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Investing For Retirement Using T. Rowe Price Mutual Funds

Summary T. Rowe Price offers a set of high-performing mutual funds which can be successfully used for construction of investment portfolios with good withdrawal rates. From January 2005 to December 2014, a T. Rowe Price portfolio with fixed allocation could produce a safe 5% annual withdrawal rate and 7.84% annual increase of the capital. Same portfolio with rebalancing at 25% deviation from the target allowed a safe 5% annual withdrawal rate and achieved 8.48% compound annual increase of the capital. Better performance could be achieved using adaptive asset allocation. Same portfolio could have produced a safe 15% annual withdrawal rate and 6.58% annual increase of the capital. The drawdowns of the portfolios are relatively small considering their high returns. This article belongs to a series of articles dedicated for investing in various mutual fund families. In previous articles, we reported our research on Fidelity and Vanguard mutual fund families. The current article does the same for T. Rowe Price family of mutual funds. Four mutual funds have been selected for investment. They are the following: T. Rowe Price U.S. Treasury Long-Term Bond Fund (MUTF: PRULX ) T. Rowe Price Health Sciences Fund (MUTF: PRHSX ) T. Rowe Price Media And Telecommunications Fund (MUTF: PRMTX ) T. Rowe Price Global Technology Fund (MUTF: PRGTX ) In this article, three different strategies will be considered: (1) Fixed asset allocation: The portfolio is initially invested 40% in the bond fund and 60% equally divided between the stock funds, without rebalancing. (2) Target asset allocation with rebalancing: The portfolio is initially invested 40% in the bond fund and 60% equally divided between the stock funds and is rebalanced when the allocation to any fund deviates by 25% from its target. (3) Momentum-based adaptive asset allocation: The portfolio is at all times invested 100% in only one fund. The switching, if necessary, is done monthly at closing of the last trading day of the month. All money is invested in the fund with the highest return over the previous 3 months. The data for the study were downloaded from Yahoo Finance on the Historical Prices menu for four tickers: PRULX, PRHSX, PRMTX, and PRGTX. We use the monthly price data from January 2005 to December 2014, adjusted for dividend payments. The paper is made up of two parts. In part I, we examine the performance of portfolios without any income withdrawal. In part II, we examine the performance of portfolios when income is extracted periodically from the accounts. Part I: Portfolios without withdrawals In Table 1, we show the results of the portfolios managed for 10 years, from January 2005 to December 2014. Table 1. Portfolios without withdrawals 2005-2014 Strategy Total increase% CAGR% Number trades MaxDD% Fixed-no rebalance 228.89 12.64 0 -28.82 Target-25% rebalance 247.01 13.25 4 -24.54 Adaptive 714.50 23.33 52 -11.57 The time evolution of the equity in the portfolios is shown in Figure 1. (click to enlarge) Figure 1. Equities of portfolios without withdrawals Source: This chart is based on Excel calculations using the adjusted monthly closing share prices of securities From Figure 1, it is apparent that the rate of increase of the adaptive portfolio is substantially greater than the rate of the fixed and target allocation portfolios. Part II: Portfolios with withdrawals Assume that we invest $1,000,000 for income in retirement. We plan to withdraw monthly a fixed percentage of the initial investment. That amount is increased by 2% annually in order to account for inflation. In Table 2, we show the results