Tag Archives: seeking

Goal-Oriented Investing

By Seth J. Masters How should investors assess the asset-allocation decisions they or their advisors make? In our view, the key benchmark is the investor’s own goals. The display below assesses the success of three plausible asset allocations for meeting the risk and return goals of three different hypothetical investors. Investor A wanted annualized returns greater than 5%, with no peak-to-trough drawdown deeper than 20%. Investor B targeted annualized returns greater than 7%, with no drawdown deeper than 30%. Investor C cared only about achieving a return greater than 7%, with no drawdown constraint at all. The display shows the share of all rolling 10-year periods from January 1976 to June 2015 in which each investor would have achieved his goals through each of three different mixes of global stocks and municipal bonds. The conservative (30% stock/70% bond) allocation would have most often achieved Investor A’s conservative goals, with his lower return objective and tighter drawdown limit. The moderate and growth-oriented portfolios, by contrast, would have repeatedly exceeded his drawdown constraint. The moderate (60/40) portfolio would have most often met Investor B’s goals. And the growth-oriented (80/20) portfolio would have had the greatest success rate in meeting Investor C’s goals. When risk isn’t an issue, stocks are the asset of choice. This display underscores the importance of matching a portfolio’s asset allocation to the investor’s return and risk objectives. Investors who don’t select an asset allocation that fits their objectives are likely to be disappointed. Of course, this illustration covers only simple return and drawdown goals. In most real-world situations, investors also need to take into account their expected cash flows, their tax situation, prevailing market conditions, and a host of other factors. And real-world investors can choose between more than two asset classes. But no matter how complex the objectives an investor seeks, or how diverse his or her asset allocation, we think one simple standard should apply: The asset allocation has to be designed around the investor’s objectives. If not, the investor is unlikely to be satisfied with the plan and unlikely to stick with it. The views expressed herein do not constitute research, investment advice or trade recommendations and do not necessarily represent the views of all AB portfolio-management teams. Seth Masters, Chief Investment Officer – Bernstein

Valuation Dashboard: Utilities – November 2015

Summary 3 key factors are reported across industries in Utilities. They give a valuation status of industries relative to their history. They give a reference for picking stocks in each industry. This article is part of a series giving a valuation dashboard by sector of companies in the S&P 500 index (NYSEARCA: SPY ). I follow up a certain number of fundamental factors for every sector, and compare them to historical averages. This article is going down at industry level in the GICS classification, and includes also mid and small cap companies. It covers Utilities. The choice of the fundamental ratios has been justified here and here . You can find in this article numbers that may be useful in a top-down approach. There is no analysis of individual stocks. A link to a list of individual stocks to consider is provided at the end. Methodology Three industry factors calculated by portfolio123 are extracted from the database: Price/Earnings (P/E), Price to sales (P/S), Return on Equity (ROE). They are compared with their own historical averages “Avg”. The difference is measured in percentage for valuation ratios and in absolute for ROE, and named “D-xxx” if xxx is the factor’s name (for example D-P/E for price/earnings). The industry factors are proprietary data from the platform. The calculation aims at eliminating extreme values and size biases, which is necessary when going out of a large cap universe. These factors are not representative of capital-weighted indices. They are useful as reference values for picking stocks in an industry, not for ETF investors. The price-to-cash-flow ratio used in my dashboards for other sectors has been eliminated here, because discontinuities and outliers make it often irrelevant in Utilities. Industry valuation table on 11/4/2015 The next table reports the 3 industry factors. For each factor, the next “Avg” column gives its average between January 1999 and October 2015, taken as an arbitrary reference of fair valuation. The next “D-xxx” column is the difference as explained above. So there are 3 columns for each ratio. P/E Avg D- P/E P/S Avg D- P/S ROE Avg D-ROE Electric Utilities 18.13 15.94 -13.74% 1.77 1.22 -45.08% 8.94 10.43 -1.49 Gas Utilities 21.8 17.24 -26.45% 1.46 0.97 -50.52% 10.34 11.49 -1.15 Multi-Utilities 19 16.59 -14.53% 1.67 0.95 -75.79% 10.22 9.48 0.74 Water Utilities 22.89 23.68 3.34% 4.7 3.94 -19.29% 3.5 7.96 -4.46 Ind.Power Prod. & Energy Traders* 34.92 34.9 -0.06% 3.33 4.16 19.95% -4.22 -5.15 0.93 * Averages since 2005 Valuation The following charts give an idea of the current status of industries relative to their historical average. In all cases, the higher the better. Price/Earnings: Price/Sales: Quality (ROE) Relative Momentum The next chart compares the price action of the SPDR Select Sector ETF (NYSEARCA: XLU ) with SPY (chart from freestockcharts.com). (click to enlarge) Conclusion Utilities have played their traditional defensive role during the correction in August, but XLU has slightly underperformed the broad market last 6 months. Looking at the valuation and quality charts above, only one industry looks attractive: Independent Power Producers and Energy Traders. Its industry P/E factor points to a fair pricing, and the 2 other factors are better than their historical averages. At the opposite, Electric and Gas Utilities look the less attractive, the 3 factors being worse than averages. However, there may be quality stocks at a reasonable price in any industry. To check them out, you can compare individual fundamental factors to the industry factors provided in the table. As an example, a list of stocks in Utilities beating their industry factors is provided on this page . If you want to stay informed of my updates, click the “Follow” tab at the top of this article. You can choose the “real-time” option if you want to be instantly notified.

