Ridiculously Simple Time Series Forecasting We will review the following techniques: Simple extrapolation (the naïve model). Moving average model Weighted.

Slides:



Advertisements
Similar presentations
Forecasting Introduction
Advertisements

Decomposition Method.
Forecasting OPS 370.
1 BIS APPLICATION MANAGEMENT INFORMATION SYSTEM Advance forecasting Forecasting by identifying patterns in the past data Chapter outline: 1.Extrapolation.
Exponential Smoothing Methods
Time Series Analysis Autocorrelation Naive & Simple Averaging
Exponential smoothing This is a widely used forecasting technique in retailing, even though it has not proven to be especially accurate.
T T18-03 Exponential Smoothing Forecast Purpose Allows the analyst to create and analyze the "Exponential Smoothing Average" forecast. The MAD.
Forecasting 5 June Introduction What: Forecasting Techniques Where: Determine Trends Why: Make better decisions.
Analyzing and Forecasting Time Series Data
Ridiculously Simple Time Series Forecasting We will review the following techniques: Simple extrapolation (the “naïve” model). Moving average model Weighted.
1 Spreadsheet Modeling & Decision Analysis: A Practical Introduction to Management Science, 3e by Cliff Ragsdale.
Using a Centered Moving Average to Extract the Seasonal Component of a Time Series If we are forecasting with say, quarterly time series data, a 4-period.
MOVING AVERAGES AND EXPONENTIAL SMOOTHING
Time Series Forecasting Outline: 1.Measuring forecast error 2.The multiplicative time series model 3.Naïve extrapolation 4.The mean forecast model 5.Moving.
CHAPTER 3 Forecasting.
Chapter 3 Forecasting McGraw-Hill/Irwin
Forecasting McGraw-Hill/Irwin Copyright © 2012 by The McGraw-Hill Companies, Inc. All rights reserved.
Chapter 11 Solved Problems 1. Exhibit 11.2 Example Linear and Nonlinear Trend Patterns 2.
Time Series Forecasting Outline: 1.Measuring forecast error 2.The multiplicative time series model 3.Naïve extrapolation 4.The mean forecast model 5.Moving.
T T18-09 Line Plot (by Observation) Purpose Allows the analyst to visually analyze up to 5 time series plots on a single graph data samples by.
Slides for Part IV-C Outline: 1.Measuring forecast error 2.The multiplicative time series model 3.Naïve extrapolation 4.The mean forecast model 5.Moving.
Business Forecasting Chapter 5 Forecasting with Smoothing Techniques.
Slides 13b: Time-Series Models; Measuring Forecast Error
MOVING AVERAGES AND EXPONENTIAL SMOOTHING. Forecasting methods: –Averaging methods. Equally weighted observations –Exponential Smoothing methods. Unequal.
CHAPTER 18 Models for Time Series and Forecasting
LSS Black Belt Training Forecasting. Forecasting Models Forecasting Techniques Qualitative Models Delphi Method Jury of Executive Opinion Sales Force.
Chapter Three “Customer Accommodation” Part Four “Forecasting” You will need to manually advance from slide-to-slide on this presentation.
IES 371 Engineering Management Chapter 13: Forecasting
Production Planning and Control. 1. Naive approach 2. Moving averages 3. Exponential smoothing 4. Trend projection 5. Linear regression Time-Series Models.
Forecasting Copyright © 2015 McGraw-Hill Education. All rights reserved. No reproduction or distribution without the prior written consent of McGraw-Hill.
Forecasting OPS 370.
1 What Is Forecasting? Sales will be $200 Million!
Time-Series Forecast Models EXAMPLE Monthly Sales ( in units ) Jan Feb Mar Apr May Jun Jul Aug Sept Oct Nov Dec Data Point or (observation) MGMT E-5070.
1 Spreadsheet Modeling & Decision Analysis: A Practical Introduction to Management Science, 3e by Cliff Ragsdale.
3-1Forecasting. 3-2Forecasting FORECAST:  A statement about the future value of a variable of interest such as demand.  Forecasts affect decisions and.
DSc 3120 Generalized Modeling Techniques with Applications Part II. Forecasting.
Time series data: each case represents a point in time. Each cell gives a value for each variable for each time period. Stationarity: Data are stationary.