of the portfolios managed for 10 years, from January 2005 to December 2014. Money was withdrawn monthly at a 5% annual rate of the initial investment, plus a 2% inflation adjustment. Over the 10 years from January 2005 to December 2014, a total of $535,920 was withdrawn. Table 2. Portfolios with 5% annual withdrawal rate 2005-2014 Strategy Total increase% CAGR% Number trades MaxDD% Fixed-no rebalance 128.08 7.84 0 -30.71 Target-25% rebalance 127.68 8.48 4 -29.65 Adaptive 297.64 19.74 52 -14.08 The time evolution of the equity in the portfolios is shown in Figure 2. (click to enlarge) Figure 2. Equities of portfolios with 5% annual withdrawal rates Source: This chart is based on Excel calculations using the adjusted monthly closing share prices of securities To illustrate the effect of the withdrawal rates on the evolution of the capital, we report simulation results for two strategies: fixed target with rebalancing and momentum-based adaptive asset allocation. In Table 3, we report the results of simulations of the fixed target portfolio with the following withdrawal rates: 0%, 5%, 6%, 8%, and 10%. Table 3. Fixed Target Portfolios with rebalancing at 25% deviations for various annual withdrawal rates 2005-2014 Withdrawal rate % Total increase% CAGR% MaxDD% 0 247.00 13.25 -24.54 5 125.77 8.48 -29.65 6 95.96 6.96 -31.23 8 51.06 4.21 -34.16 10 1.32 0.13 -37.14 The time evolution of the equity in the portfolios is shown in Figure 3. (click to enlarge) Figure 3. Equities of fixed target portfolios with rebalancing at 25% deviation from targets and 5% annual withdrawal rates Source: This chart is based on Excel calculations using the adjusted monthly closing share prices of securities To illustrate the advantage of the adaptive allocation strategy and the effect of withdrawal rates on the evolution of the capital, we give in Table 4 the results of simulations for the following withdrawal rates: 0%, 5%, 10%, and 15%. Table 4. Adaptive Portfolios with various annual withdrawal rates 2005-2014 Withdrawal rate % Total increase% CAGR% MaxDD% 0 714.50 23.33 -11.57 5 506.07 19.74 -14.08 10 297.64 14.80 -19.05 15 89.21 6.58 -30.72 The time evolution of the equity in the portfolios is shown in Figure 4. (click to enlarge) Figure 4. Equities of momentum-based portfolios with various annual withdrawal rates Source: This chart is based on Excel calculations using the adjusted monthly closing share prices of securities Conclusion The set of four mutual funds, selected for this study, perform exceptionally well for all three strategies and generate high returns at relatively low drawdowns. Between 2005 and 2015, the fixed target allocation with rebalancing was able to sustain withdrawal rates of up to 10% annually. The adaptive allocation algorithm was able to sustain withdrawal rates up to 15% annually without any decrease of capital. Disclosure: The author has no positions in any stocks mentioned, and no plans to initiate any positions within the next 72 hours. (More…) The author wrote this article themselves, and it expresses their own opinions. The author is not receiving compensation for it (other than from Seeking Alpha). The author has no business relationship with any company whose stock is mentioned in this article. Additional disclosure: This article is the third in a sequence on investing in mutual funds for retirement accounts. To help the reader compare the past performance of various mutual fund families, I selected a benchmark 10-year time interval starting on 1 January 2005 and ending on 31 December 2014. The article was written for educational purposes and should not be considered as specific investment advice.

Is Cheap Oil Driving Transport Earnings And ETFs?

