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Forecasting - Introduction

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Presentation on theme: "Forecasting - Introduction"— Presentation transcript:

1 HMP 654 Operations Research and Control Systems in Health Care Spring/Summer 2016

2 Forecasting - Introduction
Forecasting in Health Care Forecasting Models Structural Models Time Series Models Expert Judgment Time Series Models: Demand has exhibited some measurable structure in the past. The structure will continue into the future.

3 Forecasting - Time Series
Signal vs. Noise Extrapolation Models Accuracy of Forecasts

4 Forecasting - Stationary Models
Stationary Time-Series Moving Averages

5 Forecasting - Moving Avgs.

6 Forecasting - Moving Avgs.
2 2 4 SUMXMY2(B7:B26,D7:D26)/COUNT(D7:D26)

7 Forecasting - Moving Avgs.

8 Forecasting - Weighted M.A.
Weighted Moving Averages

9 Forecasting - Weighted M.A.
0.3 x x 38 0.3 x x 31

10 Forecasting - Weighted M.A
Finding the Optimal Weights

11 Forecasting - Weighted M.A.
Finding the Optimal Weights MSE vs W2 W2

12 Forecasting - Weighted M.A.
Finding the Optimal Weights

13 Forecasting - Weighted M.A.
Finding the Optimal Weights

14 Forecasting - Exp. Smoothing
Exponential Smoothing

15 Forecasting - Exp. Smoothing
0.7 x x 33 0.7 x x 33

16 Forecasting - Exp. Smoothing

17 Forecasting - Trend Models

18 Forecasting - Holt’s Method
Compute the base level Et for time period t using equation 11.6 Compute expected trend value Tt for time period t using equation 11.7 Compute the final forecast Y^t+k for time period t+k using equation 11.5

19 Forecasting - Holt’s Method
Initial base level = first demand value Set initial trend to 0 Forecast for Qtr. 3, 1990: 634.2= 0.5 x ( ) x ( ) -25 = 0.5 x ( ) + ( ) x 0 609.1 = x (- 25)

20 Forecasting - Regression
Linear Trend Model

21 Blank Slide

22 Blank Slide

23 Forecasting - Regression

24 Forecasting - Regression
Linear Trend Model

25 Forecasting - Regression
Quadratic Trend Model

26 Forecasting - Regression

27 Forecasting - Regression
Quadratic Trend Model

28 Forecasting - Seasonality
Adjusting trend predictions with seasonal indices 5

29 Forecasting - Seasonality

30 Forecasting - Seasonality
Use of Seasonal Indices Create a trend model and calculate the estimated value for each observation in the sample. For each observation, calculate the ratio of the actual value to the predicted trend value For each season, compute the average of the ratios calculated in step 2. These are the seasonal indices. Multiply any forecast produced by the trend model by the appropriate seasonal index calculated in step 3.

31 Forecasting - Seasonal Regression Models

32 Forecasting - Seasonal Regression Models


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