Tag Archives: function

Investing Beyond The Borders

By Charissa Cashin, Director Fund Product Management and Development – Principal Funds After World War II, the U.S. became the world’s undisputed economic leader. American investors looking for a wide range of opportunities needed to look no further than their own back yards. Investing outside the U.S. was seen as unnecessarily risky. But today, even with the Greece-triggered euro commotion and the China stock market turmoil, those who think international investing is too risky should keep the following in mind. In China, India, and Brazil alone, the growing middle classes have propelled these economies to the size of the industrialized “G7” countries. By 2050, these countries are predicted to make up nearly half of world output, far exceeding the G7. While America undoubtedly still has a wealth of innovative companies and market leaders, opportunities abroad are increasingly plentiful. And although international investing may not be for everyone and certainly involves some risk, ignoring the opportunities beyond our borders means passing up on the potential for additional growth. Markets outside the U.S. may offer some of the best investing opportunities available right now. Technology companies in Asia are great examples. Everyone thinks of Apple (NASDAQ: AAPL ) when they think of tech stocks, but what they don’t always realize is that a lot of its components are made overseas. Those manufacturers are making a lot of money, but they’re not as overexposed as Apple – which creates a buying opportunity. There are also good prospects for under-appreciated growth in Europe, which has a lot of global, export-oriented companies. And with the strengthening of the dollar, there may be more purchasing power for these products outside of Europe. Emerging markets may be another area of opportunity. After sub-par performance over the last few years, some of these markets may offer outstanding values. Active managers keep an eye open for values like these that can lean to uncommon buying opportunities. International investing is an important way to build diversification in your portfolio. That’s because international equities don’t always move in the same way as domestic equities. When international equities are up, for instance, domestic equities may be down – and vice versa. This kind of potential for low correlation can help reduce a portfolio’s overall volatility. Add to that the potential for growth available internationally, and you have some very good reasons for considering investments beyond the U.S. borders.

