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Optical Illusion / Optical Truth

A great deal of intelligence can be invested in ignorance when the need for illusion is deep. – Saul Bellow, “To Jerusalem and Back” (1976) It is difficult to get a man to understand something, when his salary depends on his not understanding it. – Upton Sinclair, “I, Candidate for Governor: And How I Got Licked” (1935) Knowledge kills action; action requires the veils of illusion. – Friedrich Nietzsche, “The Birth of Tragedy” (1872) To find out if she really loved me, I hooked her up to a lie detector. And just as I suspected, my machine was broken. – Jarod Kintz, “Love Quotes for the Ages. Specifically Ages 19-91” (2013) Edward Tufte is a personal and professional hero of mine. Professionally, he’s best known for his magisterial work in data visualization and data communication through such classics as The Visual Display of Quantitative Information (1983) and its follow-on volumes, but less well-known is his outstanding academic work in econometrics and statistical analysis. His 1974 book Data Analysis for Politics and Policy remains the single best book I’ve ever read in terms of teaching the power and pitfalls of statistical analysis. If you’re fluent in the language of econometrics (this is not a book for the uninitiated) and now you want to say something meaningful and true using that language, you should read this book (available for $2 in Kindle form on Tufte’s website ). Personally, Tufte is a hero to me for escaping the ivory tower, pioneering what we know today as self-publishing, making a lot of money in the process, and becoming an interesting sculptor and artist. That’s my dream. That one day when the Great Central Bank Wars of the 21st century are over, I will be allowed to return, Cincinnatus-like, to my Connecticut farm where I will write short stories and weld monumental sculptures in peace. That and beekeeping. But until that happy day, I am inspired in my war-fighting efforts by Tufte’s skepticism and truth-seeking. The former is summed up well in an anecdote Tufte found in a medical journal and cites in Data Analysis : One day when I was a junior medical student, a very important Boston surgeon visited the school and delivered a great treatise on a large number of patients who had undergone successful operations for vascular reconstruction. At the end of the lecture, a young student at the back of the room timidly asked, “Do you have any controls?” Well, the great surgeon drew himself up to his full height, hit the desk, and said, “Do you mean did I not operate on half of the patients?” The hall grew very quiet then. The voice at the back of the room very hesitantly replied, “Yes, that’s what I had in mind.” Then the visitor’s fist really came down as he thundered, “Of course not. That would have doomed half of them to their death.” God, it was quiet then, and one could scarcely hear the small voice ask, “Which half?” ‘Nuff said. The latter quality – truth-seeking – takes on many forms in Tufte’s work, but most noticeably in his constant admonitions to LOOK at the data for hints and clues on asking the right questions of the data. This is the flip-side of the coin for which Tufte is best known, that good/bad visual representations of data communicate useful/useless answers to questions that we have about the world. Or to put it another way, an information-rich data visualization is not only the most powerful way to communicate our answers as to how the world really works, but it is also the most powerful way to design our questions as to how the world really works. Here’s a quick example of what I mean, using a famous data set known as “Anscombe’s Quartet”. Anscombe’s Quartet I II III IV x y x y x y x y 10.0 8.04 10.0 9.14 10.0 7.46 8.0 6.58 8.0 6.95 8.0 8.14 8.0 6.77 8.0 5.76 13.0 7.58 13.0 8.74 13.0 12.74 8.0 7.71 9.0 8.81 9.0 8.77 9.0 7.11 8.0 8.84 11.0 8.33 11.0 9.26 11.0 7.81 8.0 8.47 14.0 9.96 14.0 8.10 14.0 8.84 8.0 7.04 6.0 7.24 6.0 6.13 6.0 6.08 8.0 5.25 4.0 4.26 4.0 3.10 4.0 5.39 19.0 12.50 12.0 10.84 12.0 9.13 12.0 8.15 8.0 5.56 7.0 4.82 7.0 7.26 7.0 6.42 8.0 7.91 5.0 5.68 5.0 4.74 5.0 5.73 8.0 6.89 In this original example (developed by hand by Frank Anscombe in 1973; today there’s an app for generating all the Anscombe sets you could want) Roman numerals I – IV refer to four data sets of 11 (x,y) coordinates, in other words 11 points on a simple 2-dimensional area. If you were comparing these four sets of numbers using traditional statistical methods, you might well think that they were four separate data measurements of exactly the same phenomenon. After all, the mean of x is exactly the same in each set of measurements (9), the mean of y is the same in each set of measurements to two decimal places (7.50), the variance of x is exactly the same in each set (11), the variance of y is the same in each set to two decimal places (4.12), the correlation between x and y is the same in each set to three decimal places (0.816), and if you run a linear regression on each data set you get the same line plotted through the observations (y = 3.00 + 0.500x). But when you LOOK at these four data sets, they are totally alien to each other, with essentially no similarity in meaning or probable causal mechanism . Of the four, linear regression and our typical summary statistical efforts make sense for only the upper left data set. For the other three, applying our standard toolkit makes absolutely no sense. But we’d never know that – we’d never know how to ask the right questions about our data – if we didn’t eyeball it first. Click to enlarge Okay, you might say, duly noted. From now on we will certainly look at a visual plot of our data before doing things like forcing a line through it and reporting summary statistics like r-squared and standard deviation as if they were trumpets of angels from on high. But how do you “see” multi-variate datasets? It’s one thing to imagine a line through a set of points on a plane, quite another to visualize a plane through a set of points in space, and impossible to imagine a cubic solid through a set of points in