Transportation stocks have been the biggest beneficiaries of cheaper oil and an improving U.S. economy. This is easily reflected in their Q4 results as total earnings from 72.8% of the sector’s total market capitalization reported so far are up 20.6% on 5.5% revenue growth. Earnings surprises were impressive with 72.8% of the companies beating earnings estimates with a median surprise of 3.3 and 57.1% beating revenues with a median surprise of 0.4. In particular, earnings from several big players in the space like Union Pacific (NYSE: UNP ), Kansas City Southern (NYSE: KSU ), CSX Corp. (NYSE: CSX ), Delta Air Lines (NYSE: DAL ) and United Continental (NYSE: UAL ) have been encouraging. However, sluggish outlook from the bellwether United Parcel Service (NYSE: UPS ) had severely affected the broad space, erasing most of the stock gains made in the year. Transportation Earnings in Focus Earnings at the world’s largest package delivery company – UPS – were on par with the Zacks Consensus Estimate of $1.25 while revenues of $15.9 billion were marginally ahead of our estimate of $15.8 billion. The company projects earnings per share of $5.05-$5.30 for fiscal 2015, representing 6-12% growth on an annual basis. The mid-point is above the Zacks Consensus Estimate of $5.14. Further, the company reaffirmed its long-term earnings per share growth target of 9-13%. The share price of UPS grew about 0.4% on the day of its earnings release on February 2. The two largest U.S. airlines – DAL and UAL – flew higher after beating the Zacks Consensus Estimate on the earnings front. Both stocks surged 11.4% and 7.7% to touch new 52-week highs of $51.06 and $74.52, respectively, before being hit by UPS’ warnings. DAL is just up 0.4% to date since its earnings release on January 20 and UAL is down 1.8% following its earnings release on January 22. Earnings at Delta beat the Zacks Consensus Estimate by three cents while revenues of $9.65 billion edged past our estimate of $9.59 billion. On the other hand, earnings at United Continental came in at $1.20, outpacing our estimate by six cents, and revenues were $9.3 billion, on par with our estimate. UNP , the U.S. largest railroad, reported earnings of $1.61 per share, 10 cents ahead of the Zacks Consensus Estimate and 27% higher than the year-ago earnings. Revenues climbed 9% year over year to $6.2 billion, ahead of our estimate of $6.1 billion. The stock climbed 6.4% since its earnings announcement on January 22 before the market opened. Other major railroads like CSX and KSU have given mixed performances. While earnings at CSX meets our estimate of 49 cents, revenue of $3.19 billion exceed the Zacks Consensus Estimate of $3.18 billion. On the other hand, KSU earnings outpaced by 4 cents and revenues of $643 million lagged the Zacks Consensus Estimate of $658 million. Shares of CSX gained 3.3% to date post earnings on January 13 after the closing bell and KSU added nearly 1% since its earnings announcement on January 23 before the market opened. ETFs in Focus Given that the cheap fuel will continue to provide a big boost to transport earnings growth, investors should definitely tap the current beaten down prices in the form of ETFs with a lower level of risk. This is especially true as the transport sector actually has the best rank for any industry at the time of writing – about three-fourths of the industries under transport have Zacks Ranks in the top 37%, suggesting bullishness in the sector. iShares Dow Jones Transportation Average Fund (NYSEARCA: IYT ) The ETF tracks the Dow Jones Transportation Average Index, giving investors exposure to the small basket of 20 securities. The fund has a certain tilt toward large cap stocks at 49% while mid and small caps account for 31% and 19% share, respectively, in the basket. The product is heavily concentrated on the top five holdings, accounting for 42.8% of assets. From a sector perspective, railroad takes the top spot with less than half share in the basket, while air freight & logistics and airlines round off to the top three with double-digit exposure each. The fund has accumulated nearly $2 billion in AUM while sees good trading volume of around 490,000 shares a day. It charges 43 bps in annual fees and has lost 2.6% so far in the year. SPDR S&P Transportation ETF (NYSEARCA: XTN ) This fund uses the equal weight methodology to each security by tracking the S&P Transportation Select Industry Index. Holding 50 stocks in its basket with AUM of $623.4 million, each security accounts for less than 3.3% of total assets. The ETF is skewed toward small caps at 51% while mid and large caps account for 27% and 22% share, respectively. About one-third of the portfolio is dominated by trucking while airlines take another one-fourth share. Airfreight & logistics, and railroads also make up for a double-digit allocation. The fund charges 35 bps in fees per year from investors and trades in a moderate volume of more than 82,000 shares a day. XTN is down about 5.8% in the year-to-date timeframe. Bottom Line Investors should keep in mind that cheap fuel is currently a huge boon to the transportation sector. Better job conditions and an improving economy are also driving the growth in the sector. As a result, investors shouldn’t miss this opportunity to stuff these funds into their portfolio. Further, these funds could easily counter shocks from some of the industry’s biggest components like the recent UPS warnings.

