SlideShare una empresa de Scribd logo
1 de 43
Descargar para leer sin conexión
1
Time Series Decomposition &
Exponential Smoothing
2
Readings
• Multiplicative Time Series Decomposition: Read “Time
Series Forecasting”, Notes Abridged from Operations
Management by K N Dervitsiotis, McGraw Hill, 1981
• Additive Time Series Decomposition: Notes on PPT
Slides
• Exponential Smoothing:
– Chapter 3, Business Forecasting, 5th Ed, Wilson & Keating,
Tata-McGrawHill;
• “Marriot Rooms Forecasting” Case
3
Three Systems of Techniques for
Business Forecasting
• First forecasting model is cause-and-effect.
• This model assumes a cause determines an
outcome.
• Cause may be an investment in information
technology, and the effect is sales.
• This model requires historical data not only of
effect (say, sales), but also the “cause” (say,
information technology expenditure).
4
Three Systems of Techniques for
Business Forecasting
• Second is the time-series model
• Data are projected forward based on an
established method like -- moving average, simple
average, exponential smoothing, decomposition,
and Box-Jenkins.
• This model assumes data patterns from the
recent past will remain stable in future.
5
Three Systems of Techniques for
Business Forecasting
• Third is the judgmental model.
• To produce a forecast without useful historical
data (while projecting sales for a brand new
product or when market conditions change
making past data obsolete).
• In absence of historical data, alternative data
collected from experts in the field (Delphi
method), prospective customers (Conjoint
Analysis), trade groups, business partners, or
other relevant source of information.
Time Series Decomposition
• Multiplicative Decomposition: Y=T*S*C*R
• Additive Decompostion: Y=T+S+C+R
6
7
WBSEDCL Energy
Sales Data
Apr 2004 – Mar
2008
8
WBSEDCL Energy Sales (MU) - April 2004 to Nov 2007
700
750
800
850
900
950
1000
1050
1100
1150
1200
Apr-04
Jul-04O
ct-04
Jan-05Apr-05
Jul-05O
ct-05
Jan-06Apr-06
Jul-06O
ct-06Jan-07Apr-07
Jul-07O
ct-07
End of Nov 2007: How to Predict Future Sales?? (for Dec 2007, …)
9
Multiplicative Model: Sales = T*S*C*R
Additive Model: Sales = T+S+C+R
WBSEDCL Energy Sales (MU) - April 2004 to Nov 2007
700
750
800
850
900
950
1000
1050
1100
1150
1200
Apr-04
Jul-04O
ct-04
Jan-05Apr-05
Jul-05O
ct-05
Jan-06Apr-06
Jul-06O
ct-06Jan-07Apr-07
Jul-07O
ct-07
10
WBSEDCL Energy Sales (MU) - April 2004 to Nov 2007
700
750
800
850
900
950
1000
1050
1100
1150
1200Apr-04
Jul-04O
ct-04
Jan-05Apr-05
Jul-05O
ct-05
Jan-06Apr-06
Jul-06O
ct-06Jan-07Apr-07
Jul-07O
ct-07
11
Seasonal Index
0.85
0.90
0.95
1.00
1.05
1.10
Apr May Jun Jul Aug Sep Oct Nov Dec Jan Feb Mar
12
Deseasonalized Data Apr 2004 - Nov 2007
800.00
850.00
900.00
950.00
1000.00
1050.00
1100.00
1150.00Apr-04
Jul-04O
ct-04Jan-05Apr-05
Jul-05O
ct-05Jan-06Apr-06
Jul-06O
ct-06Jan-07Apr-07
Jul-07O
ct-07
13
Cyclical Component (May 2004 - Oct 2007)
0.920
0.940
0.960
0.980
1.000
1.020
1.040
1.060
1.080M
ay-04Aug-04Nov-04Feb-05M
ay-05Aug-05Nov-05Feb-06M
ay-06Aug-06Nov-06Feb-07M
ay-07Aug-07
14
Multiplicative Model: Sales = T*S*C*R
APE = Absolute Percentage Error
MAPE= Mean Absolute Percentage Error
15
Additive Model: Sales = T+S+C+R
Sales in current period =
a1*time +
(b1*Jan+ b2*Feb + … b12*Dec)+
(c1*Sales last period) +
Error
16
17
Additive Model: Sales = T+S+C+R
Sales = 2.83*Time
+ [258.14(If Month is Jan) +
238.02*(If Month is Feb) +
290.90*(If Month is Mar) +
161.15*(If Month is Apr) +
309.87*(If Month is May) +
271.00*(If Month is Jun) +
335.06*(If Month is Jul) +
291.76*(If Month is Aug) +
309.07(If Month is Sep) +
311.58*(If Month is Oct)+
269.76*(If Month is Nov) +
319.74*(If Month is Dec)]
+ 0.64*(Prev Month Sale)
18
Additive Model: Sales = T+S+C+R
19
Moving Averages &
Exponential Smoothing
• Exponential Smoothing
• Holt’s Exponential Smoothing
• Holt-Winters Exponential Smoothing
20
Moving Averages for Forecasts
21
Exponential Smoothing for Forecasts
700.00
800.00
900.00
1000.00
