Author Archives: Scalper1

The 60/40 Portfolio Is Dead; Here Is Its Replacement

The following is a proposal I put together for a new client: Click to enlarge As you can see, we do things a little differently around here. Traditional stocks make up less than 40% of the portfolio, with the rest sitting in non-correlated assets outside of the stock market. We invest in everything from options-writing funds to medical accounts receivables and everything in between. The result is that we get most of the safety you would expect from a 60/40 stock/bond portfolio but without the loss of expected return. Our goal is to give you stock-like returns with the risk profile of a blended portfolio. Why Invest in Alternatives? You probably have a good grasp of why diversification is important. Throwing out the financial jargon, it essentially boils down to not putting all of your eggs in one basket. But it also gets a lot more sophisticated than that. Many investors feel that they have adequate diversification because their assets are spread across several stocks or mutual funds. And to an extent, they are right. Owning multiple stocks reduces the risk of downside from any single position. But there is also a major problem with this: Correlation. If Apple (NASDAQ: AAPL ) and Microsoft (NASDAQ: MSFT ) stock prices move together in lockstep, you’re not really getting much in the way of diversification by owning both. And in a real bear market, virtually all stocks drop together. True diversification means owning assets that do not move together. Investment A can go up, down or sideways, and it should have little or no impact on Investment B. This is where the beauty of an alternative portfolio comes into play. We can achieve “stock like” returns in the range of 7%-10% per year without the volatility that comes with stocks. Why the 60/40 Portfolio is Dead Alternative assets weren’t particularly popular in 1980. There is a reason for that. Back then, traditional bonds offered a respectable return. A blended 60/40 portfolio of stocks and bonds offered a solid expected return. Flash forward to present day. At current bond yields, investors will be lucky to get a 2% return in bonds. And compounding the situation, stocks are also expensive by historical measures and priced to deliver sub-par returns. Click to enlarge Accepting a traditional asset allocation is accepting disappointing returns in the years ahead. If you want better performance, we need to look elsewhere. Introducing the New 60/40 Portfolio Sizemore Capital Management custom builds portfolios based on the client’s preferences and eligibility. The following is a sample allocation: Click to enlarge With the market looking overpriced and expected to deliver below-average returns, we need better alternatives. And thankfully, we have them. The following represent Sizemore Capital Management’s expected returns of the assorted asset classes in our model: Click to enlarge We should be clear that these are only estimates. Realized returns will vary and may be significantly higher or lower. But based on current valuations and historical performance, we consider these estimates reasonable. We’re Not Alone While ordinary investors have traditionally invested in stocks, bonds and CDs, wealthy investors and institutions have always had a broader allocation. Consider the case of the Harvard University endowment fund. As of 2015, the Harvard endowment fund had only 3% of its funds in stocks. It has another 18% in private equity and 12% in real estate. The rest is spread across everything from timberland to absolute returns hedge funds. Let’s stop and ask an obvious question: If it’s good for trustees of Harvard, would it not also be good for you? Source: Harvard Endowment Allocation Not all of the alternative investments discussed will be appropriate for all investors. But we believe strongly that every investor can benefit from a proper allocation to alternative investments. Disclaimer: This article is for informational purposes only and should not be considered specific investment advice or as a solicitation to buy or sell any securities. Sizemore Capital personnel and clients will often have an interest in the securities mentioned. There is risk in any investment in traded securities, and all Sizemore Capital investment strategies have the possibility of loss. Past performance is no guarantee of future results. Original Post

