Tag Archives: seeking

Will GLD Keep Losing Its Shine?

Summary The gold market is expected to be pressured down as the U.S. dollar resumes its upward trend and the Fed moves towards raising rates. The focus is shifting towards the Fed’s normalization path. The market estimates only two to three rate hikes next year. Shares of the SPDR Gold Trust ETF (NYSEARCA: GLD ) and price of gold climbed back up last week, in part as the U.S. dollar changed course and fell following the lower than expected rate cut by the ECB. In her recent testimony to Congress, FOMC Chair Yellen signaled the U.S. economy is ready for higher rates. And the last non-farm payroll report , in which 211,000 jobs were added back in November, reaffirmed market expectations for the Fed to raise rates this month. Labor market continues to improve The recent NFP report showed a bit higher than expected growth in number of jobs. Wages rose by 0.2%, month over month and by 2.3% for the year. And while not all figures in the report were good — the real unemployment (U6) edged up to 9.9% — it was still overall good enough to pave the way for a December rate hike. Thus, this jobs report along with Yellen’s testimony should have raised the implied probabilities of a rate hike but for now the odds are at 79% — little changed from the previous week. The problem with raising rates at this stage is that the core inflation is still low. And it will be even harder for inflation to rise as the Fed’s cash rates moves up. Nonetheless, as the Fed moves towards raising rates in the next meeting, the price of GLD could resume, even if over the short term, its downward trend. And once the FOMC raises rates this month, the median outlook the Fed targeted in September will be met, as indicated in the table below. Source: Fed’s website Even though the labor market is doing well enough to prompt the Fed to raise rates this month, this week the JOLTS report will provide another perspective about the progress of the labor market. The recent depreciation of the U.S. dollar, mainly against the Euro, came after the ECB didn’t introduce stimulus as the market expected. The recent break we had from the rally of the U.S. dollar has helped pull back up GLD. And the U.S. dollar is expected to resume its rally, which will keep pressuring down GLD. Looking beyond the upcoming rate hike, and assuming the Fed moves forward and raises rates this month, the outlook for the future hikes suggest only a few rate raises in 2016. If rates were to rise at a slower pace than previously expected, this could hold the price of GLD from falling next year. (click to enlarge) Source: Fed-Watch The table above shows the implied probabilities over the next FOMC meetings 2015-2016. Based on these figures, the market expects the target rate to reach 0.84% by the end of 2016 – over 0.5 percentage point lower than the FOMC’s median outlook of 1.375%. Based on the Fed-watch outlook, this implies two rate hikes next year of 0.25% (again, assuming the Fed were to raise rates this year). If this outlook will coincide with FOMC members’ estimates, then the Fed will revise down its projections in the next meeting. And downward revisions could partly offset the expected adverse impact the rate hike will have on GLD. If rates were to remain lower than currently expected next year, the downward pressure on GLD will be less intense. Bottom line The gold market isn’t expected to shine or see rising prices anytime soon, especially as the Fed moves towards raising rates in December and U.S. dollar keeps climbing against other currencies. But following the initial rate hike, which is likely to have a short term negative impact on gold prices, it will be more important to see how the Fed plans raising rates in 2016. The current market outlook aims towards only 2 to 3 hikes next year. Lower than previously estimated rates could hold GLD from plummeting, albeit this won’t stop the general downward trend. For more please see: ” Gold and Inflation – Is there is relation? ”

