Will We Ever Kill The Bug?

There is something very attractive about vintage items that just won't die.

They just keep coming back. Same philosophy but better up-to-date technology.

It's not just cars. It's investment strategies, too.

Vintage strategies are often simple, easy to execute and provide amble 'out-of-sample' data. In other words one can see how they performed in real life years after they have been proposed. And like the VW bug, they are "safe" choices. Tried and true.

Can you imagine a 1965 VW running in the Autobahn? 
Although the essence counts for a lot, for the car to survive at today's highway speeds the tech needs to be up to date.

So let's take my favorite oldie and bring it up to speed: Harry Browne's Permanent Portfolio investment strategy.

From Investopedia:

… Browne believed that each of the aforementioned four asset classes would thrive in one of the four possible macroeconomic scenarios that exist.
So let's see how it has performed.

The original rules:
25% in a stock market Index (SP500)
25% in Treasuries.
25% in Gold.
25% in Cash or similar.




Not bad. Annual return is 7.1% and maximum draw-down comes in at 17.84% since 1992.

For a far more detailed analysis of the so called "PP" you can see Gestaltu's excellent "PP Shakedown" series as well as Scott's Investments analysis. There are many other articles and analysis that serve as inspiration to this article.


Building a new strategy.


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So let's update this strategy by using some recent tactics. All further rules assume monthly rebalance.

1. Volatility Targeting per Asset
If an asset exhibits historical volatility above a threshold, we cut it down in size as to reduce risk to the overall portfolio.


 

This decreases annual returns but also limits drawdown to under 9%. Overall, risk adjusted returns benefit. CarMDD is at 0.8.

2. Momentum
There's been a fair amount of talk about momentum. Let's try it. We will not limit our assets to just the few best. We are only trading four assets. Instead we will identify the worst performer. We will decrease funds invested in that asset and distribute those funds to the rest. So if gold underperforms all other assets, we will sell some gold, divide the proceeds in three and buy equal amounts of the SP550 index, Treasuries and Cash.

Let's try by pulling 15% of equity from the worst asset.


 

This seems to help. Annual return is up to 8.3% while draw-down comes in at a low and very respectable 7%.

3. Mean Reversion
What about mean reversion. Can we maybe try to sell shares of the best short-term performer and distribute the money to the others?


 

This marginally improves risk adjusted returns by further limiting draw-down to 6.78% while keeping annual returns almost the same. 

4. Timing
Let's use the good old simple average rule. If an asset's price is below its own 200-day simple moving average then we sell it. If it crosses up then we buy it. Trade only on the beginning of the month.


 

And to get things more interesting, let's use leverage up to 2x. That the portfolio can be invested from 0% all the way to 200%.



So now we are up to almost 12% annual returns with a drawdown of less than 13%.

What about over-fitting parameters. Let's run a permutation of all parameters (10,401). We will assume no leverage (1x).


The mean for the CarMaxDD is 0.772381 with a standard deviation of 0.216059.

Modifying the Asset base and using ETFs.

Finally let's include some 'newer' asset classes that were not easily accessible during the 80's.
First of all, you may notice that all three assets are less volatile assets, at least compared to the equity/commodities class.

Convertible Bonds lie somewhere between Bonds and Equities. They do carry a lower interest rate risk than straight bonds but also carry some equity-like risk. Foreign Bonds is a diversifier out of U.S. debt. Inflation protection Treasuries also carry some inflation (albeit, limited) protection from interest rate hikes.

So let's go ahead and backtest using these 7 ETFs. We will use all layers mentioned before, as well as 2x leverage.


 

Since there is a good chance of over-optimizing parameters we will go through a number of parameters to get a sense of robustness:

First, let's look at Annual Return and Drawdowns. Each dot is one combination of parameters. What we are interested in is the range of results.




Maximum drawdown is less than 12% while compound annual return comes in above 8%. Keep in mind that this system is designed for moderate growth with low volatility and risk. It is not meant to provide astonishing returns.

One more graph: Sortino Ratio and correlation to the S&P 500 index. Again we are looking for ballpark ranges.

Let me remind the reader that the Sortino Ratio is a risk adjusted metric similar to the sharpe ratio but only takes into account downside volatility. The correlation to the S&P 500 is important to many investors that already have active investments in equity. If the strategy is too correlated to the S&P 500 then it often does not fit into larger portfolios and could be replaced by the index.


 

The Sortino ration comes in above 1 while correlation to the S&P 500 index comes in between 0.005 and 0.25.

Trading

This strategy trades monthly. For the backtests the assumption is that one buys at the opening price of the second day of the month.

There'a plenty of ETFs to choose from. As a stock index proxy one can choose from a wide selection that includes SPY, IVV, VOO as well as VTI, SCHB. For treasuries one can use TLT. Gold can be traded through GLD or IAU. Finally, one of many options for cash is using SHY.


Conclusion:

It's always interesting to look to the past for ideas on strategy development. In building a core, capital preservation strategy one can go back to such strategies as Harry Browne's Permanent and Bridgwater's All-Weather Portfolio. The main feature of these portfolios is a price-agnostic view of the markets and basic protection by using simple asset and weight selection.

In addition, in their most basic form, they have proven themselves in true, decade long, out-of-sample testing.

So once the essence of the strategies are incorporated, there is no reason not to include more recent rebalancing practices that have been introduced by academia as well as quantitative research: Momentum, mean reversion, volatility targeting and the more controversial timing rules.

Four Asset Base case System:

The base case system uses only the 4 core assets and variable leverage.
The system has a compound annual return of 12% with a 13% drawdown since 1992.
Most importantly it has behaved well in recent market corrections.

Moving Forward – Expanded Assets

On top of these 'layers' we introduce three more assets that provide a slightly larger opportunity for diversification and a slight bias towards increasing rates. The corresponding ETFs are CWB, TIP and PCY.

Since 2007 the expanded strategy gave an annual return of 12% with a maximum drawdown of 6.74%. An impressive number, especially the drawdown, for a conservative investor.

Too optimistic? Running through a parameter's test we still come up with Sortino ratios between 1 and 1.8 and drawdowns below 12%.

Robustness

But is there a bias in the look-back of the Timing rule? Is the 200-day simple moving average chosen "after-the-fact"?

Well, because of the multiple 'layering', results seem robust in terms of picking look-back period. In other words, momentum and timing are, in some ways, similar in their effect. If an asset underperforms, it will go underweight using the momentum rule until it crosses its own average and then will be sold. So shifting through parameters in timing or momentum will have less effect than if they stood as single rules.

As for selection bias, keep in mind that the main 4 assets have been tested 'out-of-sample for some 20 years. The additional three assets, TIPS, Convertible Bonds and Foreign bonds are lower volatility assets that could provide an additional edge in the current environment and should not add excessive risk to the strategy.

Backtesting Bias

Backtesting a strategy does not mean that backtested returns guarantee future returns.
It does mean that one has thought about the strategy and detailed it enough as to create rules that keep an investor disciplined and protect him from his own emotions and the daily market noise.


StrategyCAGRMAXDDSharpeSince
PP B&H7%18%0.581992
Bug 412%13%0.711992
Bug 712%6.7%1.412007



 



 



 



 



 



 



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