R= α + β ×〖MRK〗+ s ×〖SMB〗+ h ×〖HML〗+ p ×〖MOM〗+ e
where α, β, s, h, p, e are switching ( every coefficient and the variance). Alpha is the risk-adjusted performance in the two different regimes.
I have successfully estimated the model with fixed transition probabilities, and the result are sensible. I also want to estimate this model with time-varying transition probabilities, where the transitions is explained by the following two equations:
P= ϕ(d_1∆(CLI){2})
Q= ϕ(d_2∆(CLI){2})
where ϕ(.) is the cumulative normal distribution function. The transitions is explained by the 2 month lagged Composite Leading Indicator.
First i what to do this in an univariate setting, then in a multivariate setting where i have 3 equations (3 investments objectives).
This is done in Kosowski´s paper "Do mutual funds perform when it matters most to investors? US Mutual Fund Performance and Risk in Recessions and Expansions". The paper can be found on this link: http://papers.ssrn.com/sol3/papers.cfm? ... _id=926971
The intuition is to analyze whether mutual funds perform different in recessions and in expansions. Kosowski conclude that mutual funds perform better in recessions than in expansions.
I want to do a similar analysis in my master thesis. First of all, I am wondering if these estimations are possible in RATS, and if someone could help me a bit on the way? At the moment I am focusing on the univariate model ( value weighed portfolio of all funds in my database), but I´m a bit stuck when it comes to the coding of the the time-varying transition probabilities.
Appriciate all the help i can get