1 BIS APPLICATION 2002-2003 MANAGEMENT INFORMATION SYSTEM Advance forecasting Forecasting by identifying patterns in the past data Chapter outline: 1.Extrapolation.

Slides:



Advertisements
Similar presentations
Decomposition Method.
Advertisements

Forecasting OPS 370.
Forecasting Chapter 15.
Chapter 11: Forecasting Models
19- 1 Chapter Nineteen McGraw-Hill/Irwin © 2005 The McGraw-Hill Companies, Inc., All Rights Reserved.
Chapter 10 Regression. Defining Regression Simple linear regression features one independent variable and one dependent variable, as in correlation the.
Correlation & Regression Chapter 15. Correlation statistical technique that is used to measure and describe a relationship between two variables (X and.
CHAPTER 5 TIME SERIES AND THEIR COMPONENTS (Page 165)
Time Series Analysis Autocorrelation Naive & Simple Averaging
Analyzing and Forecasting Time Series Data
Chapter 12 - Forecasting Forecasting is important in the business decision-making process in which a current choice or decision has future implications:
Simple Linear Regression
Chapter 5 Time Series Analysis
Chapter 13 Forecasting.
Forecasting & Time Series Minggu 6. Learning Objectives Understand the three categories of forecasting techniques available. Become aware of the four.
Operations Management R. Dan Reid & Nada R. Sanders
4 Forecasting PowerPoint presentation to accompany Heizer and Render
15-1 Copyright © 2010 Pearson Education, Inc. Publishing as Prentice Hall Forecasting Chapter 15.
Simple Linear Regression. Introduction In Chapters 17 to 19, we examine the relationship between interval variables via a mathematical equation. The motivation.
Time Series and Forecasting
Slides 13b: Time-Series Models; Measuring Forecast Error
Time Series Forecasting– Part I
Forecasting Chapter 15.
1 1 Slide © 2009 South-Western, a part of Cengage Learning Chapter 6 Forecasting n Quantitative Approaches to Forecasting n Components of a Time Series.
Slides by John Loucks St. Edward’s University.
BIS Application Chapter two
The Importance of Forecasting in POM
1 Chapter 2 and 3 Forecasting Advanced Forecasting Operations Analysis Using MS Excel.
Linear Trend Lines Y t = b 0 + b 1 X t Where Y t is the dependent variable being forecasted X t is the independent variable being used to explain Y. In.
1 Least squares procedure Inference for least squares lines Simple Linear Regression.
Business Forecasting Used to try to predict the future Uses two main methods: Qualitative – seeking opinions on which to base decision making – Consumer.
Introduction to Management Science
DSc 3120 Generalized Modeling Techniques with Applications Part II. Forecasting.
Copyright © 2011 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Time Series Forecasting Chapter 16.
McGraw-Hill/Irwin Copyright © 2007 by The McGraw-Hill Companies, Inc. All rights reserved. Time Series Forecasting Chapter 13.
Operations Management For Competitive Advantage 1Forecasting Operations Management For Competitive Advantage Chapter 11.
Operations Research II Course,, September Part 6: Forecasting Operations Research II Dr. Aref Rashad.
Examining Relationships in Quantitative Research
Time Series Analysis and Forecasting
Time series Decomposition Farideh Dehkordi-Vakil.
Time-Series Forecasting Overview Moving Averages Exponential Smoothing Seasonality.
Forecasting Operations Management For Competitive Advantage.
15-1 Copyright © 2010 Pearson Education, Inc. Publishing as Prentice Hall Forecasting Chapter 15.
Welcome to MM305 Unit 5 Seminar Prof Greg Forecasting.
MANAGEMENT SCIENCE AN INTRODUCTION TO
15-1 Copyright © 2010 Pearson Education, Inc. Publishing as Prentice Hall Forecasting Chapter 15.
Chapter 10: Determining How Costs Behave 1 Horngren 13e.
STATISTICS 12.0 Correlation and Linear Regression “Correlation and Linear Regression -”Causal Forecasting Method.
Economics 173 Business Statistics Lecture 25 © Fall 2001, Professor J. Petry
Time-Series Forecast Models  A time series is a sequence of evenly time-spaced data points, such as daily shipments, weekly sales, or quarterly earnings.
MBF1413 | Quantitative Methods Prepared by Dr Khairul Anuar 8: Time Series Analysis & Forecasting – Part 1
Assignable variation Deviations with a specific cause or source. forecast bias or assignable variation or MSE? Click here for Hint.
Demand Management and Forecasting Chapter 11 Portions Copyright © 2010 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin.
Chapter 11 – With Woodruff Modications Demand Management and Forecasting Copyright © 2010 by The McGraw-Hill Companies, Inc. All rights reserved.McGraw-Hill/Irwin.
3-1Forecasting Weighted Moving Average Formula w t = weight given to time period “t” occurrence (weights must add to one) The formula for the moving average.
Forecasting Quantitative Methods. READ FIRST Outline Define Forecasting The Three Time Frames of Forecasting Forms of Forecast Movement Forecasting Approaches.
Welcome to MM305 Unit 5 Seminar Dr. Bob Forecasting.
Welcome to MM305 Unit 5 Seminar Forecasting. What is forecasting? An attempt to predict the future using data. Generally an 8-step process 1.Why are you.
©The McGraw-Hill Companies, Inc. 2008McGraw-Hill/Irwin Time Series and Forecasting Chapter 16.
Chapter Nineteen McGraw-Hill/Irwin
Linear Regression.
What is Correlation Analysis?
BUSINESS MATHEMATICS & STATISTICS.
FORCASTING AND DEMAND PLANNING
MBF1413 | Quantitative Methods Prepared by Dr Khairul Anuar
Forecasting Chapter 15.
assignable variation Deviations with a specific cause or source.
Chapter Nineteen McGraw-Hill/Irwin
Demand Management and Forecasting
Forecasting Plays an important role in many industries
Presentation transcript:

