This thesis studies the performance, performance persistence, survival and flow of Commodity Trading Advisors, also known as CTAs or Managed Futures Funds. One of the main contributions of this thesis is the novel classification of CTA strategies. This is
obtained by hand-collecting information frequently by directly contacting the funds in
the database. I thus identify two main trading styles: Systematic and Discretionary
CTAs which are the main focus of this thesis. I further separate Systematic CTAs
into trend-followers with differing trading horizon. This novel dataset allows me to reconsider
many hitherto studied issues in the CTA space with an application to these
sub-strategies.
The first section investigates the differences in mortality between Systematic and
Discretionary CTAs, over the longest horizon than of any in the literature. A detailed
survival analysis over the full range of CTA strategies is provided. Systematic CTAs
have a higher median survival than Discretionary CTAs, 12 vs. 8 years. I hand collect
information on reasons for exit from the database. I propose new filters that will better
identify real failures among funds in the graveyard database. Separating graveyard
funds into real failure I re-examine the attrition rate of CTAs. The real failure rate
is 11.1%, lower than the average yearly attrition rate of 17.3% of CTAs. The effect of
various covariates including several downside risk measures is investigated in predicting
CTA failure. Controlling for performance, HWM, minimum investment, fund age and
lockup, funds with higher downside risk measures have a higher hazard rate. Compared
to other downside risk measures, the volatility of returns is less able to predict failure.
Funds that receive larger inflows are able to survive longer than funds that do not. Large Systematic CTAs have the highest probability of survival.
The second part studies the performance and performance persistence of Systematic
and Discretionary CTAs. Controlling for biases, after fees the average CTA is able to
add value. These results are strongest for large Systematic CTAs. I extend the sevenfactor
model of Fung-Hsieh (2004a) and find that this model is better able to explain the
returns of Systematic rather than Discretionary CTAs. I find three structural breaks in
the risk loadings of CTAs different to hedge fund breaks: September 1998, March 2003
and July 2007. Using these breaks I show that systematic CTAs were able to deliver
significant alpha in every sub-period. I also find evidence of significant performance persistence.
However, these findings are heavily contingent on the strategy followed: the
persistence of Discretionary CTAs is driven by small funds whereas large funds drive the
performance persistence of Systematic funds. These results have important implications
for institutional investors who face capital allocation constraints. They also suggest that
contrary to the previous findings, the CTA industry does not appear to be heading towards
zero alpha.
The final section looks at the relationship between fund-flows and performance. Investors
chase past performance, the fund- flow -performance is significant and concave for
some strategies. Although there is some long-term performance persistence of Systematic
funds with the highest inflows, there is no smart money effect in the CTA literature.
I find no evidence of capacity constraints among Systematic CTAs. Investors are thus
not able to smartly allocate funds to future best performers and take full advantage of
the liquidity that CTAs offer.Open Acces
Is data on this page outdated, violates copyrights or anything else? Report the problem now and we will take corresponding actions after reviewing your request.