Hi Pascal,
If the testing of different sector ETFs is not yet complete, I must ask: Would the robot's performance likely be enhanced if it traded ETFs that are expected to produce long-term excess returns in their own right? If not, then I guess you can skip the lengthy post below. But if so, I'll ask you to suspend your disbelief and consider an idea that occurred to me when I reflected on this fascinating thread. If you can backtest the idea readily, that would be the way to either refute it or validate it.
The overlay that I have in mind would add a contrarian, mean-reversion element to the robot's momentum-based approach. The combined methods would consider investor behavior across time -- from minutes to days to years -- but would require no change in the robot's design. The only change would be in the vehicles used.
Called SweetSpot, the overlay's real-time track record can be found
here. SweetSpot's premise and rationale are discussed in detail elsewhere at the same site, and in
a paper that was published last year (see the paper's abstract for a quick summary).
Like EV, SweetSpot looks at MF, but measures it annually instead of minute by minute. While EV's universe is constructed from the bottom up, SweetSpot's is top down, defined by the non-diversified funds that are available to retail investors. EV trades with the large players who move prices in the short term, while SweetSpot trades against all (mostly retail) investors at a time when they are likely to be making bad long-term trades.
An ideal backtest would look something like this:
1) The universe would include every sector that offers a representative, liquid ETF, and for which sufficient data are available.
2) Looking separately at EV data for 2007, 2008, 2009, 2010, and 2011, sum up each sector's calendar-year TEV, and rank the sectors for each year in ascending order (from most-negative annual MF to most-positive).
3) Beginning with the 2007 rankings, select the top five or six sectors -- the ones that investors essentially abandoned.
4) Adopt a positive long-term view of the selected sectors (defining "long term" as three years).
5) Generate robot signals for the 2007 selections in 2008, 2009, and 2010.
6) Go long on buy signals; stay long on neutral signals; go to cash on sell signals; go long on neutral signals. (Variations would be worth exploring, but don't go short under any circumstances.)
7) Repeat these steps for 2008 (the only other year when returns can be seen for the entire three-year period).
8) Repeat for 2009 (looking at returns in 2010, 2011, and YTD 2012); 2010 (looking at returns in 2011 and YTD 2012); and 2011 (looking at returns YTD 2012).
The trading strategy described in item #6 mimics one that options traders and others employ when they are long-term bullish on an investment while trading it using a short-term timing strategy that generates both buy and sell signals. They act on the buys and ignore the sells. Ernst Tanaka (among others, not including myself) can probably label this strategy and provide some insight.
If my thesis is correct:
- The backtest will show absolute and risk-adjusted robot returns that exceed those of the robot using any other vehicles you have tested. This result would be explained by the excess buy-and-hold returns of the selected sectors relative to buying and holding a broad-market-index ETF.
- The average buy-and-hold performance of the selected vehicles will become more robust over time. That is, Year Three will outperform Year Two; and Year Two will outperform Year One. This dynamic may be relevant when deciding which ETFs to trade. For example, if you wanted to limit 2012's trading vehicles to six ETFs, you would give preference to the ones added in 2010[!]. (Overlapping test periods would produce a "portfolio" of about 18 candidate ETFs at any given time. Portfolio changes would occur once a year when new sectors are added and old sectors from three years prior are dropped.)
The Short Side
If the long strategy shows promise, it would be worthwhile to test the short side as well. Short candidates would be the sectors with the strongest annual TEV, found at the bottom of each year's rankings. The strategy would be to go short on sell signals and ignore buys.
Unlike the long side, the short side hasn't been tested in real time. Previous backtesting (of short three-year SweetSpot trades) yielded negative returns, probably due to the market's long-term upward bias. That could change, however, when the short-term robot steps in.
My hope is that you can easily test these ideas using the EV universe and database. If they pass muster, I look forward to a fun thread.
Best,
Neil
Disclosure: I registered as an investment adviser in 2008 after trading SweetSpot privately for a small family office from 1998 to 2007. I don't actively market the program, but even if I did, I would not try to market a hands-off strategy like SweetSpot to this group. On the other hand, I did almost contact you about a year ago when the funny money was driving everyone batty. Do you remember posting that you would walk away from active trading if you could find a reliable yield of 5-7 percent above inflation? SweetSpot's long-term numbers are double that, and you would have heard from me except for the "lumpiness" of the returns. SweetSpot is not a coupon, but I do feel it is worth considering as a "Plan B" for any active trader who may decide that the time has come to move on.