hyperspace. And how do you “see” embedded or invisible data dimensions, whether it’s an invisible market dimension like volatility or an invisible measurement dimension like time aggregation or an invisible statistical dimension like the underlying distribution of errors ? The fact is that looking at data is an art, not a science. There’s no single process, no single toolkit for success. It requires years of practice on top of an innate artist’s eye before you have a chance of being good at this, and it’s something that I’ve never seen a non-human intelligence accomplish successfully (I can’t tell you how happy I am to write that sentence). But just because it’s hard, just because it doesn’t come easily or naturally to people and machines alike … well, that doesn’t mean it’s not the most important thing in data-based truth-seeking. Why is it so important to SEE data relationships? Because we’re human beings. Because we are biologically evolved and culturally trained to process information in this manner. Because – and this is the Tufte-inspired market axiom that I can’t emphasize strongly enough – the only investable ideas are visible ideas . If you can’t physically see it in the data, then it will never move you strongly enough to overcome the pleasant fictions that dominate our workaday lives, what Faust’s Tempter, the demon Mephistopheles, calls the “masquerade” and “the dance of mind.” Our similarity to Faust (who was a really smart guy, a man of Science with a capital S) is not that the Devil may soon pay us a visit and tempt us with all manner of magical wonders, but that we have already succumbed to the blandishments of easy answers and magical thinking. I mean, don’t get me started on Part Two, Act 1 of Goethe’s magnum opus, where the Devil introduces massive quantities of paper money to encourage inflationary pressures under a false promise of recovery in the real economy. No, I’m not making this up. That is the actual, non-allegorical plot of one of the best, smartest books in human history, now almost 200 years old. So what I’m going to ask of you, dear reader, is to look at some pictures of market data, with the hope that seeing will indeed spark believing. Not as a temptation, but as a talisman against the same. Because when I tell you that the statistical correlation between the US dollar and the price of oil since Janet Yellen and Mario Draghi launched competitive monetary policies in mid-June of 2014 is -0.96 I can hear the yawns. I can also hear my own brain start to pose negative questions, because I’ve experienced way too many instances of statistical “evidence” that, like the Anscombe data sets, proved to be misleading at best. But when I show you what that correlation looks like … Click to enlarge © Bloomberg Finance L.P., for illustrative purposes only I can hear you lean forward in your seat. I can hear my own brain start to whir with positive questions and ideas about how to explore this data further. This is what a -96% correlation looks like. What you’re looking at in the green line is the Fed’s favored measure of what the US dollar buys around the world. It’s an index where the components are the exchange rates of all the US trading partners (hence a “broad dollar” index) and where the individual components are proportionally magnified/minimized by the size of that trading relationship (hence a “trade-weighted” index). That index is measured by the left hand vertical axis, starting with a value of about 102 on June 18, 2014 when Janet Yellen announced a tightening bias for US monetary policy and a renewed focus on the full employment half of the Fed’s dual mandate, peaking in late January and declining to a current value of about 119 as first Japan and Europe called off the negative rate dogs (making their currencies go up against the dollar) and then Yellen completely back-tracked on raising rates this year (making the dollar go down against all currencies). Monetary policy divergence with a hawkish Fed and a dovish rest-of-world makes the dollar go up. Monetary policy convergence with everyone a dove makes the dollar go down. What you’re looking at in the magenta line is the upside-down price of West Texas Intermediate crude oil over the same time span, as measured by the right hand vertical axis. So on June 18, 2014 the spot price of WTI crude oil was over $100/barrel. That bottomed in the high $20s just as the trade-weighted broad dollar index peaked this year, and it’s been roaring back higher (lower in the inverse depiction) ever since. Now correlation may not imply causation, but as Ed Tufte is fond of saying, it’s a mighty big hint. I can SEE the consistent relationship between change in the dollar and change in oil prices, and that makes for a coherent, believable story about a causal relationship between monetary policy and oil prices. What is that causal narrative? It’s not just the mechanistic aspects of pricing, such that the inherent exchange value of things priced in dollars – whether it’s a barrel of oil or a Caterpillar earthmover – must by definition go down as the exchange value of the dollar itself goes up. More impactful, I think, is that for the past seven years investors have been well and truly trained to see every market outcome as the result of central bank policy, a training program administered by central bankers who now routinely and intentionally use forward guidance and placebo words to act on “the dance of mind” in classic Mephistophelean fashion. In effect, the causal relationship between monetary policy and oil prices is a self-fulfilling prophecy (or in the jargon du jour, a self-reinforcing behavioral equilibrium), a meta-example of what George Soros calls reflexivity and what a game theorist calls the Common Knowledge Game . The causal relationship of the dollar, i.e. monetary policy, to the price of oil is a reflection of the Narrative of Central Bank Omnipotence , nothing more and nothing less. And today that narrative is everything. Here’s something smart that I read about this relationship between oil prices and monetary policy back in November 2014 when oil was north of $70/barrel: I think that this