1 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Advance forecasting Forecasting by identifying patterns in the past data Chapter outline: 1.Extrapolation from the past Cause and effect relationships Trend analysis - Regression analysis - Simple linear regression analysis - Multiple linear regression analysis - Quadratic regression analysis 3.Cyclical and seasonal issues Seasonal decomposition of time series data Type of seasonal variation Computing Multiplication seasonal indices Using seasonal indices to forecast A caution regarding seasonal indices

2 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Extrapolation from the past Cause-and-effect Relationships -Causal forecasting seeks to identify specific cause-effect relationships that will influence the pattern of future data. Causes appear as independent variables, and effects as dependent, response variables in forecasting models. Independent variable Dependent, response variable Pricedemand Decrease in population decrease in demand Number of teenagerdemand for jeans -Causal relationships exist even when there is no specific time series aspect involved. -The most common technique used in causal modeling is least squares regression.

3 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Extrapolation from the past Linear Trend analysis Its noticed from this figure that there is a growth trend influencing the demand, which should be extrapolated into the future.

4 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM The linear trend model or sloping line rather than horizontal line. The forecasting equation for the linear trend model is Y =  +  X or Y = a + bX Where X is the time index (independent variable). The parameters alpha and beta ( a and b) (the “intercept” and “slope” of the trend line) are usually estimated via a simple regression in which Y is the dependent variable and the time index X is the independent variable. Extrapolation from the past Linear Trend analysis

5 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Although linear trend models have their uses, they are often inappropriate for business and economic data. Most naturally occurring business time series do not behave as though there are straight lines fixed in space that they are trying to follow: real trends change their slopes and/or their intercepts over time. The linear trend model tries to find the slope and intercept that give the best average fit to all the past data, and unfortunately its deviation from the data is often greatest near the end of the time series, where the forecasting action is. Extrapolation from the past Linear Trend analysis

6 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Extrapolation from the past Linear Trend analysis Using a data table (what if analysis ) to determine the best-fitting straight line with the lowest MSE

7 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Extrapolation from the past Linear Trend analysis Simple linear Regression Analysis Regression analysis is a statistical method of taking one or more variable called independent or predictor variable- and developing a mathematical equation that show how they relate to the value of a single variable- called the dependent variable. Regression analysis applies least-squares analysis to find the best-fitting line, where best is defined as minimizing the mean square error (MSE) between the historical sample and the calculated forecast. Regression analysis is one of the tools provided by Excel.

