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QMETH: 520 (W) & 530 (SP) MBA Orientation April 1, 2005
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Forecasting-Two Approaches Forecast = f (Data Model Software) f (Data, Judgment) Survey Data (QMETH520) Past Data (QMETH530)
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Survey Data (520) – An Example
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“Variety” of The Dependent Variable Problem that 520 focuses on Dependent Variable, Y Quantitative (Amount) Qualitative (Choice) Continuous (measurement) Discrete (counting) Ordinal Nominal
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Management Applications Health care: Reasonable cost estimation Finance: Credit scoring Marketing: Customer targeting Marketing: Effect of promotion for purchase Human resource: Performance prediction, Determination of fair salary
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Past Data (530) Time Series –Variables observed in regular frequencies –Daily, Weekly, Monthly, Quarterly, Yearly, etc.
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“Variety” of Dynamics Problem that 530 focuses on Trend Seasonality Cycle Unequal variance Example 1
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Cycle Example 2:
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Conditional Unequal Variance Example 3
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Management Applications Sales forecasting Forecasting of macro economics variables Forecasting of the risk of financial returns Forecasting the effect of the system interventions
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Model Based Forecasting Forecast = f (Data, Model, Software) Tremendous technological progress in: –Developing standard forecast models –Developing efficient, easy to use software
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Modeling Process We do not reinvent a new wheel We “match data” with a “standard model” Data Standard Forecasting Models
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Role of Software SPSS for 520 and Eviews for 530 Graphical Display of Data –Guiding the choice of models Model Fitting & Evaluation –Fitting standard models supported in the software –Evaluating adequacy of the models after fitting Forecast –Computing forecasts
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Implications of Using Standard Models Low Learning Cost –Almost all in a family of “regression” –Democratization of forecasting technology Transparency of forecasting process Identify the weaknesses of the forecast process
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