Managements Leading Companies Off A Cliff

By Tim Maverick The quickest and surest way for investors to lose money is to invest in companies where the management is, to put it politely, incompetent. Numerous instances exist throughout history. But we’re perhaps seeing the worst example ever, and it’s from the global mining industry . The level of incompetence being displayed is simply astonishing. Chinese Steel Collapse China has the world’s biggest steel industry, producing half of all steel. Crude steel output there soared more than 12-fold between 1990 and 2014. But now, thanks to overcapacity, the Chinese steel industry has shifted into reverse in a big way. Prices have fallen by nearly 30%. Steel rebar prices in China on the Shanghai Futures Exchange are at all-time record lows. Rebar prices are down 30% this year alone. As losses continue to mount for the industry, even Xu Lejiang, Chairman of giant steelmaker Shanghai Baosteel, said that the industry’s output will collapse by a fifth in the not-too-distant future. Forecasts are for a drop in production of at least 23 million metric tons (mmt) over the next year. The China Iron and Steel Association is in general agreement. It says that output probably permanently peaked in 2014 at 823 mmt. In effect, we’ve seen peak steel. Iron Ore Dreams That’s bad news for the major iron ore miners – Vale S.A. (NYSE: VALE ), Rio Tinto PLC (NYSE: RIO ), and BHP Billiton (NYSE: BHP ). China will cut back on its imports of iron ore, a key ingredient in steelmaking. The evidence is already there. The Baltic Dry Index, which includes ships that carry ore, hit its all-time low on November 20 at 498. Iron ore itself hit an all-time low – spot pricing began in 2008 – about a week ago at $43.40 per metric ton. Logic would dictate the miners cut back production. So does Economics 101. But the managements at the big three continue to live in a fairy tale. They continue clinging to their forecast – that Chinese steel output will rise 20% over the next decade – like drowning men to a life preserver. In fact, Rio Tinto still forecasts that annual Chinese steel production will hit a billion tons by the end of the decade. So the three blind mice (iron ore miners) continue raising output, using a scorched earth policy to eliminate the competition. In fact, next year, Vale will open the world’s largest iron ore mine (Serra Sul in Brazil). And the iron ore sector isn’t alone. Other mining segments – including copper, zinc, and nickel – continue to produce as if there’s no tomorrow. How to Spot the Bottom Eventually, the long nightmare for shareholders in mining companies will end. So how do you spot the signs that a bottom is coming and brighter days are ahead? Output cuts will help. But if Company A cuts its production, the dreamers at one of the big three miners will simply raise their output even more. A true signal will be the removal of one of these totally incompetent management teams. That should start the ball rolling towards real change. I then expect the big miner that made the change to finally say “uncle.” And I don’t mean just deciding to finally cut back on output. I mean throwing in the towel completely, walking away from a segment like iron ore, and permanently shutting down production. If a permanent shutdown doesn’t occur, miners will be in the same boat as shale oil producers. As soon as the price blips up a few dollars, a flood of supply hits the market. A commodities version of Sisyphus, if you will. That may happen sooner rather than later. In iron ore, for example, the price is quickly approaching the break-even level for some of the big miners. This is despite falling freight, oil, and currencies helping to lower miners’ costs. Until the permanent shuttering of mines occurs, the sector will remain in its downward spiral. Original Post

