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Introduction to Time Series Forecasting

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Title: Introduction to Time Series Forecasting


1
Introduction to Time Series Forecasting
  • Bernard Menezes
  • with inputs from
  • Kalam, Pankaj, Somsekhar, Timma

2
Time Series
  • A sequence of observations of a quantifiable
    phenomenon recorded in increasing order of time

3
Time Series - Examples
  • Stock price, Sensex
  • Exchange rate, interest rate, inflation rate,
    national GDP
  • Retail sales
  • Electric power consumption
  • Number of accident fatalities

4
Goals
  • To UNDERSTAND the observed series
  • To look into the future (by deducing from the
    observed patterns in the past)

5
Forecasting vs. Extrapolation
6
Error Measures
  • RMSE
  • MAE
  • MAPE
  • Max error

7
Patterns in the data
  • Trend (linear, quadratic, S-shaped, etc.)
  • Seasonality (by month or quarter of the year, day
    of the week or time of the day)
  • Cyclicity (fashions come and go notice the
    kinds of spectacle frames fashionable over the
    years)

8
Stationarity
  • Should we care?
  • Strict stationarity, covariance stationarity

9
Covariance, ACF, PACF
  • What do these tell us?

10
Series Decomposition
  • Many time series can be decomposed into following
    components
  • Trend (T) Non-periodic component of time series
  • Cyclical (C) Periodic component with period
    longer than seasonal period
  • Seasonal (S) Recurring pattern (periodic
    component).
  • Irregular (I) Residual after removing all three
    components above
  • Whats the point?

11
Some Models for Decomposition
  • Trend, seasonality and irregular component can
    combine in various ways such as
  • Model 1 T S I
  • Model 2 T (S I)
  • Model 3 T S I
  • The multiplicative model is more appropriate for
    demand sales

12
Cyclical Component?
  • Generally trend and the cyclical component are
    analyzed/estimated together for ease of model
    construction

13
Experiment 1 MAPEs for different models
14
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15
Experiment 2 Does Decomposition help?
  • indicates use of decomposition.

16
With and without Decomposition
17
With and without Decomposition (contd.)
18
Experiment 3 Which error measure do we use for
the decomposed series?
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23
Factoring expert advice
  • How many experts do we select?
  • Which of these is used for a particular point
    forecast?
  • How do we weigh the advice of the experts?
  • Do we dynamically change the above? How? Why?

24
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26
AR1
  • 0.5X(t-1)eps(t)

27
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28
AR1
  • 0.9X(t-1)eps(t)

29
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30
AR1
  • 0.2X(t-1)eps(t)

31
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32
AR2
  • 0.3X(t-1)0.5X(t-2)eps(t)

33
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34
MA1
  • 0.8eps(t-1)eps(t)

35
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