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Forecasting

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Long-term trend is typically modeled as a linear, quadratic or exponential. A time series that does not exhibit any trend over time is a stationary model. Seasonal ... – PowerPoint PPT presentation

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Title: Forecasting


1
  • Forecasting
  • Basic Concepts
  • And
  • Stationary Models

2
What is Forecasting?
  • Forecasting is the process of predicting the
    future.
  • Forecasting is an integral part of almost all
    business enterprises including
  • Manufacturing firms that forecast demand for
    their products, to schedule manpower and raw
    material allocation.
  • Service organizations that forecast customer
    arrival patterns to maintain adequate customer
    service.
  • Security analysts who forecast revenues, profits,
    and debt ratios, to make investment
    recommendations.
  • Firms that consider economic forecasts of
    indicators (housing starts, changes in gross
    national profit) before deciding on capital
    investments.

3
Benefits of Forecasting
  • Good forecasts can lead to
  • Reduced inventory costs
  • Lower overall personnel costs and increased
    customer satisfaction
  • A higher likelihood of making profitable
    financial decisions
  • A reduced risk of untimely financial decisions

4
How Does One Prepare a Forecast?
  • The forecasting process can be based on
  • Educated guess.
  • Expert opinions.
  • Past history of data values, known as a time
    series.

5
Components of a Time Series
  • Long-term Trend Effects
  • Long-term trend is typically modeled as a linear,
    quadratic or exponential.
  • A time series that does not exhibit any trend
    over time is a stationary model.
  • Seasonal Effects
  • When a predictable, repetitive pattern is
    observed, the time series is said to have
    seasonal effects.
  • Seasonal effects can be associated with
    calendar/climatic changes or tied to yearly,
    quarterly, monthly, etc. data
  • Cyclical Effects
  • An unanticipated temporary upturn or downturn
    that is not explained by seasonal effects are
    said to be cyclical effects.
  • Cyclical effects can result from changes in
    economic conditions.
  • Random Effects

6
ExampleMotorhome Sales 1975-2000
Seasonal Effects Qtr 4 Lower than qtr 3 Qtr 3
Higher than qtr 2 Qtr 2 Higher than qtr 1 Qtr 1
Higher than qtr 4
7
Steps in the Time Series Forecasting Process
  • The goal of a time series forecast is to identify
    factors that can be predicted.
  • This is a systematic approach involving the
    following steps.
  • Step 1 Hypothesize a form for the time series.
  • Collect historical data and graph the data vs.
    time.
  • Hypothesize and statistically verify a form for
    the time series.
  • Step 2 Select a forecasting technique from a
    set of possible methods for the form of the
    time series.
  • Statistically determine which method best
    forecasts the data.
  • Step 3 Prepare a forecast.

8
Stationary Forecasting Models
  • A stationary model is one that forecasts a
    constant time series value over time.
  • The general form of such a model is

yt b0 et
9
Determining if a Stationary Model Is Appropriate
  • Is there trend?
  • Use Linear Regression -- Check the p-value for ?1
  • Is there seasonality?
  • Visually check of time series graph
  • Autocorrelation measures the relationship between
    the values of the time series every k periods
    this is called autocorrelation of lag k.
  • There are tests for doing this, but we will just
    do a visual check.
  • Lag 7 autocorrelation indicates one week
    seasonality (daily data) lag 12 autocorrelation
    indicates 12-month seasonality (monthly data),
    etc.
  • Are there cyclical effects?
  • Visually check of time series graph.

10
Moving Averages
  • There are t observations y1 (oldest), y2, y3, ,
    yt (most recent)
  • In stationary forecasting models, the forecast
    for the constant value, ß0, for the next time
    period t1, Ft1, is the average (or a weighted
    average) of 1 or more of the immediately prior
    observations, yt, yt-1, etc.
  • Since the time series is stationary, this
    forecast for time period t1, will be the
    forecast for all future periods t2, t3, etc.
  • The forecast changes only after more data is
    collected.

11
Moving Average Methods
  • Last Period
  • Ft1 yt
  • Use the last observed value of the time series
  • n period Moving Average
  • Ft1 (yt yt-1 yt-n1)/k
  • Average the last n observed values of the time
    series
  • n period Weighted Moving Average
  • Ft1 wtyt wt-1yt-1 wt-n1yt-n1
  • Weight the last n observed values (the ws sum to
    1)
  • Exponential Smoothing (Discussed in another
    module)
  • All observations are weighted with decreasing
    weights

12
Example
  • Galaxy Industries needs to forecast weekly demand
    for the next three weeks for its Yoho brand yoyo
    based on the past 52 weeks demand. If demand is
    deemed to be stationary, use
  • Last Period Technique
  • 4-Period Moving Average Technique
  • 4-Period Weighted Moving Average Technique (.4,
    .3, .2, .1)

13
Time Series For the Past 52 Weeks
14
Determining if the Model Is Stationary
  • Graph the time series.

15
Using Regression to Test for Trend
16
Using Regression to Test for Trend
17
Is Linear Trend Present?
  • Check p-value for ß1.

18
Forecasts
  • Since we have concluded that this is a stationary
    model, we can use moving average methods.
  • Last Period
  • Since model is stationary, F55 F54 F53 484
  • 4 Period Moving Average
  • Since model is stationary, F55 F54 F53 401
  • 4 Period Weighted (.4, .3, .2, .1) Moving
    Average
  • Since model is stationary, F55 F54 F53 441.3

F53 y52 484
F53 (y52 y51 y50 y49)/4 (484 482
393 245)/4 401
F53 .4y52 .3y51 .2y50 .1y49 .4(484)
.3(482) .2(393) .1(245) 441.3
19
EXCEL Last Period

20
Excel Moving Average Forecast

21
Excel Weighted Moving Average

22
Review
  • Possible Factors in a Time Series Model
  • Trend, Seasonal, Cyclical, Random Effects
  • Determining if the Time Series is Stationary
  • No noticeable seasonal or cyclical effects on
    time series plot
  • Use Regression to test for ß1 0
  • High p-value (No trend stationary)
  • Moving Average Forecasting Methods
  • Last Period, Moving Average, Weighted Moving
    Average, Exponential Smoothing
  • Forecasts for next period will be the forecasts
    for all future periods until additional time
    series values occur
  • Excel approach
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