative Method o P01 = ∑P1 x 100 ∑P0 Here,  P01 = Price Index for the Current year  ∑P1 = Total of Current year Prices  ∑P0 = Total of Base year Prices  P01 = ∑(P1/ P0 x 100) N Here,  P01 = Price Index for the Current year  ∑P1 = Current year Price  ∑P0 = Base year Price  N = Total Number of Years
  • 18. Chain Base Index Chain Base Index = Current year Link Relative x Previous year Chain Index 100
  • 19. Base Shifting New Base Index Number = Old Index Number of Current Year x 100 Old Index Number of New Base Year
  • 20. Laspeyre’s Method / Aggregate Expenditure Method o P01 = ∑P1Q0 x 100 ∑P0Q0
  • 21. Paasche’s Method o P01 = ∑P1Q1 x 100 ∑P0Q1
  • 22. Dorbish and Bowley’s Method o P01 = ∑P1Q0 + ∑P1Q1 ∑P0Q0 ∑P0Q1 x 100 2
  • 23. Marshall-Edgeworth’s Method o P01 = ∑P1Q0 + ∑P1Q1 x 100 ∑P0Q0 + ∑P0Q1
  • 24. Fisher’s Method o P01 =√ ∑P1Q0 x ∑P1Q1 x 100 ∑P0Q0 ∑P0Q1
  • 25. Kelly’s Method o P01 = ∑P1Q x 100 ∑P0Q Here, Q = Q0 + Q1 2
  • 26. Weighted Average of Price Relative / Family Budget Method  P01 = ∑PV ∑V  Here, P = Price Relatives V = P0Q0
  • 27. Components of Time Series  Secular Trend  Cyclical Variations  Seasonal Variations  Irregular or Random Variations
  • 28. Methods of Measuring Trend  Free Hand Curve Method  Semi Average Method  Moving Average Method  Method of Least Square
  • 29. Semi Average Method Annual Change = Difference of Two Semi Average Values Difference of Years of Semi Average
  • 30. Method of Least Square o Equation for Time Series Y = a + bX To calculate a and b, Solve the following Equations: ∑Y = aN + b∑X ∑XY = a∑X + b∑X² Here, Y = Given Data i.e. Sales or Profit etc. X= Years in terms of Units like 1,2,3 etc.