Portfolio Analysis In R: Part VI | Risk-Contribution Analysis

Do you know where the risk in your portfolio is coming from? Well, of course, you do. After all, you designed the portfolio, and so the asset weights reflect the risk contribution. A 50% weighting in stocks translates into a 50% contribution to risk for the portfolio overall, right? That’s a reasonable first approximation, but it’s a crude estimate, and one that’s prone to error as market conditions change – particularly for a strategy that holds a mix of asset classes. For a precise profile of the relative contributions from each piece of the portfolio – an essential piece of intelligence for risk management – we’ll have to go deeper into the analytical toolkit. The reasoning for decomposing portfolio risk into its constituent parts is straightforward – the relationship of risk across assets is in constant flux through time. As a result, correlation and volatility are changing. The main takeaway: Your portfolio’s risk profile may differ from your assumptions, perhaps radically so at times. The only way to know if your estimates match reality is to routinely run the numbers and make periodic adjustments to the asset allocation when appropriate. An exaggerated example tells us why this facet or risk management is essential. Let’s say that you’ve designed a portfolio with a 10% allocation to emerging market stocks on the assumption that 10% of total portfolio risk will be driven by these assets. Because of shifting relationships with other assets, however, it turns out that the risk contribution from emerging markets rises to twice your assumption after three months – 20%. The problem is that this change might not be obvious without formally modeling the risk-contribution factor. Let’s dig into some details with a real-world example. As in previous installments in this series (see list of articles below), we’ll use our standard sample portfolio (unrebalanced in this case), which consists of 11 funds for testing a global mix of assets, spanning US and foreign stocks, bonds, REITs and commodities, based on the following target allocations: Calculating risk contribution requires building a covariance matrix and running matrix algebra calculations, but don’t worry – we can streamline the task with user-friendly functions in the PortfolioAnalytics package via calculations in ” R ” (here’s the code for generating the raw data that’s discussed below). For simplicity, we’ll use the conventional definition of risk-standard deviation, aka return volatility. In practice, we can apply other risk measures, such as value at risk, extreme tail loss, and other quantitative metrics. But in the example below, we’ll stick to standard deviation to illustrate the basic outline. As a preliminary step, here’s the risk contribution for the sample portfolio (defined above). Note that this is based on the daily data from 2004 through yesterday (January 11). It’s no surprise to find that the contributions generally align with the target allocations. For instance, the 30% weight for the US stocks (NYSEARCA: SPY ) compares with a risk contribution of roughly 33%, as shown in the chart below. But there are some deviations as well. Consider how real estate investment trusts (REITs) compare in terms of the target allocation versus the risk contribution. We initially allocated 5% to REITs (MUTF: VGSIX ), but it turns out that the risk contribution is twice as high at nearly 10%. Note too that the risk contribution is slightly negative for the allocation to Treasuries (NYSEARCA: IEF ). The negative number indicates the relatively strong degree of volatility reduction that this asset brings to the mix. As a result, the negative risk contribution means that increasing (lowering) the weight to IEF will lower (raise) the portfolio’s volatility. In other words, IEF’s unique role as a diversification agent is quite clear when we run the numbers for this portfolio. The problem with looking at risk contribution across long periods of time as a single data set is that the analysis suggests that this facet of the portfolio is static. In fact, risk contribution is constantly changing. The evolution is usually gradual, but it’s valuable to keep an eye on the changes through time in order to minimize the surprise factor vis-à-vis sudden shifts in the portfolio’s risk profile that may conflict with the investment goals, risk tolerance, etc. For a more realistic (dynamic) measure of risk contribution, we can monitor the ebb and flow based on rolling historical windows. For example, here’ how the risk contributions for the funds compare on a rolling one-year basis, as shown in the next chart below. Based on this history, we can see that the risk contributions are relatively well behaved through time. The allocation to US equities, for instance, has generated risk contributions ranging from the high-20% level up to around 40%. We may or may not find these results satisfactory, depending on the portfolio’s goals and our risk expectations. The key point here, however, is that we now have hard data on the historical relationship between the relative share of risk for each asset. What can we do with this information? There are several applications that may be productive. Let’s consider just one by focusing on the US equity holding (SPY) in terms of its rolling 1-year return versus its risk contribution (see chart below). As you see, there’s a moderately negative correlation between the two metrics. The relationship implies that there may be useful signals here that tell us that an asset allocation adjustment is timely, particularly when the risk contribution and trailing return move to relatively extreme levels simultaneously. Monitoring risk contribution doesn’t replace other risk-management tools – instead, it’s a compliment that enhances our overall risk-management process. It’s part of what is known as the risk budgeting process. Although conventional asset allocation focuses on the relative share of each holding’s capital contribution, there’s a strong case for monitoring portfolios through a risk lens as well. In fact, it’s reasonable to consider the possibilities via a risk allocation process versus a traditional capital allocation framework. Ultimately, it’s the risk exposures that matter for engineering return outcomes. That’s an intuitive point, of course, and one that’s been widely embraced. Using a risk-attribution toolkit allows us to refine the concept in order to maximize the associated benefits and minimize any unexpected results that can arise when relying on vague rules of thumb for managing risk. *** Previous articles in this series: Portfolio Analysis in R: Part I | A 60/40 US Stock/Bond Portfolio Portfolio Analysis in R: Part II | Analyzing A 60/40 Strategy Portfolio Analysis in R: Part III | Adding A Global Strategy Portfolio Analysis in R: Part IV | Enhancing A Global Strategy Portfolio Analysis in R: Part V | Risk Analysis Via Factors Tail-Risk Analysis In R: Part I

Obama Will Speed Self-Driving Car As Google Partners

The government is about to give self-driving cars a boost this week. And Alphabet (GOOGL) unit Google won’t go it alone with its self-driving car, a possibility that had rankled the auto industry, or even with just a sole partner. The federal government will announce efforts to speed the introduction of autonomous cars on Thursday, Reuters reports, citing government officials, adding that President Obama may discuss advanced transportation efforts