Tag Archives: etfs

Investing Opportunities As Central Banks Diverge

Stocks rallied last week as investors looked past the tragic attacks in Paris and once again focused on central bank policy. In particular, investors celebrated the potential for more central bank divergence: tightening by the Federal Reserve (Fed), while the European Central Bank (ECB) pursues easing. In the U.S., investors now appear to be treating a December Fed rate hike as a sign of economic stability rather than as something to be feared. As such, investors were cheered last week by the October Fed meeting minutes , which implied that the central bank views the economy as strong enough to justify an initial rate hike, most likely in December. Meanwhile, European stocks continued to rally on hopes of more monetary stimulus, rather than signs of economic recovery. Investors got what they were looking for last week, with several ECB officials confirming the likelihood that the central bank will expand its quantitative easing (QE) program. As I wrote in my latest weekly commentary ” Cheering, Not Fearing, a Rate Hike? “, as these central banks diverge, there are several implications for investor positioning. Consider overweighting hedged European equities. A falling euro and an ECB likely to expand its monetary stimulus are both catalysts for Europ ean stocks . The one caveat: Given that further gains are partly predicated on a weaker currency, dollar-based investors should continue to consider currency-hedged vehicles . In the U.S., consider adopting a modest tilt toward large- and mega-cap stocks. At first blush, my preference for U.S. large-cap stocks seems counterintuitive, given expectations for a stronger dollar. Generally, a strong dollar is seen as more of a headwind for large caps, which have a greater exposure to international sales. However, this year has demonstrated how the relationship is more complex. Yes, a stronger dollar has proved a headwind for large-cap company earnings, but small caps have actually been underperforming, according to Bloomberg data. Part of the reason has to do with why the dollar is appreciating: rising real (after-inflation) interest rates. As data accessible via Bloomberg show, U.S. real 10-year rates are up roughly 60 basis points (0.6 percent) since the end of January. This, in turn, is having an impact on small-cap valuations, based on Bloomberg data. Through October, S&P 500 Index multiples actually rose a bit. However, the price-to-earnings ratio on the Russell 2000 Index of small-cap stocks contracted by around 2.5 percent. It should be noted that this is consistent with history. Looking forward, to the extent we see a gradual rise in real rates, higher real rates are likely to keep small-cap valuations under pressure. Finally, according to Bloomberg data, large- and mega-cap names also have the advantage of cheaper valuations relative to the broader market. This post originally appeared on the BlackRock Blog.

Bring More Data

Several months ago we posted an article called ” Bring Data ” where we showed the importance of having abundant data for system development and validation. This was further reinforced to us recently when someone actually brought us additional U.S. stock sector data. Previously, we only had Morningstar sector data that went back to 1992, which we used to construct our Dual Momentum Sector Rotation (DMSR) model. (S&P sector data also goes back to only the early 1990s.) DMSR was shown in my book as one example of other ways you might use dual momentum. When we were given equivalent Thompson Reuters U.S. stock sector data back to 1973, we immediately extended our DMSR back test to include this additional data. After incorporating the new data, DMSR still looked considerably more attractive than buying and holding the S&P 500 index. But one could argue that the performance of models using broad-based equity indexes, such as Global Equities Momentum (GEM), now looks better than DMSR. Here are the comparative performance figures from January 1974 through October 2105: GEM DMSR S&P 500 Average Annual Return 17.36 15.86 12.21 Standard Deviation 12.32 14.55 15.43 Sharpe Ratio 0.89 0.67 0.42 Maximum Drawdown -17.84 -33.96 -50.95 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. Please see our website’s Performance and Disclaimer pages for more information. Because the monthly correlation between GEM and DMSR is only 0.59, sector rotation can still have a useful but modest role to play in a diversified equities-oriented portfolio. But DMSR is not the best choice as a core portfolio holding. Sector rotation programs that use data no further back than the early 1990s to develop their models may be in for a rude awakening someday if future drawdowns are higher and returns are lower than they expect based on back testing with a limited amount of data. Along the same lines, there are also momentum-based portfolios popping up on the internet all the time now, some even labeled as “dual momentum,” that are modeled on the basis of only 10 or 15 years of ETF data. Momentum may be robust enough that future results won’t suffer much because of this. But those who think they are constructing optimal models this way are just fooling themselves. Overfitting modest amounts of data is one of the most pernicious problems in the development of investment models. Those who do this may argue that the markets change over time, so the best model parameters from years ago may not be as relevant as today’s best parameters. This may be true. However, what is also true is that today’s parameter values are also likely to be sub-optimal when moving forward in time. The following chart from my book, Dual Momentum Investing , shows what I mean: Chart courtesy of Tony Cooper The S&P 500 is highlighted in different colors for each 15 year period. You can see that the latest period, 1999-2013, looks different from the preceding period, 1984-1998. 1999-2013, in fact, looks more like the earlier 1969-1983 period. 1984-1998 is also different from its preceding period, 1969-1983 and similar to the earlier years 1954-1968. If you had used each 15-year period to develop your model, you would have had something unsuited for each of the next 15-year periods. You would likely be better off using all four periods to formulate a model rather than just the last 15-year period. The more data you use, the more likely you are to have a robust model that will hold up reasonably well in the future, even though it isn’t the best fit to any one particular period. The 12-month look back parameter we use for our GEM and ESGM dual momentum models was found to work well in 1937 by Cowles & Jones . It has been used extensively in momentum research since then and has held up well out-of-sample. But there is a lot more history than that to help give us more confidence in momentum. Let’s take a look at some of that now. We focus on stocks as our core asset since they have historically offered the highest risk premium to investors. U.S. stocks, in particular, have given investors the best long-run returns. Other assets can create a drag on long-run portfolio performance. They also lose some importance as diversifiers once you use a trend following overlay like absolute momentum to help attenuate your downside risk exposure. The longest back test on stock market momentum is by Geczy and Samonov (G&S). Their 2013 paper called ” 212 Years of Price Momentum: The World’s Longest Back Test 1801-2012 ” compared the top one-third to the bottom one-third of U.S. stocks sorted monthly by relative momentum. Over this entire sample period, the top equally weighted momentum stocks outperformed the bottom ones by 0.4% per month with a highly significant t-stat of 5.7. Prior to this study, momentum outperformance on U.S. stocks had been found significant back to 1926. G&S showed that stock momentum was also positive and statistically significant from 1801 to 1926. G&S also found that stock market momentum was remarkably consistent. In only 2 of the 21 decades from 1801 through 2012 did long-only momentum under perform buy-and- hold, and these were by just -1.2% and -0.7% annually. In all the other 19 decades, momentum outperformed buy-and-hold by an average of 3.8% annually. This year G&S came out with a new study called, ” 215 Years of Global Multi-Asset Momentum: 1800-2014: Equities, Sectors, Currencies, Bonds, Commodities, and Stocks .” Here G&S expanded their momentum study to cover six different asset classes, including bonds, stock sectors, and equity indices, which are the ones we use in our momentum models. [1] G&S demonstrated the outperformance of momentum inside and across all asset classes except commodities. Here is a chart from their paper showing the log cumulative equally weighted average of the 6 asset classes plus the cross asset momentum excess returns. The strongest momentum effect is in country equity indices, which had a long-only monthly excess return over buy-and-hold of 0.52% with a highly significant t-stat of 11.7, compared to 0.29% with a t-stat of 6.4 for individual U.S. stocks and 0.24% with a t-stat of 15.5 for all assets. G&S also show that long-only absolute (time series) momentum outperformed buy-and-hold by 0.15% per month with a t-stat of 11.2. For those who want to further their momentum education, I suggest you first read the seminal paper by Jegadeesh and Titman (1993) that started the modern momentum renaissance. Next, learn about absolute momentum from Moskowitz et al (2012) or Antonacci (2013). Then follow up with Geczy and Samonov (2015) to satisfy yourself as to the efficacy and robustness of momentum investing based on 215 years of empirical evidence. [1] Equity indexes are equally as good as individual stocks (or better, according to G&S) in capturing the momentum effect. Indexes are much easier to use and avoid the enormously high transaction costs associated with rebalancing momentum-based stock portfolios.