Dynamic Asset Allocation

Identifying the right asset classes and proportions to diversify is difficult for an investor. The scientific methods for diversification, namely Markowitz’s Mean Variance Optimization have not been practically applicable. Investing in all asset classes evenly at all times will reduce risk but lower returns too. A diversification strategy that reduces exposure to asset classes trending down long term has historically outperformed the stock market both in terms of overall return and volatility. Diversification is widely accepted as the most important aspect in building a portfolio. For investors looking to accomplish their long term financial goals, diversification helps reduce risks and volatility as market and economy go through various expansion, contraction cycles. However the specifications on how much to diversify and in what asset classes are often vague and left to the judgment of an individual investor. There aren’t many established or prevalent public tools that would take investor characteristics as an input (for example risk tolerance, time horizon etc.) and output a recommended model portfolio. A recommended portfolio that provides a list of specific asset classes (mutual funds, ETFs or stocks) and propose percentage weights for investor to review and consider as a starting point. Further, the primary goal for diversification is looked at as risk minimization or reduced volatility in your portfolio. That comes at a cost since lower risk leads to lower return. Could diversification lead to lower risk and yet outperform the market in terms of returns? This article proposes a diversification strategy that has historically outperformed the market, with lower drawdowns and can be used by investors to build a long term asset allocation strategy. Background: Let’s start with understanding the history and state of financial theory on diversification. Harry Markowitz’s Mean Variance Optimization (MVO) method developed in 1952 forms the core backbone of financial theory on diversification. The core insight of Markowitz’s work was that by combining assets that are negatively correlated (i.e. they typically move in different directions) one can reduce the overall volatility of a portfolio without impacting the expected return. Markowitz provided a mathematical algorithm that can use this insight to generate the ideal portfolio (named as Markowitz Efficient Portfolio ) with lowest risk/volatility possible. This was a powerful algorithm and Markowitz rightfully won a Nobel Prize in 1990 for it. Unfortunately even though this was a powerful algorithm, it has not turned out to be practically applicable (Reference papers: 1 , 2 , 3 ). It entails complicated mathematics sensitive to minor changes in the input and requires accurate future forecast on potential assets. Historical returns are very poor forecasts. Variations of Markowitz’s algorithm like Black Litterman model have been proposed to overcome these limitations, however even these require sophisticated inputs (like asset market weightings, volatilities and correlations) that may not be easy to provide for by an average investor. Diversification Strategy Options: To build a model that is simple to understand, compute and specific in terms of output recommendations, we start with Markowitz’s key insight: incorporate assets that are negatively correlated in a portfolio. However correlation between two assets can change over time and rather quickly so we don’t want to assume future correlation will be same as past. Instead we incorporate asset classes that have the potential to have negative future correlation. Thus we include assets in the portfolio that are fundamentally or significantly different from each other. To illustrate this with an example, let’s start with Stocks, Gold and Bonds as three available asset classes that are fairly different from each other. Let’s pick a mutual fund or index from each of these to start with diversification in asset class itself and not be exposed to individual stock risk. I picked the Vanguard 500 Index Fund (MUTF: VFINX ), the V anguard Long Term Investment Grade Fund (MUTF: VWESX ) and the Franklin Gold and Precious Metals Fund (MUTF: FKRCX ) to represent stocks, bond and gold in this test portfolio. We could have picked ETFs like the SPDR S&P 500 Trust ETF ( SPY), the SPDR Gold Trust ETF ( GLD) and the i Shares 20+ Year Treasury Bond ETF ( TLT) but those have historical data only since 2002. Using VFINX, VWESX and FKRCX as proxies for stock, bond and gold allowed me to back test on historical data going all the way back to 1985 from Yahoo Finance. The simplest diversification without making any future assumptions on expected returns would be to allocate equal one third percentage to each asset class. How would this constant equally diversified portfolio would have worked as compared to staying 100% invested in stocks? Overall, stocks would have generated better returns but they’d have also seen larger volatility as seen in the higher drawdown in table below. The graph below shows how the two portfolios would have grown and the table shows annualized return and drawdown numbers for the duration. (click to enlarge) (click to enlarge) Looking at the above numbers, a simple strategy of equal breakdown across multiple asset classes provided a good start for reasonable growth and yet lower drawdowns. However, could we have generated better returns than being in stocks alone? We can take advantage of being in an asset class rather than an individual stock. Individual stocks can go through wild up and down swings, but asset classes do show longer bull – bear trend. For example, the graph below shows that “Gold – Precious metal equities” have been a 4 year long bear market since 2011. Similarly U.S. stocks went through 2-3 year bear market in 2000 and 2008. (click to enlarge) One improvement that we can make in our diversification strategy is to exclude any asset class that is in its longer term bear market and equally invest in all other asset classes. An asset class can be marked in bear market if its 52 week return is less than -2%. We could use any other indicator too like simple moving average or 52 week minima drop. They will all work. The important thing is to classify it as a bear and exit or reduce your sizing in that asset class. Any heuristic that improves the accuracy of classifying an asset class is in bear market will improve the strategy further. In our proposed dynamic allocation strategy we simply reduce allocation to zero on an asset class which has lost more than 2% over the last one year. All other assets are held in equal proportions to make up 100% of portfolio and balanced weekly. For simplicity we have assumed balancing weekly has zero costs, in reality transaction costs may necessitate balancing over a longer time period like 1 or 3 months. Back testing this strategy on historical data since 1984 returns an annual return of 11.87% with an average drawdown of 3.73%. The worst case drop from a 52 week high was 31.35%. So an outperformance both in terms of returns as well as lower volatility. (click to enlarge) (click to enlarge) Conclusion: Investors who manage their portfolio on their own, can use the learning above to build their own long term portfolio management strategy. They can extend the above proposed strategy to cover a comprehensive set of asset classes to include all major sectors like real estate, commodities etc. as well as international economies. Including more asset classes should help reduce risk but too many asset classes will decrease the overall return. Investors can try a variations where instead of equal allocation across all asset classes, sectors that are booming have higher weighted allocation versus sectors that are underperforming. Catching a long term bull market in an asset class and over indexing on those asset classes is likely to help improve returns. They can adjust the maximum level of weighting in a single asset class based on their risk tolerance to limit over exposure in a single asset class. Investor can thus build their own diversified portfolio, test its historical performance on returns and drawdown and thus be equipped to make smarter investing decisions for the long term. Disclaimer: The author does not have any holdings in the mutual funds (VFINX, VWESX and FKRCX) used to test described diversification strategy. These funds have been used only for illustrative purpose and the author is not making any recommendations to buy them. We use a proprietary asset allocation technique across global stocks, bonds, commodities, commodities stocks, mutual funds, ETFs and other investment options in our portfolio.