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In This List

The Trump Rally – One Year Later

Tuition Inflation: Indexing the Rising Cost of College

Support or Resistance for Europe?

A Study of the Classics – Part 1

Does Factor Investing Deserve More Attention in Hong Kong?

The Trump Rally – One Year Later

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Phillip Brzenk

Managing Director, Global Head of Multi-Asset Indices

S&P Dow Jones Indices

The results of the 2016 U.S. presidential election, which were widely considered surprising, had many market participants believing that the proposed economic policies of Donald Trump, “Trumponomics”, would be swiftly implemented.  During his campaign run, Trump called for tax cuts, reduced corporate regulations, increased foreign trade tariffs, and increased defense and infrastructure spending.[1]  Initial expectations held by many were that his policies would be a boon to the overall U.S. economy in the short term.  In particular, companies and industries most closely tied to the U.S. economy and economic proposals would reap the majority of the benefits.[2][3]

Given that we are at the one-year mark since the election, we wanted to see how things have played out since.  This will be the first installment in a series of posts that reviews performance since the 2016 U.S. election.

If the hypothesis is that companies most tied to the U.S. economy would benefit the most under the new presidential regime, we can test as such by forming two portfolios based on geographic revenue data.  The S&P 500® Focused U.S Revenue Exposure Index (Domestic Revenue Portfolio) comprises the top 25% of companies in the S&P 500 that receive the highest proportion of their total revenue from the U.S., while the S&P 500 Focused Foreign Revenue Exposure Index (Foreign Revenue Portfolio) holds the top 25% of companies most exposed to foreign economies.  With the creation of these portfolios, we are able to test the hypothesis by tracking their performance since the election relative to the S&P 500.

As projected, for the immediate months following the election, the Domestic Revenue Portfolio outperformed the Foreign Revenue Portfolio and the S&P 500 by a meaningful margin.  But as 2017 approached spring, a reversal occurred, and the foreign portfolio began to outperform the domestic portfolio—a trend that continued through the end of October 2017.  As of Oct. 31, 2017, the foreign portfolio had an excess return of 7.14% versus the S&P 500, while the domestic portfolio underperformed the S&P 500 by 7.31%—a difference of 14.45%.

To discover why this occurred, we first look at the potential impact that currency movements had on the portfolios.  Intuition would say that a portfolio focused on companies with revenues coming from the U.S. would have little direct, or indirect, exposure to foreign currency movements.  Conversely, a portfolio focused on companies with foreign revenues would be exposed to foreign currency movements as the companies translate foreign currency revenues back to USD.

The U.S. Dollar Index, which is designed to track the relative value of the U.S. dollar to a basket of other major world currencies, is overlaid on the performance chart (plotted to the secondary axis).  Conceivably reflecting the bullish views of the expected future growth of the U.S. economy, the index rose over 4% by the end of 2016.  By early 2017, the U.S. Dollar Index started to decline and trend downward through the end of October, in similar magnitude as the domestic portfolio.  The foreign portfolio saw relative performance versus the S&P 500 and the domestic portfolio rise as the U.S. dollar dropped in value.  The results, therefore, potentially indicate a positive relationship between the domestic portfolio and U.S. Dollar Index and a negative relationship between the foreign portfolio and the U.S. Dollar Index.

To further investigate the relationship between currency movements and portfolio performance, in the next blog we will look at the overall macroeconomic risks of the portfolios.

[1] https://www.nytimes.com/2016/08/09/us/politics/donald-trump-economy-speech.html

[2] http://www.imf.org/external/pubs/ft/weo/2017/update/01/

[3] https://www.nytimes.com/2016/11/10/business/dealbook/stock-markets-election.html

The posts on this blog are opinions, not advice. Please read our Disclaimers.