Lipper Fund Flows: Another Miss For Money Markets With $20.2 Billion Exit

By Patrick Keon The S&P 500 Index (+0.41%) and the Dow Jones Industrial Average (+0.20%) both recorded gains for the flows week. The overall positive performance by the indices for the week marked a significant turnaround from the performance at the start of the week; both indices retreated over 2.5% during the first two trading days. Then the markets rallied over the second half of the week: the S&P 500 was up 3.0% and the Dow appreciated 2.8%. Again, news and speculation about whether the Federal Reserve will raise interest rates in December dominated the market news during the week. There was sufficient economic data and public signals from individual Fed presidents for the market to take the view that the rate rise in December is becoming a foregone conclusion. Economic data released the prior week showed continued strength in the jobs market, with new unemployment claims remaining low and inflation starting to percolate as U.S. consumer prices rose in October. Both of these areas had been previously pointed to by Fed Chair Janet Yellen as key determinants in the Fed’s decision-making process. Four Fed presidents (New York’s William Dudley, St. Louis’s James Bullard, Richmond’s Jeffrey Lacker, and Cleveland’s Loretta Mester) publicly expressed during the week that December is the right time to start lifting rates. The near certainty of a rate increase was taken as a positive by week’s end and was seen as a strong sign the U.S. economy is continuing to improve. This past week’s net outflows for money market funds (-$20.2 billion) pushed their overall outflows for the year so far to $23.2 billion. The week’s activity in the group was varied; funds in Lipper’s Money Market Funds and Institutional Money Market Funds classifications had significant net outflows of $14.6 billion and $13.8 billion, respectively. Meanwhile, Institutional U.S. Government Money Market Funds and Institutional U.S. Treasury Money Market Funds took in $4.5 billion and $3.0 billion of net new money. Equity mutual funds (-$3.3 billion) were responsible for all the net outflows from the equity fund macro-group, while equity ETFs had positive flows of just over $1 billion. Mutual funds saw net outflows from both domestic equity (-$2.6 billion) and nondomestic equity (-$700 million) funds. Among ETFs, the PowerShares QQQ Trust ETF (NASDAQ: QQQ ) (+$693 million) and the United States Oil ETF (NYSEARCA: USO ) (+$373 million) experienced the two largest net inflows for the week. Similar to the equity funds, mutual funds were responsible for all the net outflows for taxable bond funds (-$820 million), while taxable bond ETFs saw their coffers grow $1.2 billion. Investors ran away from lower-quality mutual funds; Lipper’s High Yield Funds and Loan Participation Funds classifications had $1.0 billion and $234 million of net outflows for the week. The Core Bond Funds category paced the ETFs, with the group taking in over $930 million of net new money. Municipal bond mutual funds had net inflows of $263 million-for their seventh consecutive week of positive flows. Funds in Lipper’s national municipal bond fund classifications (+$251 million) accounted for the lion’s share of these positive flows.