1100.00
1200.00
1300.00
Apr-05
Jun-05
Aug-05
Oct-05
Dec-05
Feb-06
Apr-06
Jun-06
Aug-06
Oct-06
Dec-06
Feb-07
Apr-07
Jun-07
Aug-07
Oct-07
Energy Sales (MU)
Simple EWS
EWS Holt
EWS Winters
22
In-sample Prediction Error
using MA & EWS Methods
23
Forecasting with Various Averages:
Exponential Smoothing
9-month Sales
17
19
21
23
25
27
29
31
33
Jan Feb Mar Apr May June Jul Aug Sep
Month
Sales
24
Forecasting with Various Averages:
Exponential Smoothing
0.8
Month Sales
All Prev.
Period
average
Last
Period
Moving
Average
(3
month)
Exponen
tial
Moving
Average
(w= )
Jan 21
Feb 23 21.00 21 21.00
Mar 21 22.00 23 22.60
Apr 20 21.67 21 21.67 21.32
May 21 21.25 20 21.33 20.26
June 19 21.20 21 20.67 20.85
Jul 28 20.83 19 20.00 19.37
Aug 32 21.86 28 22.67 26.27
Sep 26 23.13 32 26.33 30.85
Oct ?? 23.44 26 28.67 26.97
25
Exponential Smoothing
• A weighted moving average
– Weights decline exponentially
– Most recent observation weighted most
• Used for smoothing and forecasting
(one period into the future)
26
Exponential Smoothing
• Weight (smoothing coefficient) is W
– Range from 0 to 1
– Smaller W gives better smoothing
(smoothing out unwanted cyclical and noise
components),
– Larger W forecasts better
(continued)
27
Exponential Smoothing: Method
11 YE =
,)1( 1−−+= iii EWWYE for i = 2, 3, 4, …
Ei = weighted average of actual obs Yi and its
forecast Ei-1
= forecast for next period (i+1)
Weights: w, w*(1-w), w*(1-w)^2, w*(1-w)^3, w*(1-w)^4, …
Yn, Yn-1, Yn-2, Yn-3, Yn-4, …
28
EWS or EMA Weights decline fast:
w, w*(1-w), w*(1-w)^2, w*(1-w)^3, w*(1-w)^4, …
0.1 0.2 0.5 0.8 0.9
Weight
= W
Weight
= W
Weight
= W
Weight
= W
Weight
= W
0.100 0.200 0.500 0.800 0.900
0.090 0.160 0.250 0.160 0.090
0.081 0.128 0.125 0.032 0.009
0.073 0.102 0.063 0.006 0.001
0.066 0.082 0.031 0.001 0.000
0.059 0.066 0.016 0.000 0.000
0.053 0.052 0.008 0.000 0.000
0.048 0.042 0.004 0.000 0.000
0.043 0.034 0.002 0.000 0.000
0.039 0.027 0.001 0.000 0.000
0.035 0.021 0.000 0.000 0.000
… … … … …
Weight W = 0.5
0.000
0.100
0.200
0.300
0.400
0.500
0.600
1 2 3 4 5 6 7 8 9 10 11
Observation No.
Weight
29
30
Sales vs. Smoothed Sales
• Fluctuations have
been smoothed
• NOTE: the
smoothed value in
this case is
generally a little
low, since the
trend is upward
sloping and the
weighting factor is
only .2
0
10
20
30
40
50
60
1 2 3 4 5 6 7 8 9 10
Time Period
Sales
Sales Smoothed
31
Exponential Smoothing for Trent Data
32
Exponential Smoothing: Holt’s Method
Initial Values: L1 = Y1, T1 = 0
******************
Preliminary forecast of Y for next period (t+1):
Lt = a*Yt + (1-a)*(Lt-1+Tt-1) for t = 2, 3, 4, …
Correction Factor of “slope”:
Tt = b*(Lt - Lt-1) + (1-b)*Tt-1 for t = 2, 3, 4, …
Modified forecast of Y for next period (t+1):
Ft = (Lt + Tt)
33
Exponential Smoothing: Holt Winters
Method
Initial Values:
St = Yt/Average(Y1:Ys),
t=1,2,…,s,
Ls = Ys/Ss,
Ts = [Average(Ys+1:Y2s)
– Average(Y1:Ys) ] /s
34
Exponential Smoothing: Holt Winters
Method
1. Preliminary forecast of deseasonalized Y for (t+1)
Lt = a*(Yt /St-s) + (1-a)*(Lt-1+Tt-1) for t = s+1, …
2. Correction Factor of “slope” to add to preliminary
forecast of deseasonalized Y for (t+1) :
Tt = b*(Lt - Lt-1) + (1-b)*Tt-1 for t = s+1, …
3. Modified Forecast of deseasonalized Y for (t+1): (Lt + Tt)
4. Correction Factor of “seasonality” (will be used s
periods later) : St = c*(Yt /Lt) + (1-c)*St-s, t=s+1, …
5. Final forecast of seasonal Y for (t+1):
Ft = (Lt + Tt)*St+1-s
Calculation
35
36
Forecast by Exponential Smoothing
37
Comparing Forecasts by Various Methods
Exponential Moving Average
(Special Type of EWS)
38
Exponential Moving Average
(special type of EWS)
39
for 20-Period EMA, 0.0952(approx) of current
period value is considered and for 50-Period
EMA, 0.0392(approx) of the current value is
considered.
Formula:
EMA(current) = Price(current)x Multiplier +(1-
Multiplier) x EMA(previous)
Exact Weight or Multiplier= 2/(n+1)
Stock Market Data
40
Stock Market Data
41
Stock Market Data
42
Stock Market Data
43

