Chang Shen
Relates closely to Production activities, social activities and
daily activities.
temperature
humidity
rainfall
wind
speed
meteorology
understanding
A Multivariate Time Series is n time series within the same time frame
After missing data imputataion
ADF test
where the \(y_{t-p}\) denotes \(i th\) lag of \(y\), \(y_{t}\) is the vector \(\{y_{1,t},\cdots,y_{k,t}\},\epsilon\) is a zero-mean error term has a variance \(\sigma^2\) and \(cov(\epsilon_i,\epsilon_j)=0, \forall i \neq j\),\(A_i\) is a time-invariant \(k\times k\)-matrix
Portmanteau-test
ARCH Lagrange-Multiplier test
Normality test
1. Split training set and testing set
2. Normalize the data
3. Define model
4.complie and fitting the model
VAR is a powerful algorithm but it has limitation since it only applicable to numeric variables.
Have to choose order
Require the stationary presumption (may need transformation)
easy to understand and train