Why forecast?
Features Common to all Forecasts
• Conditions in the past will continue in the future
• Rarely perfect
• Forecasts for groups tend to be more accurate than forecasts for individuals
• Forecast accuracy declines as time horizon increases
Elements of a Good Forecast
• Timely
• Accurate
• Reliable (should work consistently)
• Forecast expressed in meaningful units
• Communicated in writing
• Simple to understand and use
Steps in Forecasting Process
• Determine purpose of the forecast
• Establish a time horizon
• Select forecasting technique
• Gather and analyze the appropriate data
• Prepare the forecast
• Monitor the forecast
Types of Forecasts
• Qualitative o Judgment and opinion o Sales force o Consumer surveys o Delphi technique
• Quantitative o Regression and Correlation (associative) o Time series Forecasts Based on Time Series Data
• What is Time Series?
• Components (behavior) of Time Series data o Trend o Cycle o Seasonal o Irregular o Random variations
Naïve Methods
Naïve Forecast – uses a single previous value of a time series as the basis of a forecast.
Techniques for Averaging
• What is the purpose of averaging?
• Common Averaging Techniques o Moving Averages o Exponential smoothing
Moving Average
Exponential Smoothing
Techniques for Trend
Linear Trend Equation
Curvilinear Trend Equation
Techniques for Seasonality
• What is seasonality?
• What are seasonal relatives or indexes?
• How seasonal indexes are used: o Deseasonalizing data o Seasonalizing data
• How indexes are computed (see Example 7 on page 109) Accuracy and Control of Forecasts
Measures of Accuracy o Mean Absolute Deviation (MAD) o Mean Squared Error (MSE) o Mean Absolute Percentage Error (MAPE)
Forecast Control Measure o Tracking Signal
Mean Absolute Deviation (MAD)
Mean