monetary policy divergence is a very significant risk to markets, as there’s no direct martingale on how far monetary policy can diverge and how strong the dollar can get. As a result I think there’s a non-trivial chance that the price of oil could have a $30 or $40 handle at some point over the next 6 months, even though the global growth and supply/demand models would say that’s impossible. But I also think the likely duration of that heavily depressed price is pretty short. Why? Because the Fed and China will not take this lying down. They will respond to the stronger dollar and stronger yuan (China’s currency is effectively tied to the dollar) and they will prevail, which will push oil prices back close to what global growth says the price should be. The danger, of course, is that if they wait too long to respond (and they usually do), then the response will itself be highly damaging to global growth and market confidence and we’ll bounce back, but only after a near-recession in the US or a near-hard landing in China. Oh wait, I wrote that . Good stuff. But that was a voice in the wilderness in 2014, as the dominant narrative for the causal factors driving oil pricing was all OPEC all the time. So what about that, Ben? What about the steel cage death match within OPEC between Saudi Arabia and Iran and outside of OPEC between Saudi Arabia and US frackers? What about supply and demand? Where is that in your price chart of oil? Sorry, but I don’t see it in the data . Doesn’t mean it’s not really there. Doesn’t mean it’s not a statistically significant data relationship. What it means is that the relationship between oil supply and oil prices in a policy-controlled market is not an investable relationship. I’m sure it used to be, which is why so many people believe that it’s so important to follow and fret over. But today it’s an essentially useless exercise in data analytics. Not wrong, but useless … there’s a difference! Of course, crude oil isn’t the only place where fundamental supply and demand factors are invisible in the data and hence essentially useless as an investable attribute. Here’s the dollar and something near and dear to the hearts of anyone in Houston, the Alerian MLP index, with an astounding -94% correlation: Click to enlarge © Bloomberg Finance L.P., for illustrative purposes only Interestingly, the correlation between the Alerian MLP index and oil is noticeably less at -88%. Hard to believe that MLP investors should be paying more attention to Bank of Japan press conferences than to gas field depletion schedules, but I gotta call ’em like I see ’em. And here’s the dollar and the iShares MSCI Emerging Markets ETF ( EEM), the dominant emerging market ETF, with a -89% correlation: Click to enlarge © Bloomberg Finance L.P., for illustrative purposes only There’s only one question that matters about Emerging Markets as an asset class, and it’s the subject of one of my first (and most popular) Epsilon Theory notes, ” It Was Barzini All Along “: are Emerging Market growth rates a function of something (anything!) particular to Emerging Markets, or are they simply a derivative function of Developed Market central bank liquidity measures and monetary policy? Certainly this chart suggests a rather definitive answer to that question! And finally, here’s the dollar and the US Manufacturing PMI survey of real-world corporate purchasing managers, probably the most respected measure of US manufacturing sector health. This data relationship clocks in at a -92% correlation. I mean … this is nuts. Click to enlarge © Bloomberg Finance L.P., for illustrative purposes only Here’s what I wrote last summer about the inexorable spread of monetary policy contagion. Monetary policy divergence manifests itself first in currencies, because currencies aren’t an asset class at all, but a political construction that represents and symbolizes monetary policy. Then the divergence manifests itself in those asset classes, like commodities, that have no internal dynamics or cash flows and are thus only slightly removed in their construction and meaning from however they’re priced in this currency or that. From there the divergence spreads like a cancer (or like a cure for cancer, depending on your perspective) into commodity-sensitive real-world companies and national economies. Eventually – and this is the Big Point – the divergence spreads into everything, everywhere. I think this is still the only story that matters for markets. The good Lord giveth and the good Lord taketh away. Right now the good Lord’s name is Janet Yellen, and she’s in a giving mood. It won’t last. It never does. But it does give us time to prepare our portfolios for a return to competitive monetary policy actions , and it gives us insight into what to look for as catalysts for that taketh away part of the equation. Most importantly, though, I hope that this exercise in truth-seeking inoculates you from the Big Narrative Lie coming soon to a status quo media megaphone near you, that this resurgence in risk assets is caused by a resurgence in fundamental real-world economic factors. I know you want to believe this is true. I do, too! It’s unpleasant personally and bad for business in 2016 to accept the reality that we are mired in a policy-controlled market, just as it was unpleasant personally and bad for business in 1854 to accept the reality that cholera is transmitted through fecal contamination of drinking water. But when you SEE John Snow’s dot map of death you can’t ignore the Broad Street water pump smack-dab in the middle of disease outcomes. When you SEE a Bloomberg correlation map of prices you can’t ignore the trade-weighted broad dollar index smack-dab in the middle of market outcomes. Or at least you can’t ignore it completely. It took another 20 years and a lot more cholera deaths before Snow’s ideas were widely accepted. It took the development of a new intellectual foundation: germ theory. I figure it will take another 20 years and the further development of game theory before we get widespread acceptance of the ideas I’m talking about in Epsilon Theory . That’s okay. The bees can wait.