Time Series 1.
DAVIS AQUILANO CHASE PowerPoint Presentation by Charlie Cook F O U R T H E D I T I O N Forecasting © The McGraw-Hill Companies, Inc., 2003 chapter 9.
Time Series Analysis and Forecasting
Time series Decomposition Farideh Dehkordi-Vakil.
Simple Exponential Smoothing The forecast value is a weighted average of all the available previous values The weights decline geometrically Gives more.
Time-Series Forecasting Overview Moving Averages Exponential Smoothing Seasonality.
FORECASTING (overview)
Time Series Analysis and Forecasting. Introduction to Time Series Analysis A time-series is a set of observations on a quantitative variable collected.
©2003 Thomson/South-Western 1 Chapter 17 – Quantitative Business Forecasting Slides prepared by Jeff Heyl, Lincoln University ©2003 South-Western/Thomson.
Forecasting Demand. Forecasting Methods Qualitative – Judgmental, Executive Opinion - Internal Opinions - Delphi Method - Surveys Quantitative - Causal,
FORECASTING Introduction Quantitative Models Time Series.
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.
CHAPTER 12 FORECASTING. THE CONCEPTS A prediction of future events used for planning purpose Supply chain success, resources planning, scheduling, capacity.
Forecasting Demand. Problems with Forecasts Forecasts are Usually Wrong. Every Forecast Should Include an Estimate of Error. Forecasts are More Accurate.
Assignable variation Deviations with a specific cause or source. forecast bias or assignable variation or MSE? Click here for Hint.
Managerial Decision Modeling 6 th edition Cliff T. Ragsdale.
Forecas ting Copyright © 2015 McGraw-Hill Education. All rights reserved. No reproduction or distribution without the prior written consent of McGraw-Hill.
Copyright 2011 John Wiley & Sons, Inc. 1 Chapter 11 Time Series and Business Forecasting 11.1 Time Series Data 11.2 Simple Moving Average Model 11.3 Weighted.
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.
T T18-02 Weighted Moving Average Forecast Purpose Allows the analyst to create and analyze the "Weighted Moving Average" forecast for up to 5.
Time Series Forecasting Trends and Seasons and Time Series Models PBS Chapters 13.1 and 13.2 © 2009 W.H. Freeman and Company.
Predicting Future. Two Approaches to Predition n Extrapolation: Use past experiences for predicting future. One looks for patterns over time. n Predictive.
Time Series And Business Forecasting
Chapter 4.
Forecasting techniques
FORCASTING AND DEMAND PLANNING
PRODUCTION AND OPERATIONS MANAGEMENT
Forecasting Elements of good forecast Accurate Timely Reliable
Time series forecasting
Forecasting - Introduction
Exponential smoothing
Chap 4: Exponential Smoothing
Presentation transcript:

Ridiculously Simple Time Series Forecasting We will review the following techniques: Simple extrapolation (the naïve model). Moving average model Weighted moving average model

The Naïve Model If your time series exhibits little variation from one period to the next, has no discernible trend, and is unaffected by seasonality, the naïve model is just what you need.

The Moving Average Model For example, if n = 4, you have a 4-period moving average model.

The Weighted Moving Average Model The ωs are the weights attached to past observations of the time series variable and there are n periods weighted. Notice that: Σω i = 1. The trick is to select the value of n and corresponding values of so as to minimize MSE

Example: Forecasting Retail Sales of Womens Clothing Our data set contains 175 monthly observations on retail sales of womens clothing in the U.S. (January 1996 to August 2010) measuring in millions of dollars. We will perform in-sample forecasts using the 3 techniques to determine which has the best fit.

Techniques 2 and 3 We will do a 6-month prior moving average for technique 2 We will do a 4-month weighted moving average for technique 3. The weights are as follows:

Results