Tag Archives: stocks

Quarterly Update: Portfolio Rebalancing – A Potentially Golden Opportunity

For a variety of reasons, gold is a widely held asset class within investment portfolios. Many investors include gold in their asset allocation mix for its perceived ability to act as both a diversifier and as a potential store of value in times of uncertainty; these perceptions contribute to the concept of gold as a “core holding” in many diversified portfolios. Indeed, with the notable exception of Warren Buffett, 1 some of the investment community’s most distinguished names currently maintain investments in gold 2 . Like any investment, gold is subject to rebalancing or reallocation when its value relative to other portfolio components shifts significantly. Examining quarterly data from the beginning of 1976 (the year that gold started trading freely in the United States) through the quarter ended March 31, 2016, suggests that gold is overvalued relative to historical price relationships with the major agricultural crops of corn, wheat, soybeans and sugar. 3 In fact, the gold/soybean ratio is nearly at its all-time high. At quarter end March 31, 2016, the gold/corn ratio, defined herein as the number of bushels of corn an investor could buy with the proceeds from selling one troy ounce of gold, was 351 bushels, versus a 39-year average value of 170 bushels. Gold investors attempting to maximize portfolio performance through disciplined quarterly or annual rebalancing, may want to consider adjusting their gold holdings in tandem with their existing or anticipated agricultural sector portfolio investment mix. For example, the historical data for the gold/corn ratio suggests that a mean reversion 4 from March 31, 2016 levels of 351 bushels to the 39-year mean value of approximately 170 bushels of corn for each ounce of gold (bu/oz), could benefit an investor rebalancing gold for corn within their portfolio. Click to enlarge As illustrated in the chart on page 1, at 351 bu/oz the gold/corn ratio is approximately 107% above its nearly four-decade average of 170 bu/oz. Hypothetically, if an investor sold gold and purchased corn at the current 351 bu/oz level, and the ratio subsequently retraced to its historical mean value of approximately 170 bu/oz, the investor would then be able to sell the corn and buy back 107% more gold than was originally sold, to make the temporary reallocation from gold into corn. The gold/corn ratio may have been within 6% of its all-time high at the end of Q1 2016, but both the gold/wheat and gold/soybean related ratios were also very near historic highs over the same time period. The gold/wheat ratio was within 3% of its all-time highest value, and the gold/soybean ratio was within 1%, or virtually at, its all-time high value. The gold/sugar ratio is 41% below its all-time high. Charts for the gold/wheat, gold/soybean, and gold/sugar ratios are shown below. Click to enlarge Click to enlarge The current availability of both futures contracts and futures-based exchange traded products for gold, corn, wheat, soybeans, and sugar make rebalancing the gold and agricultural components within a portfolio easier than ever before. Investors and advisors need to make an assessment of the relative value of gold versus their other portfolio constituents, including agriculture, and appropriately adjust their allocations to suit their individual investment needs and objectives. 1 “Why Warren Buffet t Hates Gold.” NASDAQ 15 Aug. 2013: Web. October 9th, 2014. 2 Based on the 13-F filings for holders of GLD, the SPDR Gold Trust, as of 3/31/16 and found using Bloomberg Professional, April 12th, 2016. 3 Analysis & corresponding charts were prepared by Teucrium Trading, LLC, using Bloomberg Professional, April 12th, 2016. All supporting detail available upon request. 4 Mean Reversion: A theory suggesting that prices and returns eventually move back towards the mean or average. This mean or average can be the historical average of the price or return or another relevant average such as the growth in the economy or the average return of an industry. Disclosure: I am/we are long I AM/WE ARE LONG CORN, WEAT, SOYB, CANE, TAGS. Business relationship disclosure: Sal Gilbertie is the Founder, President, and CIO of Teucrium Trading, LLC, the Sponsor of the Teucrium CORN Fund ETP (NYSE Ticker “CORN”) and other agricultural ETPs listed on the NYSE under the ticker symbols “WEAT” “SOYB” “CANE” and “TAGS.” Additional disclosure: I have held in the near past, and may purchase in the near future, shares of DGZ as a proxy for short gold against my long agricultural holdings of corn, wheat, soybeans and sugar.

