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Index Funds Explained

By Jane Leung, CFA, iShares Asset Allocation Strategist Indexing strategies have been around for decades, but many investors still don’t fully understand what a powerful tool they can be when constructing a portfolio. Indexing serves as a cost-effective way to potentially achieve long-term goals. From pensions and defined-contribution plans, to individuals and their financial advisors, all types of investors can gain access to broad market opportunities that indexing offers. The first index funds were created in the 1970s, and their popularity has steadily increased to this day. In fact, investment into index strategies has continued to grow even as actively managed mutual funds have seen outflows. Click to enlarge What is an index? Think about a stock index as “the market.” An equity index provides exposure to a relatively large number of stocks that represent a particular market. And there are different kinds of indexes to choose from. Some broadly cover the markets, for example the S&P 500 or the Russell 2000. An index may represent only large-cap stocks or only small-caps, or both. Some indexes cover international markets or specific sectors, such as financial companies or U.S. technology. The same holds true for bond indexes, if you’re looking for income. In summary, if you are buying an index fund, you are effectively investing in the market. How stock indexes fit in a portfolio When thinking about the mix of assets in your portfolio, consider the risks that you are willing to take over a particular time period to realize your goals. For example, if you’re hoping for an early retirement or are saving to send your young child to college someday, you will likely need to have a core allocation to stocks over the long term. What does core mean? It effectively means long-term “buy and hold” positions in your portfolio. Why stocks? Because the value of money erodes over time as inflation drives prices higher and pushes down the purchasing power of your dollars. To put that in perspective, a dollar earned in 2000 would now be worth 74 cents, and a dollar from 1980 amounts to just 35 cents today, according to the U.S. Bureau of Labor Statistics CPI Inflation Calculator . On their own, stocks historically carry more market risk than cash and bonds. In the short term, stock prices can be volatile. But in return for this increased risk, there is the potential for a higher return. But which stocks are the best to own over a long period of time? It’s difficult even for the pros to know exactly which stocks to buy when. Here’s where the beauty of stock indexes come in. Exchange traded funds (ETFs) and index mutual funds can be an effective way to buy the market in a low-cost, tax efficient manner and help you keep more of what you earn. Portfolio construction is a lot like building a house. You need a strong foundation or else your house will fall over. Index funds can serve as the concrete blocks of your portfolio foundation so that your investment plan can stand the test of time. Questions to ask The quality of the index composition and the fund manager who runs it play crucial roles in determining your overall performance. In addition, the structure of the funds you choose can significantly affect your portfolio’s tax efficiency and ability to sell when you want to. When evaluating index fund managers, consider these questions: What trading strategies do they use to maneuver in changing markets? How tax efficient are these products? What’s the quality of the benchmark the fund seeks to track, and how does it compare to others? There are many tools to consider in portfolio construction and asset allocation, but having a core of index strategies can be instrumental to potentially achieving long-term portfolio growth and the outcomes you desire. This post originally appeared on the BlackRock Blog.

Forecasting Returns: Simple Is Not Simplistic

“It is far better to foresee even without certainty than not to foresee at all.” -Henri Poincaré 1 Another year, another body blow delivered by the market to “cheap” investments. One popular definition of cheap (i.e., value) has now underperformed growth on a total return basis for six of the last nine years. Can we blame the investor who is considering throwing in the towel, dropping to the canvas, and taking a 10 count on value strategies? Is it now time to leave the ring, sell value, and pick up the growth gloves, or is a better option to stay in the ring and buy even cheaper cheap assets? To make this important determination, a reliable expected returns model is a good referee. The choice of model is important. After all, a model’s forecasted return for an asset class is only as good as its structure, assumptions, and inputs allow it to be. In this article, we compare three models. Each can be classified as simple in contrast to the quite complex models used by many institutional investors. One of the three is the model used by Research Affiliates, which although simple has performed well, not only in terms of making long-term asset class forecasts, but in combining undervalued asset classes to build alpha-generating portfolios. This latter consideration is a prime attribute of a successful model. The Rational Return Expectation Let’s begin our analysis with the return we should rationally expect from the investments we make. Whether an investor practices top-down asset allocation or bottom-up security selection, investing is about nothing more than securing cash flows at a reasonable price. After all, the price of an asset is simply the sum of its discounted cash flows, which can be affected by two forces: 1) changes in the cash flows and/or 2) changes in the discount rate. If the cash flows and discount rate remain constant over the holding period, the asset’s value will remain the same throughout its life as on the day it was purchased. Therefore, it is a change in the cash flows and/or the discount rate that ultimately drives an asset’s realized return over time, and the possibility of such changes that drives an asset’s expected return over time. As mentioned in the introduction, the implementer of a value strategy would have experienced a long string of annual negative returns over the past several years. Figure 1 illustrates quite vividly the disappointing returns associated with a U.S. equity value strategy compared with a U.S. equity growth strategy since 2007. Click to enlarge Although this period of underperformance may be disheartening for many value investors, the precepts of finding, and then investing in, undervalued assets will, tautologically, 2 be rewarded with outperformance in the long run. The question then becomes, does “cheap” mean undervalued? To aid in answering this question, a variety of expected return models are available in the marketplace, including the model on the Research Affiliates website. 