Chapter 11-Forecasting Models.ppt
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1、Chapter 11: Forecasting Models, 2007 Pearson Education,Forecasting,Forecasting is attempting to predict the futureDecision makers want to reduce uncertainty by predicting future values such as sales or investment return,Steps in Forecasting,Determine the objective of the forecast Identify items to b
2、e forecast Determine time horizon Select the forecasting model(s) Gather data Validate model Make forecast and implement results,Types of Forecasts,Qualitative - subjective methods based on intuition and experience Time Series based on historical data and assume the past indicates the future Causal
3、Models data based where there may be a cause and effect relation between variables,Qualitative Forecasting Models,Delphi Method an iterative group process where a group of experts attempt to reach consensusJury of Executive Opinion uses opinions of high level managers often combined with statistical
4、 models,Qualitative Forecasting Models,Sales Force Composite each salesperson estimates sale in his/her own region and forecast are combined for an overall forecastConsumer Market Survey future purchase plans are solicited from customers,Measuring Forecast Error,Measures how accurate the forecast wa
5、sFor time period t: Forecast error = Actual value Forecast value= At - Ft,Methods of Measuring Overall Forecast Error,Mean Absolute Deviation (MAD) MAD = |At Ft| / Twhere T = the number of time periodsMean Squared Error (MSE) MSE = (At Ft)2 / T,Methods of Measuring Overall Forecast Error,Mean Absolu
6、te Percent Error (MAPE) Measure error as a percent of actual values MAPE = 100 |At Ft| / At / T,Time Series,A time series is where the same value is recorded at regular time intervals Examples: daily stock price, monthly sales, annual revenue, etc.,Components of a Time Series,Trend long term upward
7、or downward movement Seasonality the pattern that occurs every year Cycles the pattern that occurs over a period of years Random variations caused by chance and unusual events,Time Series Components,Time Series Decomposition,A time series can be broken down into its individual components Two approac
8、hes: Multiplicative decomposition Forecast = Trend x Seasonality x Cycles x RandomAdditive decomposition Forecast = Trend + Seasonality + Cycles + Random,Stationary and Nonstationary Time Series Data,If a time series has an upward or downward trend, it is nonstationaryIf it has no trend, it is stati
9、onary,Moving Averages,Smooth out variations in a time series when values are fairly steady Some number (k) of consecutive periods are averagedk-period moving average = (actual values in previous k periods) k,Wallace Garden Supply Example,Weighted Moving Averages,A moving average where some periods a
10、re weighted more heavily than othersK-period weighted moving average = (wi Ai) / (wi)where, wi = weight for period iAi = actual value for period i,Wallace Garden Supply With Weighted Moving Averages,Period Weightslast month 32 month ago 23 months ago 1,3-Month Weighted Moving Average,Using Solver to
11、 Find the Optimal Weights,The weights are the decision variables (changing cells) Minimize some measure of forecast error (MAD, MSE, or MAPE) as the Target cell Note this is a nonlinear objective Weights must be nonnegative Go to file 11-3.xls,Exponential Smoothing,Another smoothing method Does not
12、require extensive past data Ft+1 = Ft + x (At Ft)Ft+1 = forecast for period (t+1) Ft = forecast for period t = a weight (smoothing constant) At = actual value for period t,Wallace Garden Supply With Exponential Smoothing,Assume the smoothed value for the first month is the actual value Use = 0.1 and
13、 also = 0.9,Trend Analysis,Fits a straight or curved line through a time series We will cover only linear trends A scatter diagram shows the trend Excel can both create the scatter diagram and fit the linear trend line,Midwestern Electric Co. Example,Go to file 11-5.xls,The Trend Equation, = b0 + b1
14、X where, = forecast average dependent valueX = independent value (time)b0 = Y-interceptb1 = slope of the line,Least Squares Method,The b0 and b1 values are found using the least squares method, which seeks to minimize the sum of squared errorsSSE = (Y )2 Where,Error = Y - ,Least Squares Method for B
15、est-Fitting Line,Least Squares Line With Excel,Can use regression in the Analysis ToolPak add-in The time (X) values are transformed to 1, 2, 3, etc.Go to file 11-6.xls,Seasonality Analysis,When a seasonal pattern repeats yearly, this can be used for future forecasts Need monthly or quarterly data A
16、 seasonal index is the ratio of the average value in that season, over the annual average,Eichler Supplies Seasonality Example,Have monthly demand data for 24 months Calculate overall average monthly demand Calculate ratio for each monthGo to file 11-7.xls,Decomposition of a Time Series,Decompositio
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