Más contenido relacionado

La actualidad más candente

Trend and seasonal component/Abshor.Marantika - kelompok 12
Trend and seasonal component/Abshor.Marantika - kelompok 12Trend and seasonal component/Abshor.Marantika - kelompok 12
Trend and seasonal component/Abshor.Marantika - kelompok 12Linlin2611
 
Quantitative forecasting
Quantitative forecastingQuantitative forecasting
Quantitative forecastingRavi Loriya
 
Vectors and scalars for IB 11th graders
Vectors and scalars for IB 11th gradersVectors and scalars for IB 11th graders
Vectors and scalars for IB 11th gradersMESUT MIZRAK
 
Addition of Vectors | By Head to Tail Rule
Addition of Vectors | By Head to Tail RuleAddition of Vectors | By Head to Tail Rule
Addition of Vectors | By Head to Tail RuleAdeel Rasheed
 
Physics 504 Chapter 8 Vectors
Physics 504 Chapter 8 VectorsPhysics 504 Chapter 8 Vectors
Physics 504 Chapter 8 VectorsNeil MacIntosh
 
Physics M1 Vectors
Physics M1 VectorsPhysics M1 Vectors
Physics M1 VectorseLearningJa
 
Physics 1.3 scalars and vectors
Physics 1.3 scalars and vectorsPhysics 1.3 scalars and vectors
Physics 1.3 scalars and vectorsJohnPaul Kennedy
 
Exponential smoothing
Exponential smoothingExponential smoothing
Exponential smoothingJairo Moreno
 
Business statistics homework help service
Business statistics homework help serviceBusiness statistics homework help service
Business statistics homework help serviceStatistics Help Desk
 
Grade 9 U0-L5-Graphing
Grade 9 U0-L5-GraphingGrade 9 U0-L5-Graphing
Grade 9 U0-L5-Graphinggruszecki1
 
Ib grade 11 physics lesson 1 measurements and uncertainities
Ib grade 11 physics lesson 1 measurements and uncertainitiesIb grade 11 physics lesson 1 measurements and uncertainities
Ib grade 11 physics lesson 1 measurements and uncertainitiesMESUT MIZRAK
 

La actualidad más candente (19)

Trend and seasonal component/Abshor.Marantika - kelompok 12
Trend and seasonal component/Abshor.Marantika - kelompok 12Trend and seasonal component/Abshor.Marantika - kelompok 12
Trend and seasonal component/Abshor.Marantika - kelompok 12
 
Quantitative forecasting
Quantitative forecastingQuantitative forecasting
Quantitative forecasting
 
Forecasting
ForecastingForecasting
Forecasting
 
Time Series Analysis Ravi
Time Series Analysis RaviTime Series Analysis Ravi
Time Series Analysis Ravi
 
Vectors and scalars for IB 11th graders
Vectors and scalars for IB 11th gradersVectors and scalars for IB 11th graders
Vectors and scalars for IB 11th graders
 
Time series Analysis
Time series AnalysisTime series Analysis
Time series Analysis
 
Addition of Vectors | By Head to Tail Rule
Addition of Vectors | By Head to Tail RuleAddition of Vectors | By Head to Tail Rule
Addition of Vectors | By Head to Tail Rule
 
Physics 504 Chapter 8 Vectors
Physics 504 Chapter 8 VectorsPhysics 504 Chapter 8 Vectors
Physics 504 Chapter 8 Vectors
 
Physics M1 Vectors
Physics M1 VectorsPhysics M1 Vectors
Physics M1 Vectors
 
Time Series FORECASTING
Time Series FORECASTINGTime Series FORECASTING
Time Series FORECASTING
 
Physics 1.3 scalars and vectors
Physics 1.3 scalars and vectorsPhysics 1.3 scalars and vectors
Physics 1.3 scalars and vectors
 
Exponential smoothing
Exponential smoothingExponential smoothing
Exponential smoothing
 
Unit 3 notes
Unit 3 notesUnit 3 notes
Unit 3 notes
 
Business statistics homework help service
Business statistics homework help serviceBusiness statistics homework help service
Business statistics homework help service
 
Grade 9 U0-L5-Graphing
Grade 9 U0-L5-GraphingGrade 9 U0-L5-Graphing
Grade 9 U0-L5-Graphing
 
Chapter 2
Chapter 2Chapter 2
Chapter 2
 
Ib grade 11 physics lesson 1 measurements and uncertainities
Ib grade 11 physics lesson 1 measurements and uncertainitiesIb grade 11 physics lesson 1 measurements and uncertainities
Ib grade 11 physics lesson 1 measurements and uncertainities
 
Chapter 1(4)SCALAR AND VECTOR
Chapter 1(4)SCALAR AND VECTORChapter 1(4)SCALAR AND VECTOR
Chapter 1(4)SCALAR AND VECTOR
 
Forcast2
Forcast2Forcast2
Forcast2
 

Destacado

Shahid Lecture-9- MKAG1273
Shahid Lecture-9- MKAG1273Shahid Lecture-9- MKAG1273
Shahid Lecture-9- MKAG1273nchakori
 
Mba ii pmom_unit-1.3 forecasting a
Mba ii pmom_unit-1.3 forecasting aMba ii pmom_unit-1.3 forecasting a
Mba ii pmom_unit-1.3 forecasting aRai University
 
Forecasting Techniques - Data Science SG
Forecasting Techniques - Data Science SG Forecasting Techniques - Data Science SG
Forecasting Techniques - Data Science SG Kai Xin Thia
 
Classical decomposition
Classical decompositionClassical decomposition
Classical decompositionAzzuriey Ahmad
 
Forecasting without forecasters
Forecasting without forecastersForecasting without forecasters
Forecasting without forecastersRob Hyndman
 
Arima model (time series)
Arima model (time series)Arima model (time series)
Arima model (time series)Kumar P
 
Data Science - Part X - Time Series Forecasting
Data Science - Part X - Time Series ForecastingData Science - Part X - Time Series Forecasting
Data Science - Part X - Time Series ForecastingDerek Kane
 

Destacado (11)

Forecasting sales
Forecasting salesForecasting sales
Forecasting sales
 
ForecastIT 7. Decomposition
ForecastIT 7. DecompositionForecastIT 7. Decomposition
ForecastIT 7. Decomposition
 
Shahid Lecture-9- MKAG1273
Shahid Lecture-9- MKAG1273Shahid Lecture-9- MKAG1273
Shahid Lecture-9- MKAG1273
 
Mba ii pmom_unit-1.3 forecasting a
Mba ii pmom_unit-1.3 forecasting aMba ii pmom_unit-1.3 forecasting a
Mba ii pmom_unit-1.3 forecasting a
 
Forecasting Techniques - Data Science SG
Forecasting Techniques - Data Science SG Forecasting Techniques - Data Science SG
Forecasting Techniques - Data Science SG
 
Classical decomposition
Classical decompositionClassical decomposition
Classical decomposition
 
Forecasting6
Forecasting6Forecasting6
Forecasting6
 
Forecasting without forecasters
Forecasting without forecastersForecasting without forecasters
Forecasting without forecasters
 
Arima model (time series)
Arima model (time series)Arima model (time series)
Arima model (time series)
 
ARIMA
ARIMA ARIMA
ARIMA
 
Data Science - Part X - Time Series Forecasting
Data Science - Part X - Time Series ForecastingData Science - Part X - Time Series Forecasting
Data Science - Part X - Time Series Forecasting
 

Similar a Business forecasting decomposition & exponential smoothing - bhawani nandan prasad - it director

1.3-CHAPTER 13 FORECASTING_BA_UDineshK.pptx
1.3-CHAPTER 13 FORECASTING_BA_UDineshK.pptx1.3-CHAPTER 13 FORECASTING_BA_UDineshK.pptx
1.3-CHAPTER 13 FORECASTING_BA_UDineshK.pptxDeepGondaliya3
 
time series.ppt [Autosaved].pdf
time series.ppt [Autosaved].pdftime series.ppt [Autosaved].pdf
time series.ppt [Autosaved].pdfssuser220491
 
Is the Macroeconomy Locally Unstable and Why Should We Care?
Is the Macroeconomy Locally Unstable and Why Should We Care?Is the Macroeconomy Locally Unstable and Why Should We Care?
Is the Macroeconomy Locally Unstable and Why Should We Care?ADEMU_Project
 
Predictive Modelling
Predictive ModellingPredictive Modelling
Predictive ModellingRajiv Advani
 
Trend and seasonal component/abshor.marantika/kelompok 12
Trend and seasonal component/abshor.marantika/kelompok 12Trend and seasonal component/abshor.marantika/kelompok 12
Trend and seasonal component/abshor.marantika/kelompok 12Linlin2611
 
Time series mnr
Time series mnrTime series mnr
Time series mnrNH Rao
 
Presentation on Bad Beta, Good Beta
Presentation on Bad Beta, Good BetaPresentation on Bad Beta, Good Beta
Presentation on Bad Beta, Good BetaMichael-Paul James
 
Forecasting demand planning
Forecasting demand planningForecasting demand planning
Forecasting demand planningManonmaniA3
 
428344346-Chapter-7-Forecastingddddd.ppt
428344346-Chapter-7-Forecastingddddd.ppt428344346-Chapter-7-Forecastingddddd.ppt
428344346-Chapter-7-Forecastingddddd.pptUntukYtban
 
Enterprise_Planning_TimeSeries_And_Components
Enterprise_Planning_TimeSeries_And_ComponentsEnterprise_Planning_TimeSeries_And_Components
Enterprise_Planning_TimeSeries_And_Componentsnanfei
 
Ch 12 Slides.doc. Introduction of science of business
Ch 12 Slides.doc. Introduction of science of businessCh 12 Slides.doc. Introduction of science of business
Ch 12 Slides.doc. Introduction of science of businessohenebabismark508
 
Paris2012 session4
Paris2012 session4Paris2012 session4
Paris2012 session4Cdiscount
 
State Space Model
State Space ModelState Space Model
State Space ModelCdiscount
 
Industrial engineering sk-mondal
Industrial engineering sk-mondalIndustrial engineering sk-mondal
Industrial engineering sk-mondaljagdeep_jd
 

Similar a Business forecasting decomposition & exponential smoothing - bhawani nandan prasad - it director (20)

1.3-CHAPTER 13 FORECASTING_BA_UDineshK.pptx
1.3-CHAPTER 13 FORECASTING_BA_UDineshK.pptx1.3-CHAPTER 13 FORECASTING_BA_UDineshK.pptx
1.3-CHAPTER 13 FORECASTING_BA_UDineshK.pptx
 
lecture3.pdf
lecture3.pdflecture3.pdf
lecture3.pdf
 
time series.ppt [Autosaved].pdf
time series.ppt [Autosaved].pdftime series.ppt [Autosaved].pdf
time series.ppt [Autosaved].pdf
 
Is the Macroeconomy Locally Unstable and Why Should We Care?
Is the Macroeconomy Locally Unstable and Why Should We Care?Is the Macroeconomy Locally Unstable and Why Should We Care?
Is the Macroeconomy Locally Unstable and Why Should We Care?
 
Predictive Modelling
Predictive ModellingPredictive Modelling
Predictive Modelling
 
Trend and seasonal component/abshor.marantika/kelompok 12
Trend and seasonal component/abshor.marantika/kelompok 12Trend and seasonal component/abshor.marantika/kelompok 12
Trend and seasonal component/abshor.marantika/kelompok 12
 
Time series mnr
Time series mnrTime series mnr
Time series mnr
 
forecasting
forecastingforecasting
forecasting
 
Presentation on Bad Beta, Good Beta
Presentation on Bad Beta, Good BetaPresentation on Bad Beta, Good Beta
Presentation on Bad Beta, Good Beta
 
Forecasting demand planning
Forecasting demand planningForecasting demand planning
Forecasting demand planning
 
428344346-Chapter-7-Forecastingddddd.ppt
428344346-Chapter-7-Forecastingddddd.ppt428344346-Chapter-7-Forecastingddddd.ppt
428344346-Chapter-7-Forecastingddddd.ppt
 
forecast.ppt
forecast.pptforecast.ppt
forecast.ppt
 
Enterprise_Planning_TimeSeries_And_Components
Enterprise_Planning_TimeSeries_And_ComponentsEnterprise_Planning_TimeSeries_And_Components
Enterprise_Planning_TimeSeries_And_Components
 
Ch 12 Slides.doc. Introduction of science of business
Ch 12 Slides.doc. Introduction of science of businessCh 12 Slides.doc. Introduction of science of business
Ch 12 Slides.doc. Introduction of science of business
 
pres06-main
pres06-mainpres06-main
pres06-main
 
Paris2012 session4
Paris2012 session4Paris2012 session4
Paris2012 session4
 
State Space Model
State Space ModelState Space Model
State Space Model
 
Chapter 18 Part I
Chapter 18 Part IChapter 18 Part I
Chapter 18 Part I
 
Master_Thesis_Harihara_Subramanyam_Sreenivasan
Master_Thesis_Harihara_Subramanyam_SreenivasanMaster_Thesis_Harihara_Subramanyam_Sreenivasan
Master_Thesis_Harihara_Subramanyam_Sreenivasan
 
Industrial engineering sk-mondal
Industrial engineering sk-mondalIndustrial engineering sk-mondal
Industrial engineering sk-mondal
 

Más de Bhawani N Prasad

Understanding Robotic process automation by bhawani nandan prasad
Understanding Robotic process automation by bhawani nandan prasadUnderstanding Robotic process automation by bhawani nandan prasad
Understanding Robotic process automation by bhawani nandan prasadBhawani N Prasad
 
Apache spark with akka couchbase code by bhawani
Apache spark with akka couchbase code by bhawaniApache spark with akka couchbase code by bhawani
Apache spark with akka couchbase code by bhawaniBhawani N Prasad
 
Agile overview class for scrum masters
Agile overview class for scrum mastersAgile overview class for scrum masters
Agile overview class for scrum mastersBhawani N Prasad
 
Machine learning computer science by bhawani n prasad
Machine learning computer science by bhawani n prasadMachine learning computer science by bhawani n prasad
Machine learning computer science by bhawani n prasadBhawani N Prasad
 
What we can do in Retail analytics by bhawani nandanprasad
What we can do in Retail analytics by bhawani nandanprasadWhat we can do in Retail analytics by bhawani nandanprasad
What we can do in Retail analytics by bhawani nandanprasadBhawani N Prasad
 
Big data analytics bhawani nandan prasad
Big data analytics   bhawani nandan prasadBig data analytics   bhawani nandan prasad
Big data analytics bhawani nandan prasadBhawani N Prasad
 
Define enterprise integration strategy by industry leader bhawani nandanprasad
Define enterprise integration strategy by industry leader bhawani nandanprasadDefine enterprise integration strategy by industry leader bhawani nandanprasad
Define enterprise integration strategy by industry leader bhawani nandanprasadBhawani N Prasad
 
New IBM Information Server 11.3 - Bhawani Nandan Prasad
New IBM Information Server  11.3 - Bhawani Nandan PrasadNew IBM Information Server  11.3 - Bhawani Nandan Prasad
New IBM Information Server 11.3 - Bhawani Nandan PrasadBhawani N Prasad
 
Economic growth inequality across globe by bhawani nandan prasad
Economic growth inequality across globe  by bhawani nandan prasadEconomic growth inequality across globe  by bhawani nandan prasad
Economic growth inequality across globe by bhawani nandan prasadBhawani N Prasad
 
Agile lifecycle handbook by bhawani nandan prasad
Agile lifecycle handbook by bhawani nandan prasadAgile lifecycle handbook by bhawani nandan prasad
Agile lifecycle handbook by bhawani nandan prasadBhawani N Prasad
 
Agile project management tips and techniques
Agile project management tips and techniquesAgile project management tips and techniques
Agile project management tips and techniquesBhawani N Prasad
 
Cognos 10 upgrade migrate fixpack by bhawani nandan prasad
Cognos 10 upgrade migrate fixpack by bhawani nandan prasadCognos 10 upgrade migrate fixpack by bhawani nandan prasad
Cognos 10 upgrade migrate fixpack by bhawani nandan prasadBhawani N Prasad
 
Software development with scrum methodology bhawani nandan prasad
Software development with scrum methodology   bhawani nandan prasadSoftware development with scrum methodology   bhawani nandan prasad
Software development with scrum methodology bhawani nandan prasadBhawani N Prasad
 
Agile formanagers by-bhawaninandanprasad
Agile formanagers by-bhawaninandanprasadAgile formanagers by-bhawaninandanprasad
Agile formanagers by-bhawaninandanprasadBhawani N Prasad
 
Dsdm by bhawani nandanprasad
Dsdm by bhawani nandanprasadDsdm by bhawani nandanprasad
Dsdm by bhawani nandanprasadBhawani N Prasad
 

Más de Bhawani N Prasad (20)

Understanding Robotic process automation by bhawani nandan prasad
Understanding Robotic process automation by bhawani nandan prasadUnderstanding Robotic process automation by bhawani nandan prasad
Understanding Robotic process automation by bhawani nandan prasad
 
Apache spark with akka couchbase code by bhawani
Apache spark with akka couchbase code by bhawaniApache spark with akka couchbase code by bhawani
Apache spark with akka couchbase code by bhawani
 
Agile overview class for scrum masters
Agile overview class for scrum mastersAgile overview class for scrum masters
Agile overview class for scrum masters
 
Product Management
Product ManagementProduct Management
Product Management
 
Product Engineering
Product EngineeringProduct Engineering
Product Engineering
 
Machine learning computer science by bhawani n prasad
Machine learning computer science by bhawani n prasadMachine learning computer science by bhawani n prasad
Machine learning computer science by bhawani n prasad
 
PM conpetency skills
PM conpetency skillsPM conpetency skills
PM conpetency skills
 
What we can do in Retail analytics by bhawani nandanprasad
What we can do in Retail analytics by bhawani nandanprasadWhat we can do in Retail analytics by bhawani nandanprasad
What we can do in Retail analytics by bhawani nandanprasad
 
Big data analytics bhawani nandan prasad
Big data analytics   bhawani nandan prasadBig data analytics   bhawani nandan prasad
Big data analytics bhawani nandan prasad
 
Program management-steps
Program management-stepsProgram management-steps
Program management-steps
 
Define enterprise integration strategy by industry leader bhawani nandanprasad
Define enterprise integration strategy by industry leader bhawani nandanprasadDefine enterprise integration strategy by industry leader bhawani nandanprasad
Define enterprise integration strategy by industry leader bhawani nandanprasad
 
New IBM Information Server 11.3 - Bhawani Nandan Prasad
New IBM Information Server  11.3 - Bhawani Nandan PrasadNew IBM Information Server  11.3 - Bhawani Nandan Prasad
New IBM Information Server 11.3 - Bhawani Nandan Prasad
 
Economic growth inequality across globe by bhawani nandan prasad
Economic growth inequality across globe  by bhawani nandan prasadEconomic growth inequality across globe  by bhawani nandan prasad
Economic growth inequality across globe by bhawani nandan prasad
 
Agile lifecycle handbook by bhawani nandan prasad
Agile lifecycle handbook by bhawani nandan prasadAgile lifecycle handbook by bhawani nandan prasad
Agile lifecycle handbook by bhawani nandan prasad
 
Agile project management tips and techniques
Agile project management tips and techniquesAgile project management tips and techniques
Agile project management tips and techniques
 
Cognos 10 upgrade migrate fixpack by bhawani nandan prasad
Cognos 10 upgrade migrate fixpack by bhawani nandan prasadCognos 10 upgrade migrate fixpack by bhawani nandan prasad
Cognos 10 upgrade migrate fixpack by bhawani nandan prasad
 
Software development with scrum methodology bhawani nandan prasad
Software development with scrum methodology   bhawani nandan prasadSoftware development with scrum methodology   bhawani nandan prasad
Software development with scrum methodology bhawani nandan prasad
 
Agile formanagers by-bhawaninandanprasad
Agile formanagers by-bhawaninandanprasadAgile formanagers by-bhawaninandanprasad
Agile formanagers by-bhawaninandanprasad
 
Dsdm by bhawani nandanprasad
Dsdm by bhawani nandanprasadDsdm by bhawani nandanprasad
Dsdm by bhawani nandanprasad
 
Cmmi vs-agile
Cmmi vs-agileCmmi vs-agile
Cmmi vs-agile
 

Último

Business Model Canvas (BMC)- A new venture concept
Business Model Canvas (BMC)-  A new venture conceptBusiness Model Canvas (BMC)-  A new venture concept
Business Model Canvas (BMC)- A new venture conceptP&CO
 
Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...lizamodels9
 
Mysore Call Girls 8617370543 WhatsApp Number 24x7 Best Services
Mysore Call Girls 8617370543 WhatsApp Number 24x7 Best ServicesMysore Call Girls 8617370543 WhatsApp Number 24x7 Best Services
Mysore Call Girls 8617370543 WhatsApp Number 24x7 Best ServicesDipal Arora
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756dollysharma2066
 
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...Aggregage
 
Insurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usageInsurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usageMatteo Carbone
 
Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023Neil Kimberley
 
Value Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsValue Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsP&CO
 
Monthly Social Media Update April 2024 pptx.pptx
Monthly Social Media Update April 2024 pptx.pptxMonthly Social Media Update April 2024 pptx.pptx
Monthly Social Media Update April 2024 pptx.pptxAndy Lambert
 
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...amitlee9823
 
BAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRL
BAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRLBAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRL
BAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRLkapoorjyoti4444
 
Cracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptxCracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptxWorkforce Group
 
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756dollysharma2066
 
A DAY IN THE LIFE OF A SALESMAN / WOMAN
A DAY IN THE LIFE OF A  SALESMAN / WOMANA DAY IN THE LIFE OF A  SALESMAN / WOMAN
A DAY IN THE LIFE OF A SALESMAN / WOMANIlamathiKannappan
 
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Dave Litwiller
 
Phases of Negotiation .pptx
 Phases of Negotiation .pptx Phases of Negotiation .pptx
Phases of Negotiation .pptxnandhinijagan9867
 
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptxB.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptxpriyanshujha201
 
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableDipal Arora
 

Último (20)

Business Model Canvas (BMC)- A new venture concept
Business Model Canvas (BMC)-  A new venture conceptBusiness Model Canvas (BMC)-  A new venture concept
Business Model Canvas (BMC)- A new venture concept
 
Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...
 
Mysore Call Girls 8617370543 WhatsApp Number 24x7 Best Services
Mysore Call Girls 8617370543 WhatsApp Number 24x7 Best ServicesMysore Call Girls 8617370543 WhatsApp Number 24x7 Best Services
Mysore Call Girls 8617370543 WhatsApp Number 24x7 Best Services
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
 
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
 
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
 
Insurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usageInsurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usage
 
Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023
 
Value Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsValue Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and pains
 
Monthly Social Media Update April 2024 pptx.pptx
Monthly Social Media Update April 2024 pptx.pptxMonthly Social Media Update April 2024 pptx.pptx
Monthly Social Media Update April 2024 pptx.pptx
 
Forklift Operations: Safety through Cartoons
Forklift Operations: Safety through CartoonsForklift Operations: Safety through Cartoons
Forklift Operations: Safety through Cartoons
 
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
 
BAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRL
BAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRLBAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRL
BAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRL
 
Cracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptxCracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptx
 
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
 
A DAY IN THE LIFE OF A SALESMAN / WOMAN
A DAY IN THE LIFE OF A  SALESMAN / WOMANA DAY IN THE LIFE OF A  SALESMAN / WOMAN
A DAY IN THE LIFE OF A SALESMAN / WOMAN
 
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
 
Phases of Negotiation .pptx
 Phases of Negotiation .pptx Phases of Negotiation .pptx
Phases of Negotiation .pptx
 
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptxB.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
 
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
 

Business forecasting decomposition & exponential smoothing - bhawani nandan prasad - it director