Your Alpha Is My Beta

The term ‘alpha’ has been so abused and misused as to be almost meaningless, but when well specified, it serves an important purpose. Attribution models, which explain the sources of risk in a strategy, should not be confused with measures of ‘value added’. Alpha, as a measure of ‘value added’, is not only specific to the portfolio it might complement, but also to the investor who owns the portfolio. A couple of weeks ago, I had the pleasure of a short correspondence with Lars Kestner, a well-known quant and derivatives trader, and creator of the thoughtful K-ratio as a measure of risk-adjusted performance. We connected on the definition of alpha, and how the term has been so abused in media and marketing as to become almost meaningless. To help make his point, Lars quoted a passage from his recent whitepaper, ” My Top 8 Pet Peeves “, which I’ve taken the liberty of copying below: Incorrect casual use of the term alpha This complaint may stem from the statistician in me, but the casual use of the term alpha irritates me quite a bit. Returning to very basic regression techniques, the term alpha has a very specific meaning. rp = α + β1 r1 + β2 r2 + β3 r3 + … + ε Alpha is just one of the estimated statistics of a return attribution model. The validity of the regression outputs, whether parameter estimates such as alpha or various betas, or risk estimates such as standard errors, depend on the model used to specify the return stream. Independent variables should be chosen such that the resulting error residuals cannot be meaningfully explained further by adding independent variables to the regression. In the most prevalent return attribution model, the typical one factor CAPM model, returns are explained by one independent variable – broad market returns. Defining an appropriate return attribution model is necessary to estimate a manager’s alpha. I find it ironic that the use of the term alpha is most frequently applied to a subset of asset managers called hedge funds where defining the return attribution model is often the hardest. Long-short equity managers can display non-constant beta as their net exposures change. Fixed income arbitrage managers typically display very non-normal return distribution patterns. Managed futures traders can capture negative coskewness versus equity markets that provide additional benefits beyond their standard return and risk profile. Calculating these managers’ alpha is a difficult task if for no other reason that specifying the “correct” return attribution model is problematic. Consider the specific example of a hedge fund manager whose net exposure is not constant. In this case, a one factor market model is not necessarily optimal and other factors such as the square of market returns might need to be added to account for time varying beta. If a manager makes significant use of options, the task of specifying a proper model becomes even harder. Also, consider a manager whose product specialty is volatility arbitrage and an appropriate market benchmark may not be available. How then to estimate alpha? I prefer using the term “value-add” to be a generic catch-all for strategies that increment a portfolio’s value. Whether that incremental value is generated though true alpha, time varying beta, short beta strategies with low return drag, cheap optionality, negative coskewness to equity markets, or something else that is not able to be estimated directly from a return attribution model, it saves me from having to misuse the term alpha. Lars raises great questions about the relevance of alpha derived from a linear attribution model with Gaussian assumptions when a strategy may exhibit non-linear and/or non-Gaussian risk or payoff profiles. Unfortunately, this describes many classes of hedge funds. While this is true, his comments took me in a different direction altogether. It’s interesting to contextualize alpha not just in terms of the factors that an experienced expert might consider, but rather in terms of what a specific target investor for a product might have knowledge of, and be able to access elsewhere at less cost. In this way, a less experienced investor might perceive a product which harnesses certain non-traditional beta exposures to have delivered ‘alpha’, or more broadly ‘value added’, where an experienced institutional quant with access to inexpensive non-traditional betas would assert that the product delivers little or no alpha whatsoever. Let’s start with the simplest example: imagine a typical retail investor who invests through his bank branch. A non-specialist at the bank branch recommends a single-manager balanced domestic mutual fund, where the manager is active with the equity sleeve, exerting a value bias on the portfolio. The bond sleeve tracks the domestic bond aggregate. The fund charges a 1.5% fee. Subsequently, the investor meets a more sophisticated Advisor and