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Simple exponential smoothing
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FORECASTING USING R
Exponentially weighted forecasts
Rob Hyndman Author, forecast
Forecasting Using R
Simple exponential smoothing Forecasting Notation: yˆt+h|t = point forecast of yt+h given data y1 , ..., yt Forecast Equation: yˆt+h|t = αyt + α(1 − α)yt−1 + α(1 − α) yt−2 + ... where 0 ≤ α ≤ 1 2
Observation
α = 0.2
α = 0.4
α = 0.6
α = 0.8
yt yt−1
0.2
0.4
0.6
0.8
0.16
0.24
0.24
0.16
yt−2
0.128
0.144
0.096
0.032
yt−3 yt−4 yt−5
0.1024
0.0864
0.0384
0.0064
(0.2)(0.8)4
(0.4)(0.6)4
(0.6)(0.4)4
(0.8)(0.2)4
(0.2)(0.8)5
(0.4)(0.6)5
(0.6)(0.4)5
(0.8)(0.2)5
Forecasting Using R
Simple exponential smoothing Component form Forecast equation
yˆt+h|t = ℓt
Smoothing equation
ℓt = αyt + (1 − α)ℓt−1
●
ℓt is the level (or the smoothed value) of the series at time t
●
We choose α and ℓ0 by minimizing SSE: SSE =
T ! t=1
(yt − yˆt|t−1 )
2
Forecasting Using R
Example: oil production > oildata fc summary(fc) Forecast method: Simple exponential smoothing Model Information: Simple exponential smoothing Call: ses(y = oildata, h = 5) Smoothing parameters: alpha = 0.8339 Initial states: l = 446.5759 sigma:
28.12
*** Truncated due to space
Forecasting Using R
Example: oil production > autoplot(fc) + ylab("Oil (millions of tonnes)") + xlab("Year")
FORECASTING USING R
Let’s practice!
FORECASTING USING R
Exponential smoothing methods with trend
Forecasting Using R
Holt's linear trend Simple exponential smoothing Forecast
yˆt+h|t = ℓt
Level
ℓt = αyt + (1 − α)ℓt−1 Holt's linear trend
Forecast
yˆt+h|t = ℓt + hbt
Level
ℓt = αyt + (1 − α)(ℓt−1 + bt−1 )
Trend
bt = β ∗ (ℓt − ℓt−1 ) + (1 − β ∗ )bt−1
●
Two smoothing parameters α and
●
Choose α, β , ℓ0 , b0 to minimize SSE ∗
β ∗ (0≤ α, β ∗ ≤ 1)
Forecasting Using R
Holt's method in R > airpassengers %>% holt(h = 5) %>% autoplot
Forecasting Using R
Damped trend method Component form h
2
yˆt+h|t = ℓt + (φ + φ + · · · + φ )bt
ℓt = αyt + (1 − α)(ℓt−1 + φbt−1 ) bt = β (ℓt − ℓt−1 ) + (1 − β )φbt−1 ∗
∗
●
Damping parameter 0 < φ < 1
●
If φ = 1 , identical to Holt's linear trend
●
Short-run forecasts trended, long-run forecasts constant
Forecasting Using R
Example: Air passengers > fc1 fc2 autoplot(airpassengers) + xlab("Year") + ylab("millions") + autolayer(fc1, series="Linear trend") + autolayer(fc2, series="Damped trend")
FORECASTING USING R
Let’s practice!
FORECASTING USING R
Exponential smoothing methods with trend and seasonality
Forecasting Using R
Holt-Winters' additive method Holt-Winters additive method
●
= seasonal component from final year of data
●
Smoothing parameters:
●
m = period of seasonality (e.g. m = 4 for quarterly data)
●
seasonal component averages zero
Forecasting Using R
Holt-Winters' multiplicative method Holt-Winters multiplicative method
●
= seasonal component from final year of data
●
Smoothing parameters:
●
m = period of seasonality (e.g. m = 4 for quarterly data)
●
seasonal component averages one
Forecasting Using R
Example: Visitor Nights > aust fc1 fc2
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