  • 1. 1 Time Series Decomposition & Exponential Smoothing
  • 2. 2 Readings • Multiplicative Time Series Decomposition: Read “Time Series Forecasting”, Notes Abridged from Operations Management by K N Dervitsiotis, McGraw Hill, 1981 • Additive Time Series Decomposition: Notes on PPT Slides • Exponential Smoothing: – Chapter 3, Business Forecasting, 5th Ed, Wilson & Keating, Tata-McGrawHill; • “Marriot Rooms Forecasting” Case
  • 3. 3 Three Systems of Techniques for Business Forecasting • First forecasting model is cause-and-effect. • This model assumes a cause determines an outcome. • Cause may be an investment in information technology, and the effect is sales. • This model requires historical data not only of effect (say, sales), but also the “cause” (say, information technology expenditure).
  • 4. 4 Three Systems of Techniques for Business Forecasting • Second is the time-series model • Data are projected forward based on an established method like -- moving average, simple average, exponential smoothing, decomposition, and Box-Jenkins. • This model assumes data patterns from the recent past will remain stable in future.
  • 5. 5 Three Systems of Techniques for Business Forecasting • Third is the judgmental model. • To produce a forecast without useful historical data (while projecting sales for a brand new product or when market conditions change making past data obsolete). • In absence of historical data, alternative data collected from experts in the field (Delphi method), prospective customers (Conjoint Analysis), trade groups, business partners, or other relevant source of information.
  • 6. Time Series Decomposition • Multiplicative Decomposition: Y=T*S*C*R • Additive Decompostion: Y=T+S+C+R 6
  • 8. 8 WBSEDCL Energy Sales (MU) - April 2004 to Nov 2007 700 750 800 850 900 950 1000 1050 1100 1150 1200 Apr-04 Jul-04O ct-04 Jan-05Apr-05 Jul-05O ct-05 Jan-06Apr-06 Jul-06O ct-06Jan-07Apr-07 Jul-07O ct-07 End of Nov 2007: How to Predict Future Sales?? (for Dec 2007, …)
  • 9. 9 Multiplicative Model: Sales = T*S*C*R Additive Model: Sales = T+S+C+R WBSEDCL Energy Sales (MU) - April 2004 to Nov 2007 700 750 800 850 900 950 1000 1050 1100 1150 1200 Apr-04 Jul-04O ct-04 Jan-05Apr-05 Jul-05O ct-05 Jan-06Apr-06 Jul-06O ct-06Jan-07Apr-07 Jul-07O ct-07
  • 10. 10 WBSEDCL Energy Sales (MU) - April 2004 to Nov 2007 700 750 800 850 900 950 1000 1050 1100 1150 1200Apr-04 Jul-04O ct-04 Jan-05Apr-05 Jul-05O ct-05 Jan-06Apr-06 Jul-06O ct-06Jan-07Apr-07 Jul-07O ct-07
  • 11. 11 Seasonal Index 0.85 0.90 0.95 1.00 1.05 1.10 Apr May Jun Jul Aug Sep Oct Nov Dec Jan Feb Mar
  • 12. 12 Deseasonalized Data Apr 2004 - Nov 2007 800.00 850.00 900.00 950.00 1000.00 1050.00 1100.00 1150.00Apr-04 Jul-04O ct-04Jan-05Apr-05 Jul-05O ct-05Jan-06Apr-06 Jul-06O ct-06Jan-07Apr-07 Jul-07O ct-07
  • 13. 13 Cyclical Component (May 2004 - Oct 2007) 0.920 0.940 0.960 0.980 1.000 1.020 1.040 1.060 1.080M ay-04Aug-04Nov-04Feb-05M ay-05Aug-05Nov-05Feb-06M ay-06Aug-06Nov-06Feb-07M ay-07Aug-07
  • 14. 14 Multiplicative Model: Sales = T*S*C*R APE = Absolute Percentage Error MAPE= Mean Absolute Percentage Error
  • 15. 15 Additive Model: Sales = T+S+C+R Sales in current period = a1*time + (b1*Jan+ b2*Feb + … b12*Dec)+ (c1*Sales last period) + Error
  • 16. 16
  • 17. 17 Additive Model: Sales = T+S+C+R Sales = 2.83*Time + [258.14(If Month is Jan) + 238.02*(If Month is Feb) + 290.90*(If Month is Mar) + 161.15*(If Month is Apr) + 309.87*(If Month is May) + 271.00*(If Month is Jun) + 335.06*(If Month is Jul) + 291.76*(If Month is Aug) + 309.07(If Month is Sep) + 311.58*(If Month is Oct)+ 269.76*(If Month is Nov) + 319.74*(If Month is Dec)] + 0.64*(Prev Month Sale)
  • 19. 19 Moving Averages & Exponential Smoothing • Exponential Smoothing • Holt’s Exponential Smoothing • Holt-Winters Exponential Smoothing
  • 21. 21 Exponential Smoothing for Forecasts 700.00 800.00 900.00 1000.00 1100.00 1200.00 1300.00 Apr-05 Jun-05 Aug-05 Oct-05 Dec-05 Feb-06 Apr-06 Jun-06 Aug-06 Oct-06 Dec-06 Feb-07 Apr-07 Jun-07 Aug-07 Oct-07 Energy Sales (MU) Simple EWS EWS Holt EWS Winters
  • 23. 23 Forecasting with Various Averages: Exponential Smoothing 9-month Sales 17 19 21 23 25 27 29 31 33 Jan Feb Mar Apr May June Jul Aug Sep Month Sales
  • 24. 24 Forecasting with Various Averages: Exponential Smoothing 0.8 Month Sales All Prev. Period average Last Period Moving Average (3 month) Exponen tial Moving Average (w= ) Jan 21 Feb 23 21.00 21 21.00 Mar 21 22.00 23 22.60 Apr 20 21.67 21 21.67 21.32 May 21 21.25 20 21.33 20.26 June 19 21.20 21 20.67 20.85 Jul 28 20.83 19 20.00 19.37 Aug 32 21.86 28 22.67 26.27 Sep 26 23.13 32 26.33 30.85 Oct ?? 23.44 26 28.67 26.97
  • 25. 25 Exponential Smoothing • A weighted moving average – Weights decline exponentially – Most recent observation weighted most • Used for smoothing and forecasting (one period into the future)
  • 26. 26 Exponential Smoothing • Weight (smoothing coefficient) is W – Range from 0 to 1 – Smaller W gives better smoothing (smoothing out unwanted cyclical and noise components), – Larger W forecasts better (continued)
  • 27. 27 Exponential Smoothing: Method 11 YE = ,)1( 1−−+= iii EWWYE for i = 2, 3, 4, … Ei = weighted average of actual obs Yi and its forecast Ei-1 = forecast for next period (i+1) Weights: w, w*(1-w), w*(1-w)^2, w*(1-w)^3, w*(1-w)^4, … Yn, Yn-1, Yn-2, Yn-3, Yn-4, …
  • 28. 28 EWS or EMA Weights decline fast: w, w*(1-w), w*(1-w)^2, w*(1-w)^3, w*(1-w)^4, … 0.1 0.2 0.5 0.8 0.9 Weight = W Weight = W Weight = W Weight = W Weight = W 0.100 0.200 0.500 0.800 0.900 0.090 0.160 0.250 0.160 0.090 0.081 0.128 0.125 0.032 0.009 0.073 0.102 0.063 0.006 0.001 0.066 0.082 0.031 0.001 0.000 0.059 0.066 0.016 0.000 0.000 0.053 0.052 0.008 0.000 0.000 0.048 0.042 0.004 0.000 0.000 0.043 0.034 0.002 0.000 0.000 0.039 0.027 0.001 0.000 0.000 0.035 0.021 0.000 0.000 0.000 … … … … … Weight W = 0.5 0.000 0.100 0.200 0.300 0.400 0.500 0.600 1 2 3 4 5 6 7 8 9 10 11 Observation No. Weight
  • 29. 29
  • 30. 30 Sales vs. Smoothed Sales • Fluctuations have been smoothed • NOTE: the smoothed value in this case is generally a little low, since the trend is upward sloping and the weighting factor is only .2 0 10 20 30 40 50 60 1 2 3 4 5 6 7 8 9 10 Time Period Sales Sales Smoothed
  • 32. 32 Exponential Smoothing: Holt’s Method Initial Values: L1 = Y1, T1 = 0 ****************** Preliminary forecast of Y for next period (t+1): Lt = a*Yt + (1-a)*(Lt-1+Tt-1) for t = 2, 3, 4, … Correction Factor of “slope”: Tt = b*(Lt - Lt-1) + (1-b)*Tt-1 for t = 2, 3, 4, … Modified forecast of Y for next period (t+1): Ft = (Lt + Tt)
  • 33. 33 Exponential Smoothing: Holt Winters Method Initial Values: St = Yt/Average(Y1:Ys), t=1,2,…,s, Ls = Ys/Ss, Ts = [Average(Ys+1:Y2s) – Average(Y1:Ys) ] /s
  • 34. 34 Exponential Smoothing: Holt Winters Method 1. Preliminary forecast of deseasonalized Y for (t+1) Lt = a*(Yt /St-s) + (1-a)*(Lt-1+Tt-1) for t = s+1, … 2. Correction Factor of “slope” to add to preliminary forecast of deseasonalized Y for (t+1) : Tt = b*(Lt - Lt-1) + (1-b)*Tt-1 for t = s+1, … 3. Modified Forecast of deseasonalized Y for (t+1): (Lt + Tt) 4. Correction Factor of “seasonality” (will be used s periods later) : St = c*(Yt /Lt) + (1-c)*St-s, t=s+1, … 5. Final forecast of seasonal Y for (t+1): Ft = (Lt + Tt)*St+1-s
  • 37. 37 Comparing Forecasts by Various Methods
  • 39. Exponential Moving Average (special type of EWS) 39 for 20-Period EMA, 0.0952(approx) of current period value is considered and for 50-Period EMA, 0.0392(approx) of the current value is considered. Formula: EMA(current) = Price(current)x Multiplier +(1- Multiplier) x EMA(previous) Exact Weight or Multiplier= 2/(n+1)