8 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Simple linear Regression Analysis

9 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM

10 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Extrapolation from the past Linear Trend analysis Multiple linear Regression Analysis Simple linear regression analysis use one variable (quarter number) as the independent variable in order to predict the future value. In many situations, it is advantageous to use more than one independent variable in a forecast.

11 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Two factors that control the frequency of breakdown. So they are the independent variables. Y = a + bX1 + cX2 Intercept Slope 1 Slope2 Multiple linear Regression Analysis

12 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Multiple linear Regression Analysis

13 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM

14 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Extrapolation from the past Linear Trend analysis Quadratic Regression Analysis Quadratic regression analysis fits a second-order curve of the form Y = a + bX + cX 2 Quadratic regression is prepared by adding the squared value of the time periods. The coefficients in the quadratic formula are calculated again using regression, where time periods and the squared time periods are the independent variables and the demand remains the dependent variable.

15 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Quadratic Regression Analysis

16 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Quadratic Regression Analysis

17 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Extrapolation from the past Cyclical and Seasonal Issues The fundamental approach to including cyclical or seasonal factors is to break the forecast into two components: (1)The underlying growth component (2)The seasonal variations To prepare a forecast model: -Use a method to fit a growth curve to the historical record -Determine the pattern of the seasonal variability In general, two sets of parameters to be estimated: ( the coefficients in the trend line, and the percents in the seasonal patterns )

18 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Extrapolation from the past Cyclical and Seasonal Issues Basically two things must be done: 1- determine the trend line 2- take the trend line out ( calculate deviations from the trend) 3- create a pie, radar, or polar chart of the average period value

19 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Cyclical and Seasonal Issues Seasonal Decomposition of Time Series Data Time series data are usually considered to consist of six component : 1.Average demand: is simply the long-term mean demand 2.Trend component : is how rapidly demand is growing or shrinking 3.Autocorrelation : is simply a statement that demand next period is related to demand this period 4.Seasonal component : is that portion of demand that follows a short- term pattern 5.Cyclical component : is much like the seasonal component, only its period is much longer. 6.Random component is the unpredictable component of demand

20 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Cyclical and Seasonal Issues Type of Seasonal Variation There are two types of seasonal variation: Additive seasonal variation : Occurs when the seasonal effects are the same regardless of the trend. Multiplication seasonal variation : Occurs when the seasonal effects vary with the trend effects. It’s the most common type of seasonal variation

21 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Cyclical and Seasonal Issues Computing Multiplicative Seasonal Indices Steps of Multiplicative Time Series Model: 1.Decide that the data is seasonal in nature. 2.Then realized that the seasonal variation is quarterly 3.If the variation of the data is larger to the right, then that seasonal variation is multiplicative. 4.Seasonal indices is needed to produce the seasonal forecast model.

22 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM 1.Computing seasonal indices requires data that match the seasonal period. If the seasonal period is monthly, then monthly data are required. A quarterly seasonal period requires quarterly data. 2.Calculate the centered moving averages (CMAs) whose length matches the seasonal cycle. The seasonal cycle is the time required for one cycle to be completed. Quarterly seasonality requires a 4-period moving average, monthly seasonality requires a 12-period moving average and so on. 3.Determine the Seasonal-Irregular Factors or components. This can be done by dividing the raw data by the corresponding depersonalized value. 4.Determine the average seasonal factors. In this step the random and cyclical components will be eliminated by averaging them. Cyclical and Seasonal Issues Computing Multiplicative Seasonal Indices

23 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Cyclical and Seasonal Issues Computing Multiplicative Seasonal Indices Step 2 = AVERAGE(B2:B5) Step 3 = B3/C3 Step 1 Step 4

24 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Cyclical and Seasonal Issues Using Seasonal Indices to Forecast To forecast using seasonal indices 1- Compute the forecast using an annual values. Any forecasting techniques can be used. 2- Use the seasonal indices to share out the annual forecast by periods

25 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM