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Business and Economic Forecasting Chapter 5

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Title: Business and Economic Forecasting Chapter 5


1
Business and Economic ForecastingChapter 5
  • Business and Economic Forecasting is a critical
    managerial activity which comes in two forms
  • Quantitative Forecasting 2.1047 Gives the
    precise amount
  • or percentage
  • Qualitative Forecasting
  • Gives the expected direction
  • Up, down, or about the same

?2008 Thomson South-Western
2
Managerial ChallengeExcess Fiber Optic Capacity
  • High-speed data installation grew exponentially
  • But adoption follows a typical S-curve pattern,
    similar to the adoption rate of TV
  • Access grew too fast, leading to excess capacity
    around the time of the tech bubble in 2001
  • The challenge is to predict demand properly

100
Color TVs
Internet Access
1940 1960 1980 2000 2020
3
The Significance of Forecasting
  • Both public and private enterprises operate under
    conditions of uncertainty.
  • Management wishes to limit this uncertainty by
    predicting changes in cost, price, sales, and
    interest rates.
  • Accurate forecasting can help develop strategies
    to promote profitable trends and to avoid
    unprofitable ones.
  • A forecast is a prediction concerning the future.
    Good forecasting will reduce, but not eliminate,
    the uncertainty that all managers feel.

4
Hierarchy of Forecasts
  • The selection of forecasting techniques depends
    in part on the level of economic aggregation
    involved.
  • The hierarchy of forecasting is
  • National Economy (GDP, interest rates, inflation,
    etc.)
  • sectors of the economy (durable goods)
  • industry forecasts (all automobile
    manufacturers)
  • firm forecasts (Ford Motor Company)
  • Product forecasts (The Ford Focus)

5
Forecasting Criteria
  • The choice of a particular forecasting method
    depends on several criteria
  • costs of the forecasting method compared with its
    gains
  • complexity of the relationships among variables
  • time period involved
  • lead time between receiving information and the
    decision to be made
  • accuracy needed in forecast

6
Accuracy of Forecasting
  • The accuracy of a forecasting model is measured
    by how close the actual variable, Y, ends up to
    the forecasting variable, Y.
  • Forecast error is the difference. (Y - Y)
  • Models differ in accuracy, which is often based
    on the square root of the average squared
    forecast error over a series of N forecasts and
    actual figures
  • Called a root mean square error, RMSE.
  • RMSE ? ? (Y - Y)2 / N




7
Quantitative Forecasting
  • Deterministic Time Series
  • Looks For Patterns
  • Ordered by Time
  • No Underlying Structure
  • Econometric Models
  • Explains relationships
  • Supply Demand
  • Regression Models

Like technical security analysis
Like fundamental security analysis
8
Time SeriesExamine Patterns in the Past
Dependent Variable
X
X
X


Forecasted Amounts
TIME
To
The data may offer secular trends, cyclical
variations, seasonal variations, and random
fluctuations.
9
Time SeriesExamine Patterns in the Past
Dependent Variable
Secular Trend
X
X
X


Forecasted Amounts
TIME
To
The data may offer secular trends, cyclical
variations, seasonal variations, and random
fluctuations.
10
Time SeriesExamine Patterns in the Past
Dependent Variable
Secular Trend
Cyclical Variation
X
X
X


Forecasted Amounts
TIME
To
The data may offer secular trends, cyclical
variations, seasonal variations, and random
fluctuations.
11
Elementary Time Series Models for Economic
Forecasting
NO Trend
  • Naive Forecast
  • Yt1 Yt
  • Method best when there is no trend, only random
    error
  • Graphs of sales over time with and without trends
  • When trending down, the Naïve predicts too high

?
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?

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time
Trend
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time
12
2. Naïve forecast with adjustments for secular
trends
  • Yt1 Yt (Yt - Yt-1 )
  • This equation begins with last periods forecast,
    Yt.
  • Plus an adjustment for the change in the amount
    between periods Yt and Yt-1.
  • When the forecast is trending up, this adjustment
    works better than the pure naïve forecast method
    1.