they briefly discuss his portfolio. The Advisor consults his firm’s software and determines the fund’s returns are completely explained by the bond aggregate index returns, domestic equity returns, and the Fama French (FF) value factor. In fact, after accounting for these factors, the mutual fund delivers -2% annualized alpha. The Advisor suggests that the client move his money into his care, where he will preserve his exact asset allocation vis-a-vis stocks and bonds, but invest the bond component via a broad domestic bond ETF, and use a low-cost value-biased equity ETF for the equity sleeve. The Expense Ratio (ER) of the ETF portfolio is 0.1% per year, and the Advisor proposes to charge the client 0.9% per year on top, for a total of 1% per year in expenses. The Advisor, by identifying the underlying exposures of the client’s first fund and engineering a solution to replicate those factors with lower cost, has generated 1% per year in alpha (1.5% mutual fund fee – 1% all-in Advisor fee + 0.5% by eliminating the negative mutual fund alpha). At the client’s next annual review, the Advisor recommends that the client diversify half of his equities into international stocks, at a fee of 0.14%. An unbiased estimate of non-domestic equity returns would be similar to domestic returns, minus the 0.6*0.5*(0.14-0.1) = 0.012% increase in total portfolio fees. However, currency and geographic diversification are expected to lower portfolio volatility by 0.5% per year, so the result is similar returns with lower risk = higher risk-adjusted returns = higher value added = higher alpha. After another year or so, the new Advisor discusses adding a second risk factor to the equity sleeve to complement the existing value tilt: a domestic momentum ETF with a fee of 0.15%. Based on the relatively low correlation between value and momentum tilts (keeping in mind they are all long domestic equity portfolios), the Advisor believes the new portfolio will deliver the same returns over the long run, but diversification between value and momentum tilts will slightly reduce the portfolio volatility by another 0.2%. Same returns with less risk = higher alpha. At each stage, the incremental increase in returns and reduction in portfolio ‘beta’ (vis-a-vis the original fund) results in a higher ‘alpha’ for the client. Now obviously the actions that the Advisor took are not traditional sources of alpha – that is, they are not the result of traditional active bets – but they nevertheless add meaningful value to the client. Now let’s extend the logic into a more traditional institutional discussion. The institution is generally applying attribution analysis for one or both of the following purposes. The two applications are obviously linked in process, but have substantially different objectives. To discover how well systematic risk factors explain portfolio returns over a sample period. For example, we might determine that a long-short equity manager derives some returns from idiosyncratic equity selection, some from the Fama French value factor, and some returns from time-varying beta. If we hired the manager for exposure to these factors, this would confirm our judgement. Otherwise it might prompt some questions for the manager about ‘style drift’ or some other such nonsense. To determine if a manager has delivered “value added”, or alpha. For example, perhaps the manager delivered excess returns, but we discover that the excess returns can be explained away by adding traditional Fama French equity factors to the regression. Since it is a simple and inexpensive matter to replicate these risk factor exposures through ‘passive’ allocations to these factors (using ETFs or DFA funds for example), it might be reasonable to discount this source of ‘value added’ for most investors, and trim the alpha estimate accordingly. This should be pretty straightforward so far. Using a long-short equity mandate as our sandbox, we discussed how a manager’s returns might result from exposure to the FF factors, time-varying exposure to the market, and an idiosyncratic component called alpha. But now let’s get our hands dirty with some nuance. Let’s assume the long-short manager has been laying on a derivative strategy with non-linear positive payoffs. Imagine as well that a wily quant suspects he knows the method that the manager is using, can replicate the return series from the derivative strategy, and includes this factor in his attribution model. Once this factor is added, the manager’s alpha is stripped away. While the quant may feel that there is no ‘value add’ in the derivative strategy because he can replicate it for cost, surely an average investor would have no way to gain exposure to such an exotic beta. As such, the average investor might perceive the strategy as ‘value added’, or ‘alpha’ while the quant would not. Ok, let’s back out the derivative strategy, and assume our long-short