Probability and Statistics Seminar

30/04/2014, 11:30 — 12:30 — Room P3.10, Mathematics Building
Maria Kulikova, CEMAT, Instituto Superior Técnico, Universidade de Lisboa
Estimating Adaptive Market Efficiency Using the Kalman Filter
This paper addresses the adaptive market hypothesis (AMH), which
suggests that market efficiency is not a stable property, but
rather that it evolves with time. The test of evolving efficiency
(TEE) investigates the efficiency of a particular market by using a
multi-factor model with time-varying coefficients and GARCH errors.
The model is a variant of the stochastic GARCH in Mean (GARCH-M)
proposed in 1990, which tests for market efficiency in an absolute
sense, i.e. by assuming that market efficiency is unchanged over
time. To resolve this problem, the TEE extends all previous tests
and provides a mechanism for observing the market learning process
by estimating the changes in market efficiency over time. Both
stochastic GARCH-M and TEE models are estimated using Kalman
filtering techniques. The contribution of this paper is
two-fold:
- we explain in detail the quasi-maximum likelihood estimation
(QMLE) procedure based on the standard Kalman filter applied to the
stochastic GARCH-M and TEE models;
- we estimate the changes in the level of market efficiency in
three markets over a period that includes the financial markets
crisis of 2007/2008.
The three markets are specifically chosen to reflect a developed
(London LSE), mature emerging (Johannesburg JSE) and immature
emerging market (Nairobi NSE) perspective. Our empirical study
suggests that, in spite of the financial crisis, all three markets
maintained their pre-crisis level of weak-form efficiency.


