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Cointegrating Processes

Tendency of 2 variables (that are theoretically at equilibrium) to be related to each other

2 processes that are integrated of order 1, but \(\exists\) linear combination of the 2 variables that is stationary.

If there is divergence, it will only be temporary, as there is bound to be error correction

The coefficient associated with the 2 variables will be non-zero

Usually happens with highly connected variables

If there are \(n\) cointegrating variables, then there can be

  • \([1, n-1]\) independent cointegrating relationships (not lesser or greater than this range)
  • \([1, n]\) error correction relationships

eg:

  • Demand and Supply for a commodity
  • US interest rate and UAE interest rate
    • US is leading market
    • UAE is following market
  • Dubai and Sharjah rent
  • GCC stock markets

Consider \(x, z\) which are both \(I(1)\) processes; \(x_t\) and \(z_t\) are cointegrated processes \(\iff u_t\) is stationary process,

\[ \begin{aligned} z_t &= \alpha_1 x + u_t & \text{(Long-Term Specification)} \\ \implies u_t &= z_t - \alpha_1 x_t & \text{(Short-Term Specification)} \\ z_t - z_{t-1} &= \textcolor{hotpink}{-}\alpha_D(z_{t-1} - \alpha_1 x_{t-1}) + v_t \\ \Delta z_t &= \textcolor{hotpink}{-}\alpha_D(u_{t-1}) + v_t \\ & \text{if } x \text{ also has correcting tendancy,} \\ \implies \Delta x_t &= \textcolor{orange}{+} \alpha_G(u_{t-1}) + w_t \end{aligned} \]
  • \(\alpha_D\)
    • Speed of adjustment parameter, or error correction coefficient
    • \(\alpha_D \in (0, 1)\)
  • \(u_t=\) Disequilibrium error/Cointegration residual

Parts

  • Attractor/Leader
  • Attracted/Follower

Correlation vs Co-integration

Co-integration \(\ \not \!\!\!\!\! \iff\) Correlation

Correlation Co-Integration
Co-movement
Duration
short-term long-term

Drunk Couple and Dog

Last Updated: 2024-05-12 ; Contributors: AhmedThahir

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