3 From the first day we published our long-term expected returns on the site, we have received questions from clients and peers on the efficacy of our model. The question usually posed is: “What’s the R 2 of your expected return model for [insert favorite asset class here]?” 4 Granted, it seems like a pretty obvious question, but we would argue it is actually not all that relevant. A better question, and the one we address here, is how our model compares with other commonly used models. Because investors need some method or modeling system to estimate forward returns, the issue is not just a matter of how “good” a single model is, but also how it compares to available alternatives; simply improving on the alternatives can be quite beneficial. A Comparison of Expected Return Models The first model is a simple rearview mirror investment approach in which we assume returns for the next 10 years will equal the realized returns of the previous 10 years. Although this is a very simple model, it also happens to be the way that many investors behave. The second model assumes that in the long run all assets should have the same Sharpe ratio, and calculates expected returns based on the realized volatility of each asset. The third model is the Research Affiliates model, as described in the methodology documents on our website. For the comparison, we’ll use expected and realized returns for a set of 16 core asset classes, over the period 1971-2005. Asset returns are included in the analysis as they historically became available. 5 All returns are real returns. Model One . Figure 2 is created using the first model. It compares the 10-year forecast, which is based on the past, to the subsequent 10-year return. On the x axis, 10-year expected returns for each asset class are grouped into nine buckets. Each blue bar represents a 2% band of expected return in a range from −4% to 14%. The height of the blue bars represents the median subsequent 10-year annualized return for the assets in that bucket. The 10-year realized return is calculated using rolling 10-year periods, month by month, starting in 1971. The orange diamonds and gray dots represent the best and worst subsequent returns, respectively, for each bucket. Click to enlarge The first model clearly underestimates the returns of assets that have performed poorly in the past, and overestimates the returns of assets that have recently performed well. For example, the actual median return for assets with a forecasted return between −2% and 0% was an amazing 11.6% a year! This pattern of bad forecasting is consistent across the range of forecasted returns. Although common sense argues that past is not prologue, using past returns to set future return expectations is the norm for many practitioners who attempt to “fix” the problem by using a very long time span. But let’s consider the half-century stock market return at the end of 1999 that was north of 13%, or 9.2% net of inflation. Many investors did expect future returns of this magnitude to continue! But because 4.1% of that outsized return was a direct consequence of the dividend yield tumbling from 8% to 1.2%, the real return for stocks was a much more modest 5.1%. Model Two . Figure 3 shows the results of the second model, which assumes a constant Sharpe ratio for all assets. In this case, we assume a Sharpe ratio equal to 0.3. This model performs better than the historical returns model. The median realized return grows as the expected return grows, however, the long-term forecasted returns are constrained on both the upper and lower ends of the forecast range (i.e., no forecasted returns less than 0% nor greater than 12% are generated). Negative returns in this model are impossible to get without a very negative real risk-free rate, and by definition, large expected returns are not possible without very high volatility. Click to enlarge Model Three. Let us now turn to the Research Affiliates model. Figure 4 shows our 10-year forecasted returns 7 for the 16 core asset classes compared to their actual subsequent 10-year returns. The trend of rising expectations and rising subsequent returns is what we should expect from a model, although it’s not perfect. Click to enlarge As Figure 4 shows, when our return expectations have been less than 2%, realized returns have often been higher than expected. Although we were apparently overly bearish, our return forecasts were well within the bounds of best and worst realized returns. It is also worth mentioning that market valuation levels have been generally rising, and yields falling, since 1971, so it is possible that our forecasts were correct, net of the (very long) secular trend in valuation levels. For forecasted returns higher than 2%, the median return for each bucket is in line with expectations, with the gap between the minimum and maximum returns becoming smaller as the expected return gets larger. It’s important to recognize our expected returns are based on yield, a contrarian signal which echoes our investment belief that the largest and most persistent active investment opportunity is long-horizon mean reversion. Investing using a yield-based signal does not come without its challenges. One big challenge is that a yield signal is a valuation signal that does not come with a timing signal. Because the yield is signaling an asset is attractive today does not mean it will not continue to get more attractive. If the asset’s price falls further, increasing the long-term return outlook, unrealized losses in the portfolio can be uncomfortable. This discomfort