Tuition Inflation: Indexing the Rising Cost of College

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Jodie Gunzberg

Former Managing Director, Head of U.S. Equities

S&P Dow Jones Indices

Costs associated with college tuition and fees have far outpaced general U.S. inflation, so for individuals saving for college, the ability to accurately measure and potentially keep pace with tuition inflation is important. 
Recently, in this video, S&P Dow Jones Indices joined with Enduring Investments to discuss the newly launched S&P Target Tuition Inflation Index.  Below is a summary of the questions and answers discussed in the interview that may be interesting for college savers:
What are the economic underpinnings and thinking behind the strategy?
In designing a strategy and index to track college tuition inflation over time, it is important to understand how college tuition is set.  Colleges are producing a product just like any other business, but the product is education.  Just as in any business they have expenses and revenues so understanding what are driving those expenses and revenues is an important part of understanding how to build such an index.  On the expense side colleges have mostly labor costs, but they have a number of other things that are that go into creating the educational product, and collectively those things act like general inflation.  Though, on the revenue side, colleges have really two sorts of revenues – internal revenues and external revenues.  The internal revenues are government appropriations if it’s a public university, or the endowment returns if it’s a private university.  The external revenues come from college tuition.  So understanding how college tuition varies depending on how the appropriations or the endowment returns behave is where the rubber meets the road in terms of getting this index to target college tuition inflation.
How does the index design help capture the thesis behind the strategy?

Again, the key is in understanding the relationship on the revenue side between the  endowment returns and appropriations versus the tuition inflation growth.  Recognizing that there’s this large spread of tuition inflation that’s above the general inflation as measured by the CPI is the starting point.  Using the CPI as the base and measuring the driver of that spread can be done by knowing something about the relationship of the revenue components.  What the research behind the index shows is that tuition inflation is a function of the real return plus a break-even inflation, plus a corporate spread, minus an equity risk premium.  This combination has grown in-line with the tuition inflation that is inverse to the endowment or appropriation growth, so that’s the mix that make the mechanics work.

Source: S&P Dow Jones Indices. S&P Target Tuition Inflation Index Methodology. http://us.spindices.com/documents/methodologies/methodology-sp-target-tuition-inflation-index.pdf?force_download=true

How does the index data track tuition inflation compared to a more traditional 60/40 mix?

The 60/40 mix is really designed for optimal diversification in most risk-adjusted return portfolios, but the idea of a college liability is not taken into account in a 60/40 mix.  Since there is a relatively short time frame for college savings, the 60/40 mix may be very volatile, so at moments there is a high chance that tuition inflation is not met.  By moving to the S&P Target Tuition Inflation Index, the probability of tracking tuition inflation increases, and even more so the longer the holding period.

Hypothetically, the S&P Target Tuition Inflation Index is within 2% of the BLS College Tuition and Fees U.S. City Average Inflation more often than the 60-40 mix of stocks and bonds.

In which economic environments might the strategy track tuition inflation most closely?
The index design intends to track college tuition in many different economic environments.  Since any economic environment may be predominant when a child goes to college, it is important to understand that means that the index itself varies with the drivers of fundamental drivers of college tuition inflation.  When overall inflation is accelerating, and the stock market is falling, it is likely endowments aren’t doing very well, so the costs of the university are going up a little faster.  That is when the index is expected to also rise faster.  Conversely, if the stock market has been doing very well for a while, so that endowments are flush, and yet overall inflation is low, then college tuition may not be going up as much.  Therefore, the index may not go up as much either.  Again, the idea for success is for the index to perform over the long run in a comparable way to the college tuition inflation.

The posts on this blog are opinions, not advice. Please read our Disclaimers.

Support or Resistance for Europe?

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Hamish Preston

Head of U.S. Equities

S&P Dow Jones Indices

Subscribers to our European dashboard will know that October was a broadly positive month for the region’s equity markets; the S&P Europe 350 posted a 1.66% total return, while nearly every equity strategy in the region gained.  Additionally, the S&P Europe 350’s closing price level of 1,600 for October brought the benchmark to within touching distance of its record month-end close of 1655, set over a decade ago.

Most European market participants will view this news as cause for celebration, but technical analysts may not.  Exhibit 1 shows that some of the most substantial drawdowns in the S&P Europe 350 have come after the index ended the month above 1,600.  History therefore suggests that 1,600 may be a “resistance level”—the index has closed above this level on several occasions, but has not managed to stay above it for an extended period.