13
3. Linear Trend 4. Constant rate of growth
Linear Trend Growth Uses a Semi-log
Regression
  • Used when trend has a constant AMOUNT of change
  • Yt a bT, where
  • Yt are the actual observations and
  • T is a numerical time variable
  • Used when trend is a constant PERCENTAGE rate
  • Log Yt a bT,
  • where b is the continuously compounded growth
    rate

14
More on Constant Rate of Growth Modela proof
  • Suppose Yt Y0( 1 G) t where g is the
    annual growth rate
  • Take the natural log of both sides
  • Ln Yt Ln Y0 t Ln (1 G)
  • but Ln ( 1 G ) ? g, the equivalent continuously
    compounded growth rate
  • SO Ln Yt Ln Y0 t g
  • Ln Yt a b t
  • where b is the growth rate


15
Numerical Examples 6 observations
  • MTB gt Print c1-c3.
  • Sales Time Ln-sales
  • 100.0 1 4.60517
  • 109.8 2 4.69866
  • 121.6 3 4.80074
  • 133.7 4 4.89560
  • 146.2 5 4.98498
  • 164.3 6 5.10169

Using this sales data, estimate sales in period
7 using a linear and a semi-log
functional form
16
The linear regression equation is Sales 85.0
12.7 Time Predictor Coef Stdev
t-ratio p Constant 84.987 2.417
35.16 0.000 Time 12.6514 0.6207
20.38 0.000 s 2.596 R-sq 99.0
R-sq(adj) 98.8
The semi-log regression equation is Ln-sales
4.50 0.0982 Time Predictor Coef
Stdev t-ratio p Constant 4.50416
0.00642 701.35 0.000 Time
0.098183 0.001649 59.54 0.000 s
0.006899 R-sq 99.9 R-sq(adj) 99.9
17
Forecasted Sales _at_ Time 7
  • Linear Model
  • Sales 85.0 12.7 Time
  • Sales 85.0 12.7 ( 7)
  • Sales 173.9
  • Semi-Log Model
  • Ln-sales 4.50 0.0982 Time
  • Ln-sales 4.50 0.0982 ( 7 )
  • Ln-sales 5.1874
  • To anti-log
  • e5.1874 179.0

linear
??
?
18
  • Sales Time Ln-sales
  • 100.0 1 4.60517
  • 109.8 2 4.69866
  • 121.6 3 4.80074
  • 133.7 4 4.89560
  • 146.2 5 4.98498
  • 164.3 6 5.10169
  • 179.0 7 semi-log
  • 173.9 7 linear

Semi-log is exponential
7
Which prediction do you prefer?
19
5. Declining Rate of Growth Trend
  • A number of marketing penetration models use a
    slight modification of the constant rate of
    growth model
  • In this form, the inverse of time is used
  • Ln Yt b1 b2 ( 1/t )
  • This form is good for patterns like
    the one to the right
  • It grows, but at continuously
    a declining rate

Y
time
20
6. Seasonal Adjustments The Ratio to Trend
Method
  • Take ratios of the actual to the forecasted
    values for past years.
  • Find the average ratio. This is the seasonal
    adjustment
  • Adjust by this percentage by multiply your
    forecast by the seasonal adjustment
  • If average ratio is 1.02, adjust forecast upward
    2

12 quarters of data
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?
?
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?
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I II III IV I II III IV I II III IV
Quarters designated with roman numerals.
21
7. Seasonal Adjustments Dummy Variables
  • Let D 1, if 4th quarter and 0 otherwise
  • Run a new regression
  • Yt a bT cD
  • the c coefficient gives the amount of the
    adjustment for the fourth quarter. It is an
    Intercept Shifter.
  • With 4 quarters, there can be as many as three
    dummy variables with 12 months, there can be as
    many as 11 dummy variables
  • EXAMPLE Sales 300 10T 18D
  • 12 Observations from the first quarter of 2005
    to 2007-IV.
  • Forecast all of 2008.
  • Sales(2008-I) 430 Sales(2008-II) 440
    Sales(2008-III) 450 Sales(2008-IV) 478

22
Soothing Techniques8. Moving Averages
  • A smoothing forecast method for data that jumps
    around
  • Best when there is no trend
  • 3-Period Moving Ave is
  • Yt1 Yt Yt-1 Yt-2/3
  • For more periods, add them up and take the
    average

Dependent Variable



Forecast Line is Smoother


TIME
23
Smoothing Techniques9. First-Order Exponential
Smoothing
  • A hybrid of the Naive and Moving Average methods
  • Yt1 wYt (1-w)Yt
  • A weighted average of past actual and past
    forecast, with a weight of w
  • Each forecast is a function of all past
    observations
  • Can show that forecast is based on geometrically
    declining weights.
  • Yt1 w .Yt (1-w)wYt-1
  • (1-w)2wYt-1
  • Find lowest RMSE to pick the best w.





24
First-Order Exponential Smoothing Example for w
.50
  • Actual Sales Forecast
  • 100 100 initial seed required
  • 120 .5(100) .5(100) 100
  • 115
  • 130
  • ?

1 2 3 4 5
25
First-Order Exponential Smoothing Example for w
.50
  • Actual Sales Forecast
  • 100 100 initial seed required
  • 120 .5(100) .5(100) 100
  • 115 .5(120) .5(100) 110
  • 130
  • ?

