Time series
A set of observations made at ordered time-points.
The index set
Time points at which the process is defined
State space
set of values that the random variables Xt may take
Aims of time series
What is White Noise
Gaussian Stochastic process
All of its marginal distributions (any part of distribution) are Gaussian
What is Gaussian White Noise
If WN is also Gaussian
Are white noise shocks independent
White Noise shocks are only uncorrelated but not independent. Can have some dependents between absolute/squared shocks
Why is Gaussian WN is independent
Normally distributed random variables are uncorrelated if and only if they are independent
What is Random Walk
Xt=Xt-1+εt
Random walk with drift
Xt=a0+Xt-1+εt
Weak Stationarity
Strong stationarity
Joint distribution doesn’t depend on time For any consecutive m (from Z) and a lag h (from N) Xt1,…,Xtm and Xt1+h,…Xtm+h are identical
ACVF (AutoCoVariance Function)
γ(h)=Cov(Xt,Xt+h)
ACF (AutoCorrelation Function)
ρ(h)=Corr(Xt,Xt+h)
Properties of ACF and ACVF
What does it mean if an ACF or ACVF matrix is not positive semidefinite
Process is not stationary
What do ACF and ACVF measure
Degree of dependence among the values of a time series at different times
What is the general approach to Time Series Modelling
Classical decomposition model
Xt=mt+st+Ytmt = trend functionst = seasonal componentYt=zero-mean random noise component
What are deterministic component/s (signal) and what are stochastic component/s in the Classical decomposition model
mt and st are signalYt is noise
What should do if Var increases
Apply preliminary transformations e.g. Log
If models with trend, but no seasonality (Xt = mt + Yt) how estimate trend
Method 1: Trend estimation:a)Nonparametric: 1. Moving Average 2. Exponential smoothing b)Model based:Fitting a polynomial trendMethod 2: Trend elimination by differencing
Constant Mean Model (CMM)
Xt = m + Yt where m is a constant. Big problem is that assigned weights are equal