However, there are indications that the S&P Europe 350 may be better equipped at present to do just that.

Exhibit 2 below shows the historical sector weights in the S&P Europe 350.  Prior to the precipitous drawdowns at the start of the century, the information technology sector obtained a relatively large weight courtesy of its substantial returns (orange circle); in the 24 months ending in August 2001, it posted a 278% price return—235% higher than the average for the other sectors.  Six years later, the weight of the industrials sector (blue circle) grew in the two-year period leading up to the Global Financial Crisis as the sector posted a price return of 97%, 53% higher than the average for the other sectors. In other words, the period leading up to the previous highs was dominated by extreme performances in a few sectors.  With more exposure to these sectors, the S&P Europe 350 was more heavily affected when trends reversed.  In contrast, recent returns have not been driven by any specific part of the market (or at least not as much)—only 29% separated the best 24-month sector price return from the average of the rest of the market as of Oct. 31, 2017 (excluding real estate).

In contrast, price returns from October 2015 to October 2017 were not been driven by any specific part of the market (or at least not as much)—only 29% separates the best sector return from the average of the rest of the market (excluding real estate).

Although upcoming events may conspire against the entire market, if the S&P Europe 350 is able to maintain its current form without suffering from the drawdowns observed historically, perhaps we will come to view 1,600 as a new support for this index.

The posts on this blog are opinions, not advice. Please read our Disclaimers.

A Study of the Classics – Part 1

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Jamie Farmer

Former Chief Commercial Officer

S&P Dow Jones Indices

During a recent retreat to the Blue Ridge Mountains, I picked up a copy of Outside Magazine’s 40th Anniversary issue.  Nursing two fingers of bourbon, I paged through their feature on the seven most classic pieces of adventure gear.  Generally, it’s a great list.  Number 4, Ray-Ban Aviators?  Absolutely.  Number 7, Birkenstock sandals?  Yeah…no.  But then, I never was much of a fan of The Grateful Dead.

Being an index geek, I found myself ruminating on the classics of indexing (yes, I’ll concede that’s a little sad).  What, I pondered, were the seminal pieces of benchmark design, those major milestones in the evolution of the passive discipline?  I suspect more learned (and less rushed) experts would: a) find more than seven selections and b) most likely argue with my choices and omissions.  But this is my blog post, so…

Dow Jones Railroad Average (1884): Many often mistakenly credit the Dow Jones Industrial Average® as the first mainstream stock market index.  In fact, that honor falls to Charles Dow’s Railroad Average, created 12 years prior to the DJIA.   At the time, railroads dominated the corporate ranks and represented the natural subject for Dow’s first index of share price performance (though, in fact, 2 of the original 11 companies—Western Union and the Pacific Mail Steamship Company—were not railroads at all).  Price-weighted,—the only methodology realistically available to Mr. Dow at genesis—the Dow Jones Railroad Average was renamed the Dow Jones Transportation Average in 1970 to reflect the increasing diversity of its composition (airlines, marine, delivery services, etc.).

S&P 500® (1957): Originally launched in 1923 as the “Standard Composite Stock Price Index”—and tracking only 223 companies at inception—the S&P 500 reached its namesake component count in 1957, an advancement made possible by the application of computing power to the daily calculation.  The S&P 500 and its predecessors were capitalization-weighted (unlike the Dow Averages), so a company’s weight in the index is proportionate to its total value, not just to its stock price.  Until April 1988, the index held fixed sector allocations of 400 industrials, 20 transports, 40 utilities, and 40 financials.  Those counts were abandoned as, again, the landscape of listed U.S. companies evolved; today, the S&P 500 includes representation from all 11 GICS® sectors.  Most knowledgeable observers know that the S&P 500 comprises 500 large U.S. companies, not the 500 largest U.S. companies.  Maintained by the S&P Dow Jones Index Committee, the S&P 500 is the definitive benchmark for the large cap stock market and the standard against which market participants are most commonly measured.  As our SPIVA research repeatedly bears out, it’s a standard that most professional money managers fail to beat.