is not due to dollars actually lost, but by the sickening feeling that accompanies downside volatility. As American investor and writer Howard Marks has said, “The possibility of permanent loss is the risk I worry about.” We agree. Volatility should not be confused with risk. The permanent loss of capital, 8 which happens when investors succumb to fearful thoughts and thus sell at inopportune times, is the investor’s true risk. Putting It All Together The primary purpose of an expected return model is to classify what we know about assets in an economically intuitive framework for the purpose of building portfolios . Or said a different way, a model’s value is in the collection of forecasts it encompasses – that is, the system itself – and not in the individual forecasts. Figure 5 shows the results of an equally weighted portfolio using our forecasts. In this case the median realized returns line up very well with expectations, and the dispersion is smaller than that observed in Figure 4 for the individual asset classes. Are our expectations perfect? Absolutely not! Is our methodology a crystal ball for the future? No way! Can there be a ton of variability in our forecast returns versus realized returns? Most certainly, yes! But instead of lamenting these uncertainties, we believe there is value in measuring them. Click to enlarge For a visual representation, Figure 6 shows our expected return for the commodities asset class along with the variability (unexpected return) around the expectation. This variability could be due to changes in the shape of future term structures that differ from the past; faster or slower reversion of spot prices to expected means; or a plethora of other unknown idiosyncratic criteria. Click to enlarge Risk & Portfolio Methodology document 10 on our website describes an approach to constructing portfolios that incorporates the variability around each return expectation. A Simple Forecasting System Can Win the Round Jason Zweig noted in his commentary to The Intelligent Investor that “as [Ben] Graham liked to say, in the short run the market is a voting machine, but in the long run it is a weighing machine.” 11 We concur. We are not interested in attempting to navigate short-term price fluctuations and the random chaos that causes them. We seek instead to discern an asset’s currently unacknowledged investment heft and the likelihood that the market will recognize this value over the subsequent decade. We are long-term investors. Asset classes with higher long-term expected returns are generally unloved and overlooked for quite some time before their fortunes reverse. Uncovering value does not require a complex model. We find that a simple, straightforward returns-modeling system for constructing multi-asset portfolios works quite well. We have chosen to stay in the ring for the long term, holding today’s undervalued and unloved asset classes, confident in the compelling opportunities signaled by the simple and straightforward metric of yield. Endnotes 1. Poincaré (1913, p. 10). 2. If it fails to eventually outperform, it’s not undervalued! 3. http://www.researchaffiliates.com/assetallocation . 4. Although measuring the R 2 of our models is possible, the result is not very useful because samples overlap over long-term horizons. Take U.S. equities for which data are readily available since the late 1800s, roughly 150 years. We analyze 10-year returns, calculated monthly. As a result, we have only 15 unique samples. Any regression using monthly data points for 10-year returns will show misrepresented R 2 values, because each data point shares 119 of its 120 months with the next data point. Going to non-overlapping returns means we don’t have enough samples for robust results. For example, imagine the same test for the Barclays U.S. Aggregate Bond Index, which started in 1976-four samples anyone? 5. Indices were added as data became available: 8/1971, Russell 2000; 12/1988, MSCI EAFE; 1/1990, Barclays Corporate High Yield; 1/1992, Barclays U.S. Treasury Long; 5/1992, Barclays U.S. Aggregate; 5/1992, JPMorgan EMBI+ (Hard Currency); 4/1994, Barclays U.S. Treasury 1-3yr; 1/1997, Bloomberg Commodity Index; 3/1997, JPMorgan ELMI+; 1/2001, Barclays U.S. Treasury TIPS; 7/2003, FTSE NAREIT. Analysis is monthly and ends in 2005, the most recent date for which 10-year subsequent returns can be calculated. 6. The range for each of the bars in the chart should be interpreted as including the lower bound but not the upper bound of the range. For example, the range −2% to 0% includes returns from, and including, −2% up to, but not including, 0%. This standard also applies to the charts in Figures 3-5. 7. These forecasted returns represent return expectations that our methodology would have delivered in past decades. The core elements of the methodology were first described by Arnott and Von Germeten (1983); thus, the methodology is not a data-mining exercise of fitting past market returns. 8. Marks (2013, p. 45). 9. The 4% to 6% bucket is an outlier here; however, this result only occurred in 13 months of the entire 34-year period. 10. http://www.researchaffiliates.com/Production%20content%20library/AA-Asset-Class-Risk.pdf?print=1 . 11. Graham (2006, p. 477). References Arnott, Robert, and James Von Germeten. 1983. ” Systematic Asset Allocation .” Financial Analysts Journal, vol. 39, no. 6 (November/December): 31-38. Graham, Benjamin. 2006 (1973). The Intelligent Investor-Fourth Revised Edition, with new commentary by Jason Zweig. New York: HarperCollins Publisher. Marks, Howard. 2013. The Most Important Thing Illuminated. New York: Columbia University Press. Poincaré, Henri. 1913. The Foundations of Science. New York City and Garrison, NY: The Science Press. This article was originally published on researchaffiliates.com by Jim Masturzo . Disclaimer: The statements, views and opinions expressed herein are those of the author and not necessarily those of Research Affiliates, LLC. Any such statements, views or opinions are subject to change without notice. Nothing contained herein is an offer or sale of securities or derivatives and is not investment advice. Any specific reference or link to securities or derivatives on this website are not those of the author.