1 2 3 4 5
26
First-Order Exponential Smoothing Example for w
.50
  • Actual Sales Forecast
  • 100 100 initial seed required
  • 120 .5(100) .5(100) 100
  • 115 .5(120) .5(100) 110
  • 130 .5(115) .5(110) 112.50
  • ? .5(130) .5(112.50) 121.25

1 2 3 4 5
Period 5 Forecast
MSE (120-100)2 (110-115)2 (130-112.5)2/3
243.75 RMSE ?243.75 15.61
27
Qualitative Forecasting10. Barometric
Techniques
Direction of sales can be indicated by other
variables.
Motor Control Sales
PEAK
peak
Index of Capital Goods
TIME
4 Months
Example Index of Capital Goods is a leading
indicator There are also lagging indicators and
coincident indicators
28
Time given in months from change
  • LEADING INDICATORS
  • M2 money supply (-14.4)
  • SP 500 stock prices (-11.1)
  • Building permits (-15.4)
  • Initial unemployment claims (-12.9)
  • Contracts and orders for plant and equipment
    (-7.3)
  • COINCIDENT INDICATORS
  • Nonagricultural payrolls (.8)
  • Index of industrial production (-1.1)
  • Personal income less transfer payment (-.4)
  • LAGGING INDICATORS
  • Prime rate (17.9)
  • Change in labor cost per unit of output (6.4)

Survey of Current Business, 1995 See pages
182-183 in the textbook
29
Handling Multiple Indicators
  • Diffusion Index Suppose 11 forecasters predict
    stock prices in 6 months, up or down. If 4
    predict down and seven predict up, the Diffusion
    Index is 7/11, or 63.3.
  • above 50 is a positive diffusion index
  • Composite Index One indicator rises 4 and
    another rises 6. Therefore, the Composite Index
    is a 5 increase.
  • used for quantitative forecasting

30
Qualitative Forecasting11. Surveys and Opinion
Polling Techniques
Common Survey Problems
  • Sample bias--
  • telephone, magazine
  • Biased questions--
  • advocacy surveys
  • Ambiguous questions
  • Respondents may lie on questionnaires

New Products have no historical data --
Surveys can assess interest in new ideas.
Survey Research Center of U. of Mich. does
repeat surveys of households on Big Ticket items
(Autos)
31
Qualitative Forecasting12. Expert Opinion
  • The average forecast from several experts is a
    Consensus Forecast.
  • Mean
  • Median
  • Mode
  • Truncated Mean
  • Proportion positive or negative

32
  • EXAMPLES
  • IBES, First Call, and Zacks Investment --
    earnings forecasts of stock analysts of companies
  • Conference Board macroeconomic predictions
  • Livingston Surveys--macroeconomic forecasts of
    50-60 economists
  • Individual economists tend to be less accurate
    over time than the consensus forecast.

33
13. Econometric Models
  • Specify the variables in the model
  • Estimate the parameters
  • single equation or perhaps several stage methods
  • Qd a bP cI dPs ePc
  • But forecasts require estimates for future
    prices, future income, etc.
  • Often combine econometric models with time series
    estimates of the independent variable.
  • Garbage in Garbage out

34
example
  • Qd 400 - .5P 2Y .2Ps
  • anticipate pricing the good at P 20
  • Income (Y) is growing over time, the estimate is
    Ln Yt 2.4 .03T, and next period is T 17.
  • Y e2.910 18.357
  • The prices of substitutes are likely to be P
    18.
  • Find Qd by substituting in predictions for P, Y,
    and Ps
  • Hence Qd 430.31

35
14. Stochastic Time Series
  • A little more advanced methods incorporate into
    time series the fact that economic data tends to
    drift
  • yt a byt-1 et
  • In this series, if a is zero and b is 1, this is
    essentially the naïve model. When a is zero, the
    pattern is called a random walk.
  • When a is positive, the data drift. The
    Durbin-Watson statistic will generally show the
    presence of autocorrelation, or AR(1), integrated
    of order one.
  • One solution to variables that drift, is to use
    first differences.

36
Cointegrated Time Series
  • Some econometric work includes several stochastic
    variable, each which exhibits random walk with
    drift
  • Suppose price data (P) has positive drift
  • Suppose GDP data (Y) has positive drift
  • Suppose the sales is a function of P Y
  • Salest a bPt cYt
  • It is likely that P and Y are cointegrated in
    that they exhibit comovement with one another.
    They are not independent.
  • The simplest solution is to change the form into
    first differences as in DSalest a bDPt
    cDYt
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