Eureka! A Valuation-Based Asset Allocation Strategy That Might Work

By Wesley R. Gray, Ph.D. We’ve had a few posts showing that asset allocation systems relying on market valuation indicators (e.g., Shiller CAPE ratios) as a timing signal may end up in disappointment… Nonetheless, we’ve continued on the quest to improve tactical asset allocation using market valuation data. The data speaks clearly when it comes to the association between valuations and long-term realized returns – high valuations are associated with low long-term realized returns. However, as Michael Kitces highlights, tactically allocating using valuation information is challenging . Moreover, there are arguments that the association between CAPE and LT returns may be more complex than was previously thought. In short, valuation-based asset allocation strategies haven’t been that exciting, but… The folks at Gestaltu inspired us with a unique twist on basic valuation-based timing methodologies: … we chose the cyclically adjusted earnings yield as the valuation metric, which is just the reciprocal of the Shiller PE. We then adjusted the yield value for the realized year-over-year inflation rate to find the real earnings yield. Finally, we used an ‘expanding window’ approach to find the percentile rank of the real earnings yield to eliminate as much lookahead bias as possible. Note that because we are using real earnings yield rather than nominal earnings yield, markets can get cheap or expensive in three ways: changes in inflation changes in earnings changes in price Gestaltu’s post used 1/CAPE as the valuation metric, or the “earnings yield,” as a baseline indicator; however, they “adjusted the yield value for the realized year-over-year (yoy) inflation rate” by subtracting the year-over-year inflation rate from the rate of 1/CAPE. To summarize, the metric looks as follows if the CAPE ratio is 20 and realized inflation (Inf) is 3%: Real Yield Spread Metric = (1/20)-3% = 2% Fairly simple. Strategy Background: We performed our own replication of the first two strategies from the post: Average Valuation-based asset allocation: Own S&P 500 when valuation < long-term average, otherwise hold cash. In other words, if last month's CAPE valuation is in the 50 percentile or higher, buy U.S. Treasury bills (Rf); otherwise stay in the market. 80th Percentile Valuation-based asset allocation: Own S&P 500 when valuation < 80th percentile, otherwise hold cash. In other words, if last month's CAPE valuation is in the 80 percentile or higher, buy U.S. Treasury bills (Rf); otherwise stay in the market. Some adjustments are applied in the replication: The Bureau of Labor Statistics (BLS) publishes the CPI on a monthly basis since 1913; however, the data is one-month lagged (possibly longer). For example, the CPI for January won't be released until February. So, when we subtract the year-over-year inflation rate from the rate of 1/CAPE, we do a 1-month lag to avoid look-ahead bias. We use the S&P 500 Total Return index as a buy-and-hold benchmark. Our back test period is from 1/1/1934 to 12/31/2014, while the article looks over the period from 1/1/1934 to 12/31/2012. The results are gross of any fees. All returns are total returns and include the reinvestment of distributions (e.g., dividends). Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Our Replication Results The first table shows the results from the Gestaltu post: The results are hypothetical, are NOT an indicator of future results, and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Our backtest results show similar CAGRs, but higher volatilities than the results from Gestaltu. This could be due to changes in experiment design. Overall, the "Abs Return 80%" strategy outperforms buy-and-hold, while the "Abs Return 50%" strategy underperforms buy-and-hold. We include a long-term moving average rule for reference (S&P 500 if above the 12-month MA, risk-free if below the 12-month MA). Summary statistics are below: (click to enlarge) The results are hypothetical, are NOT an indicator of future results, and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Bottom line: The system looks promising. Robustness Tests: Adjusting the Starting Point for the Look-Back Window Gestaltu set 1/1/1924 as the starting date, and then uses an expanding window as the look-back period. We investigate how changing the start date affects the results. The results shown are from 1/1/1934 to 12/31/2014. The table below shows the results of the "Abs Return 80%" strategy using different starting dates for the expanding window: 1924, 1900, and 1881. The starting date for the expanding window calculation can create marginal differences in the results. For example, the Sharpe ratios vary from 0.57 to 0.63. Overall, the results appear robust to the expanding look-back window start date. (click to enlarge) The results are hypothetical, are NOT an indicator of future results, and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Bottom line: The system looks promising. Robustness Tests: Rolling Look-Back Window In this section, we try a 10-year rolling look-back period calculation. For example, we measure the percent rank of CAPE on 12/31/2014 relative to the past 10 years (12/31/2004 to 12/31/2014); while an expanding window (results already shown above) would measure the percent rank of CAPE on 12/31/2014 relative to the whole time period (from the start date to 12/31/2014). The results below highlight that a rolling-window technique yields similar results to the expanding-window technique. (click to enlarge) The results are hypothetical, are NOT an indicator of future results, and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Bottom line: The system looks promising. Robustness Tests: Inflation-Adjusted P/E Ratio In this section, we use the old-fashioned price-to-earnings ratio in place of the CAPE ratio. We use a rolling 10-year window look-back method and adjust inflation with a 1-month lag. Full Sample Results: 1/1/1934 to 12/31/2014 Inflation-adjusted P/E strategies work better than simple Moving Average rules and buy-and-hold. They also work better than CAPE-based strategies. (click to enlarge) The results are hypothetical, are NOT an indicator of future results, and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Bottom line: The system looks promising. First-Half Results: 1/1/1934 to 12/31/1974 Inflation-adjusted P/E strategies work well in the first half. (click to enlarge) The results are hypothetical, are NOT an indicator of future results, and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Bottom line: The system looks promising. Second-Half Results: 1/1/1975 to 12/31/2014 Inflation-adjusted P/E strategies work well in the second half. (click to enlarge) The results are hypothetical, are NOT an indicator of future results, and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Bottom line: The system looks promising. Robustness Tests: Different Thresholds In this section, we look at different percentile thresholds to determine the timing signal. For example, the results are strong when the timing signal is based on the average or the 80th percentile, but what happens if we use different signals? We use a rolling 10-year window look-back method and adjust inflation with a 1-month lag. Full Sample: 1/1/1934 to 12/31/2014 Higher thresholds increase maximum drawdowns (relative to lower thresholds, such as the 50th and 80th percentiles). The results are better than pure buy-and-hold, but this does highlight a potential robustness issue. (click to enlarge) The results are hypothetical, are NOT an indicator of future results, and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Bottom line: The system may have robustness issues. Robustness Tests: Staggered Allocations In this robustness test, we vary holding percentages based on the percentile rank of earnings yield - realized inflation. For example, if last month's E/P - CPI is in the 12th percentile based on the past, then we allocate 12% to stock and 88% to T-bills. We use a rolling 10-year window look-back method and adjust inflation with a 1-month lag. Full Sample: 1/1/1934 to 12/31/2014 Staggered allocations strategies are better than buy-and-hold. (click to enlarge) The results are hypothetical, are NOT an indicator of future results, and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Bottom line: The system looks promising. Robustness Tests: Changing the Real Inflation Component of the Signal In the post, " Market Valuations based on CAPE - A Deeper Dive ", we take the 1/CAPE and subtract the inflation adjusted 10-year U.S. Treasury yield, so that we can examine how expensive the market is relative to real returns available via a bond alternative (a stock investor would prefer a higher spread, all else being equal). To summarize, the metric looks as follows if the CAPE ratio is 20, realized inflation (Inf) is 3%, and the 10-Year Treasury is 5%: Real 10-Year Spread Metric = (1/20)-(5-3)% ~ 3% Full Sample: 1/1/1934 to 12/31/2014 This new measure doesn't work - at all. Understanding why a seemingly small change in technique destroys the results is puzzling and worthy of more investigation... (click to enlarge) The results are hypothetical, and are NOT an indicator of future results, and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Bottom line: The system may have robustness issues. Conclusion After enduring years of frustration trying to identify a valuation-based asset allocation technique - that actually worked - I think the team at Gestaltu is on to an interesting concept. By simply looking at real spreads between equity valuations and realized inflation (high spreads are good for equity; low spreads are bad for equity), one can devise a timing rule that captures most of the upside, but protects on the downside. Of course, this is all historical data and could very well be an exercise in data mining. That said, the concept of buying equity assets when they have much higher yields than current inflation is intuitively appealing. We'll continue our investigations into the subject, but we wanted to give a quick view into some of our high-level research on the subject. Original Post

Fireside Markets Episode 09: Quantitative Value With Wesley Gray

In this episode of Fireside Markets, host James Osborne has an extended conversation with Dr. Wesley Gray, Executive Managing Member of Alpha Architect. The discussion centers around Gray’s book, Quantitative Value. We discuss value investing, efficient markets, the risks of high tracking error/active share strategies, data mining and much more. Items discussed in this episode include: Share this article with a colleague