This paper investigates optimal trading strategies in a financial market with
multidimensional stock returns where the drift is an unobservable multivariate
Ornstein-Uhlenbeck process. Information about the drift is obtained by
observing stock returns and expert opinions. The latter provide unbiased
estimates on the current state of the drift at discrete points in time.
The optimal trading strategy of investors maximizing expected logarithmic
utility of terminal wealth depends on the filter which is the conditional
expectation of the drift given the available information. We state filtering
equations to describe its dynamics for different information settings. Between
expert opinions this is the Kalman filter. The conditional covariance matrices
of the filter follow ordinary differential equations of Riccati type. We rely
on basic theory about matrix Riccati equations to investigate their properties.
Firstly, we consider the asymptotic behaviour of the covariance matrices for an
increasing number of expert opinions on a finite time horizon. Secondly, we
state conditions for the convergence of the covariance matrices on an infinite
time horizon with regularly arriving expert opinions.
Finally, we derive the optimal trading strategy of an investor. The optimal
expected logarithmic utility of terminal wealth, the value function, is a
functional of the conditional covariance matrices. Hence, our analysis of the
covariance matrices allows us to deduce properties of the value function.Comment: Minor changes to earlier version, still 30 page