Mitel to Acquire Polycom, Expand in Videoconferencing Market

Mergers and acquisitions (M&A) continue to take place in the seamless communications and collaboration segment leading to consolidation in the market. Recently, IP based integrated communications solutions provider Mitel Networks Corp. MITL has announced that it will acquire videoconferencing

A Better Way To Run Bootstrap Return Tests: Block Resampling

Developing confidence about a portfolio strategy’s track record (or throwing it onto the garbage heap), whether it’s your own design or a third party’s model, is a tricky but essential chore. There’s no single solution, but a critical piece of the analysis for estimating return and risk, including the potential for drawdowns and fat tails , is generating synthetic performance histories with a process called bootstrapping. The idea is based on simulating returns by drawing on actual results to see thousands of alternative histories to consider how the future may unfold. The dirty little secret in this corner of Monte Carlo analysis is that there’s more than one way to execute bootstrapping tests. To cut to the chase, block bootstrapping is a superior methodology for asset pricing because it factors in the reality that market returns exhibit autocorrelation. The bias for momentum – positive and negative – in the short run, in other words, can’t be ignored, as it is in standard bootstrapping. There’s a tendency for gains and losses to persist – bear and bull markets are the obvious examples, although shorter, less extreme runs of persistence also mark the historical record as well. Conventional bootstrapping ignores this fact by effectively assuming that returns are independently distributed. They’re not, which is old news. The empirical literature demonstrates rather convincingly a strong bias for autocorrelation in asset returns. Designing a robust bootstrapping test on historical performance demands that we integrate autocorrelation into the number crunching to minimize the potential for generating misleading results. The key point is recognizing that sampling historical returns for analysis should focus on multiple periods. Let’s assume that we’re looking at monthly performance data. A standard bootstrap would reshuffle the sequence of actual results and generate alternative return histories – randomly, based on monthly returns in isolation from one another. That would be fine if asset returns weren’t highly correlated in the short run. But as we know, positive and negative returns tend to persist for a stretch, sometimes in the extreme. The solution is sampling actual histories in blocks of time (in this case several months) to preserve the autocorrelation bias. The question is how to choose the length for the blocks, along with some other parameters. Much depends on the historical record, the frequency of the data, and the mandate for the analysis. There’s a fair amount of nuance here. Fortunately, R offers several practical solutions, including the meboot package (“Maximum Entropy Bootstrap for Time Series”). As an illustration, let’s use a couple of graphics to compare a standard bootstrap to a block bootstrap, based on monthly returns for the US stock market (S&P 500). To make this illustration clear in the charts, we’ll ignore the basic rules of bootstrapping and focus on a ridiculously short period: the 12 months through March 2016. If this was an actual test, I’d crunch the numbers as far back as history allows, which runs across decades. I’m also generating only ten synthetic return histories; in practice, it’s prudent to create thousands of data sets. But let’s dispense with common sense in exchange for an illustrative example. The first graph below reflects a standard bootstrap – resampling the historical record with replacement. The actual monthly returns for the S&P (red line) are shown in context with the resampled returns (light blue lines). As you can see, the resampled performances represent a random mix of results via reshuffling the sequence of actual monthly returns. The problem is that the tendency for autocorrelation is severed in this methodology. In other words, the bootstrap sample is too random – the returns are independent from one another. In reality, that’s not an accurate description of market behavior. The bottom line: modeling history through this lens could, and probably will, lead us astray as to what could happen in the future. Let’s now turn to block bootstrapping for a more realistic profile of market history. Note that the meboot package does most of the hard work here in choosing the length of the blocks. The details on the algorithm are outlined in the vignette. For now, let’s just look at the results. As you can see in the second chart below, the resampled returns resemble the actual performance history. It’s obvious that the synthetic performances aren’t perfectly random. Depending on the market under scrutiny and the goal of the analytics, we can adjust the degree of randomness. The key point is that we have a set of synthetic returns that are similar to, but don’t quite match, the actual data set. Note that no amount of financial engineering can completely wipe away uncertainty. The future can and probably will deliver surprises, for good and ill, no matter how clever our analytics. Nonetheless, bootstrapping historical data (or in-sample returns via backtests) can help separate the wheat from the chaff when looking into the rearview mirror as a preview of what lies ahead. But the details on how you run a bootstrap test are critical for developing comparatively high-confidence test results. In short, we can’t ignore a simple fact: market returns have an annoying habit of exhibiting non-random behavior.