3 Common Backtesting Traps With Easy Solutions

Backtests have become the weapon of choice for rationalizing various forms of tactical asset allocation, which has become increasingly popular as a risk-management tool since the 2008 crash. The hazards of backtesting – studying how a strategy performed in the past – are well known, which leads some folks to shun the concept entirely. But that’s going too far. In some respects, every investment plan owes a debt to some type of backtesting – even for a buy-and-hold strategy, which assumes that the future will deliver gains on par with what was earned in the past. The proper lesson is that designing robust backtests, which demands close attention to detail. Easier said than done, of course, in part because the pitfalls can be subtle. Here are three that routinely trip up the novice and perhaps even some experienced investors: The use of total return prices for technical signals; Failing to correct for look-ahead bias by not using lagged signals; and Overlooking the importance of neutral signals for computing backtest results. The good news is that these traps are easily avoided. But there’s a catch: you have to be aware of the hazards. With that in mind, let’s briefly review these backtesting snares with some simple examples. Total return data. Imagine that you’ve created what you think of as a winning investment strategy that’s based on two signals: a) the ratio for a set of short and long moving averages; b) the trailing return for a rolling x-day window. The results look encouraging, but the upbeat outcome may be an illusion if the calculations use total return prices. Why? Consider a mutual fund that’s unchanged on the day but dispenses a hefty distribution at the close of trading. Imagine that this fund is priced at $10 a share and it spits out a 50-cent-per-share payout. Although the underlying portfolio value was unchanged on the day the mutual fund’s price falls by 50 cents to $9.50 to compensate for the distribution. The net result for shareholders: their holdings in the fund remain unchanged on the day. The 50-cent-per-share drop is offset by a 50-cent distribution. In short, a net wash. It’s a routine affair in day-to-day market activity, but it’s a trap if you’re looking at a fund’s technical profile without adjusting for distributions. Let’s say that the 50-cent price decline pushes the fund into negative territory in terms of the short/long moving average ratio and trailing x-day return. On the surface, this looks like a sell signal when, in fact, it’s nothing of the sort since the fund’s portfolio value hasn’t changed. The solution is to use price data that strips out distributions. If you don’t make that adjustment, your backtests using technical signals are probably faulty. Keep in mind too that the total return price histories aren’t real in the sense that the prices have been retroactively adjusted down to compensate for dividends, capital gains, etc. In other words, total return prices weren’t available in real time through history. Ignoring this issue runs the risk that your backtests are telling lies. Lagged signals & avoid look-ahead bias. This is another common mistake that can turn a sow’s ear into pearls, if only on paper. There are many variations to this trap depending on the complexity of the strategy, but the basic form can be illustrated with a simple example. Take a strategy that issues a “sell” signal when price falls below an x-day moving average and a “buy” when price rises above that average. Let’s also assume that we’re using end-of-day closing prices. You test the strategy and discover that it delivers a strong performance through time. But you forget one small item: the end-of-day signals aren’t available until after the market closes. In other words, calculating returns for a real-world version of the strategy requires using lagged “buy” and “sell” signals. One solution: assume a one-day lag. A “sell” signal is issued at Monday’s close, which translates to assuming that security was sold at the following day’s close. How much difference will such a seemingly minor change make in a strategy’s results? A lot. Indeed, many strategies that look wonderful in backtests turn into dogs after correcting for look-ahead bias. Neutral signals. This is an especially subtle problem because it’s counterintuitive in some respects. The problem is when there’s a gray area with one or more trading signals. For instance, let’s say you’re using two signals to determine if the current climate for an asset is bullish or bearish. A “buy” is when both signals are bullish; a “sell” is when both are bearish. If there’s a split decision – one is bullish, the other bearish – the signal is neutral, which is to say that the previous signal holds until both signals indicate a decisive change, one way or the other. As an example, both signals issued a “buy” signal the first trading day of the month. Two weeks later one of the signals turns bearish but there’s no confirmation in the other signal, which continues to align with a bullish reading. The net result: we no longer have a “buy” signal, but there’s no “sell” signal either. In that case, the previous signal – a “buy” – remains in force until a “sell” signal arrives. Obvious? Well, sure, once we spell it out and are aware of the subtlety. But designing this nuance into the code can trip up a rookie. The solution: generate a historical record of “buy” and “sell” signals and monitor the net result via a “position” signal. A standard system is to generate a “1” for “buy”, “0” for netural, and “-1” for “sell” in the “position” data. By contrast, a common mistake is to only calculate the “buy” signals and assume that the absence of a “buy” is the equivalent of “sell”. Not necessarily, but that won’t be obvious unless you compute a separate set of “sell” and “neutral” signals. What’s the relevance? Results. A backtest that equates “neutral” with “buy” signals can and usually does dispense substantially different results vs. a test that recognizes the distinction. Okay, maybe you want to blur the lines for tactical reasons. That’s fine. The danger arises when the analyst doesn’t spot the difference in advance. These are hardly the only pitfalls in backtesting, but they’re relatively common – and easily avoided. The question is whether these quantitative stumbles have skewed results in some of the more influential backtests that have found a wide audience in recent years? The answer: unclear until (if) we can reproduce the research. Unfortunately, most of the backtests that make the rounds these days don’t provide the accompanying code. That’s one more reason why it’s essential to crunch the numbers directly before making substantial monetary commitments to a given strategy. As President Reagan famously advised, Trust but Verify. That’s a good policy for geopolitical negotiations and for backtesting investment strategies.