S&P GSCI (1991): While not the world’s first commodity index, the S&P GSCI was the first readily tradable commodity index and thus offered much greater utility.  Prior attempts at the indexation of price movements within the commodities market included less liquid futures contracts and spot commodity prices, which are generally inaccessible by the investing public.  Originally developed by Goldman Sachs (hence the “GS”), the S&P GSCI only includes the most liquid commodity futures and is weighted according to the global production of constituent commodities to ensure that influence aligns with economic significance.  In the nearly three decades since its launch, the flagship index—and its many sector, strategy, and enhanced progeny—has been the leading market barometer as market participants have increasingly accepted the diversification benefits of commodities.

To be continued…

The posts on this blog are opinions, not advice. Please read our Disclaimers.

Does Factor Investing Deserve More Attention in Hong Kong?

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Priscilla Luk

Managing Director, Global Research & Design, APAC

S&P Dow Jones Indices

Factor investing, which is also broadly referred to as smart beta, has gained popularity in the global asset management industry, especially in the exchange-traded funds segment.  Factor-based index-linked products are used as cost-effective tools to enhance return or reduce risk by increasing number of market participants in the U.S., with 20.9% of U.S. ETP assets represented by factor-based products as of June 2017.  In the Asia Pacific region, factor-based ETPs only accounted for 4.3% of regional ETP assets.  The adoption of factor-based products by market participants in the Hong Kong market has been far behind other Asian markets such as Australia and Japan.

Since the launch of the Hong Kong-Mainland Stock Connect programs, there has been a growing market demand for factor-based index-linked products for Hong Kong equities.  Due to the tight control on the Qualified Domestic Institutional Investor (QDII) quota, stock connect programs have become favorable channels for mainland Chinese asset managers to gain offshore diversification.  Exploiting the benefit of factor-based investing may help them to deliver better returns in their offshore portfolios.

The Hong Kong equity market reflects the local economy as well as mainland China’s economy, while Hong Kong’s exchange rate is pegged to the U.S. dollar and Hong Kong interest rates primarily follow the U.S. interest rate cycles.  This poses challenges to portfolio management for Hong Kong equities, especially when the Chinese and U.S. economic growth and inflation diverge.  It is doubtful whether the factor-based strategies, which are commonly used by market participants in foreign markets to enhance portfolio performance, behaved in similar ways as seen in other markets.

In our recently published research “How Smart Beta Strategies Work in the Hong Kong Market”, we examined the effectiveness of six well-known risk factors— size, value, low volatility, momentum, quality, and dividend— in the Hong Kong equity market and we observed, apart from small caps, that all of these factors delivered return alpha over the long term on an absolute and risk-adjusted basis, historically.[1]  The hypothetical portfolios for value and dividend delivered the highest excess returns, while those for low volatility and quality showed reduced volatility compared to the underlying benchmark.  The historical risk/return profile of the factor portfolios in Hong Kong broadly aligned with those in the U.S., apart from the small-cap factor.

Our macro regime analysis on the Hong Kong equity factor portfolios suggested that these portfolios are sensitive to the local equity market cycles and investor sentiment regimes.  The low volatility and quality portfolios tended to be most defensive in response to the market cycles and their performances were the least vulnerable to bearish investor sentiment.  In contrast, small-cap and momentum stocks were most cyclical across market cycles and they were most rewarded when investor sentiment was bullish on the equity market (see Exhibit 3). Because of the distinct cyclicality in factor performance, factor portfolios could also be potential tools for market participants to implement their active views on the Hong Kong equity market.

[1]   Based on the 50-stock hypothetical factor portfolios selected from the S&P Access Hong Kong Index universe, please see full report for details.  The S&P Access Hong Kong Index is designed to reflect the universe of Hong Kong-listed stocks available to Chinese mainland market participants through the Southbound Trading Segments of the Shanghai-Hong Kong Stock Connect and Shenzhen-Hong Kong Stock Connect Programs.

The posts on this blog are opinions, not advice. Please read our Disclaimers.