manager exhibits positive and significant alpha after standard FF regression. In other words, the manager’s excess returns are not exclusively due to systematic (positive) exposure to market beta or standard equity factors, such as value, size, or momentum. Of course, since it is a ‘long-short’ strategy, the manager can theoretically add value by varying the portfolio’s aggregate exposure to the market itself. When he is net long, the strategy should exhibit positive beta risk, and when he is net short, it should manifest negative beta risk. How might we determine if this time-varying beta risk explains portfolio returns? Engel (1989) demonstrated how regressing portfolio returns on squared CAPM returns will tease out time-varying beta effects. So let’s assume that adding a squared CAPM beta return series to the attribution model explains away a majority of this ‘alpha’ source. Therefore, including this factor in the model increases the explanatory power (R2) of the model, and reduces the alpha estimate. But is this fair or relevant in the context of ‘value added’? After all, while we can say that the manager is adding value by varying CAPM beta exposure, we have not demonstrated how an investor might generate these excess returns in practice. I have yet to see a product that delivers the squared absolute returns of CAPM beta, but please let me know if I’ve missed something. I submit that it’s useful to identify the time-varying beta decisions for attribution purposes. This source of returns may represent true “value add” or (dare I say alpha), because it cannot (presumably) be inexpensively and passively replicated by the investor. To the extent an investor is experienced enough, and/or sophisticated enough to identify factors which can inexpensively replicate the time-varying beta decisions (such as via bottom-up security selection, or top-down timing models), then, and only then, might the investor discount this source of ‘value added’. So far we’ve discussed hypothetical examples, but a recent lively debate on APViewpoint is a great real-life case study. Larry Swedroe at Buckingham has long militated against traditional active management in favour of DFA style low-cost factor investing. It took many by surprise, then, when Larry wrote a compelling argument for including a small allocation to AQR’s new risk premia fund (MUTF: QSPIX ) in traditional portfolios. After all, at first glance this fund is a major departure from Larry’s usual philosophy, with high fees, and leveraged long and short exposures to a wide variety of more exotic instruments. Thus ensued 100 short dissertations from a host of respected and thoughtful Advisors and managers on APViewpoint’s forum about why the fund’s leverage introduces LTCM style risk; why the factor premia the fund purports to harvest cannot exist in the presence of efficient markets, and; why the fund’s high fees present an insurmountable performance drag. Notwithstanding these potentially legitimate issues, I’m uniquely interested in how one might view this fund in terms of alpha and beta. The fund’s strategy involves making pure risk-neutral bets on well-documented factors, such as value, momentum, carry, and low beta, across a variety of liquid asset classes. In fact, AQR published a paper describing the strategy in great detail. Presumably even a low-level analyst with access to long-term return histories from the factors the fund has exposure to could explain away all of the fund’s returns. From this perspective then, the fund would deliver zero alpha. However, it is far easier to gather the return streams from these more ‘exotic’ factors than it is to operationalize a product to effectively harvest them. So for most investors, this product represents a strong potential source of ‘value add’. The goal of this missive was to demonstrate that, when it comes to alpha, where you stand depends profoundly on where you sit. Different investors with varying levels of knowledge, experience, access, and operational expertise will interpret different products and strategies as delivering different magnitudes of value added. At each point, an investor may be theoretically ‘better off’ from adding even simple strategies to the mix, perhaps at lower fees, and even after a guiding Advisor extracts a reasonable fee on top. More experienced investors may be able to harness a broader array of risk premia directly, and thus be willing to pay for a smaller set of more exotic risk premia. It turns out that ‘alpha’ is a remarkably personal statistic after all. Disclosure: The author has no positions in any stocks mentioned, and no plans to initiate any positions within the next 72 hours. (More…) The author wrote this article themselves, and it expresses their own opinions. The author is not receiving compensation for it. The author has no business relationship with any company whose stock is mentioned in this article.