How Sustainable Is The Nikkei Rebound? Japan ETFs In Focus

Japan’s key index, the Nikkei, ended in the positive territory for the first time this year on Wednesday. The Nikkei gained 2.9%, or 496.67 points, on Wednesday, after losing nearly 1,800 points from the start of this year through Tuesday. Despite hitting the highest year-end close last year in 18 years, the benchmark was struggling to finish in the green from the start of this year following China-led global growth worries and the oil price slump. Reasons Behind the Rebound Better-than-expected trade data out of China, gains in the U.S. markets and decline in the yen’s value against major currencies emerged as the main reasons behind the rebound. The General Administration of Customs reported that Chinese exports declined 1.4% in December, narrower than a 6.8% drop in November and the markets’ estimate of an 8% decline. Though imports declined for the 14th consecutive month in December, the 7.6% drop in imports compared favorably with November’s plunge of 8.7% and the markets’ forecast of an 11.5% decline. Meanwhile, modest gains in the U.S. markets on Tuesday also boosted the Nikkei. A late rebound in Healthcare and Technology stocks helped the benchmarks to offset a further decline in oil prices. Also, the weaker yen helped the major exporters, including large-cap auto companies and tech companies, to attract investors, as it raised the possibility of an increase in export volumes. Will It Sustain? The sustainability of this rebound in the near term will largely depend on some key factors, including the condition of the Chinese economy, the movement of crude and the health of the Japanese economy. Though better-than-expected Chinese trade data boosted the markets on Wednesday, the decline in both exports and imports indicate that both global and domestic demand continued to remain weak. Meanwhile, the World Bank recently reduced its outlook for Chinese GDP growth in 2016 by 30 percentage points to 6.7%, below last year’s estimated growth rate of 6.9%. The bank also predicted that the economy may grow at a slower pace of 6.5% over the next two years. Separately, given the weak outlook for the Chinese economy, which is one of the leading importers of oil, and an already oversupplied market, there is little hope of a recovery in oil prices. Crude is currently trading at a 12-year low, with every indication of a slide below $30 per barrel. In this scenario, the Japanese economic environment will play a key role in setting the course of the Nikkei in the coming months. Japan opted for several economic stimulus measures last year, which proved to be more effective than the steps taken by China and the eurozone. The economy rebounded strongly in the third quarter to register a GDP growth rate of 1%, as against the second quarter’s contraction of 0.5%. Meanwhile, the impact of recent modifications in the quantitative easing program by the Bank of Japan (BOJ) will also remain in focus. The bank opted for raising the Japanese government bonds’ (JGBs) average maturity from 7-10 years to 7-12 years, and announced that it will allocate 300 billion yen of assets annually in purchasing ETFs that seek to follow the JPX-Nikkei Index 400. Japan ETFs in Focus In this scenario, popular Japan ETFs and funds that closely track the performance of the Nikkei will remain on investors’ radar in the coming months. The Precidian MAXIS Nikkei 225 Index ETF (NYSEARCA: NKY ), which tracks the performance of the Nikkei 225 Index, returned nearly 9.4% last year. Meanwhile, the performance of other popular Japan ETFs will also remain in focus in the near term. In 2015, the iShares MSCI Japan ETF (NYSEARCA: EWJ ), the WisdomTree Japan Hedged Equity ETF (NYSEARCA: DXJ ) and the Deutsche X-trackers MSCI Japan Hedged Equity ETF (NYSEARCA: DBJP ) returned 8.9%, 3.3% and 4.5%, respectively. Original Post