Best And Worst Q2’16: Consumer Staples ETFs, Mutual Funds And Key Holdings

The Consumer Staples sector ranks third out of the ten sectors as detailed in our Q2’16 Sector Ratings for ETFs and Mutual Funds report. Last quarter , the Consumer Staples sector ranked first. It gets our Neutral rating, which is based on aggregation of ratings of nine ETFs and 15 mutual funds in the Consumer Staples sector. See a recap of our Q1’16 Sector Ratings here . Figure 1 ranks from best to worst all nine Consumer Staples ETFs and Figure 2 shows the five best and worst rated Consumer Staples mutual funds. Not all Consumer Staples sector ETFs and mutual funds are created the same. The number of holdings varies widely (from 16 to 115). This variation creates drastically different investment implications and, therefore, ratings. Investors seeking exposure to the Consumer Staples sector should buy one of the Attractive-or-better rated ETFs or mutual funds from Figures 1 and 2. Figure 1: ETFs with the Best & Worst Ratings – Top 5 Click to enlarge * Best ETFs exclude ETFs with TNAs less than $100 million for inadequate liquidity. Sources: New Constructs, LLC and company filings Figure 2: Mutual Funds with the Best & Worst Ratings – Top 5 Click to enlarge * Best mutual funds exclude funds with TNAs less than $100 million for inadequate liquidity. Sources: New Constructs, LLC and company filings Fidelity Select Automotive Portfolio (MUTF: FSAVX ) is excluded from Figure 2 because its total net assets are below $100 million and do not meet our liquidity minimums. Fidelity MSCI Consumer Staples Index ETF (NYSEARCA: FSTA ) is the top-rated Consumer Staples ETF and fidelity Select Consumer Staples Portfolio (MUTF: FDFAX ) is the top-rated Consumer Staples mutual fund. FSTA earns a Very Attractive rating and FDFAX earns an Attractive rating. PowerShares Dynamic Food & Beverage Portfolio (NYSEARCA: PBJ ) is the worst rated Consumer Staples ETF and ICON Consumer Staples Fund (MUTF: ICRAX ) is the worst-rated Consumer Staples mutual fund. PBJ earns a Neutral rating and ICRAX earns a Very Dangerous rating. 117 stocks of the 3000+ we cover are classified as Consumer Staples stocks. Procter & Gamble (NYSE: PG ) is one of our favorite stocks held by FSTA and earns an Attractive rating. Over the past decade, Procter & Gamble has grown its after-tax profit ( NOPAT ) by 6% compounded annually. Since 2008, PG has earned a double digit return on invested capital ( ROIC ) and over the last twelve months earns an 11% ROIC. In spite of revenue declines, Procter & Gamble has generated a cumulative $64 billion in free cash flow over the past five years. However, at current prices, PG remains undervalued. At its current price of $82/share, PG has a price-to-economic book value ( PEBV ) ratio of 1.1. This ratio means that the market expects PG’s NOPAT to only grow 10% over the life of the corporation. If Procter & Gamble can grow NOPAT by 3% compounded annually for the next decade, (half the rate of the previous decade), the stock is worth $94/share today – a 15% upside. The company’s 3% dividend yield also adds to the attractiveness of PG. Mondelez International (NASDAQ: MDLZ ) is one of our least favorite stocks held by ICRAX and earns a Very Dangerous rating. MDLZ was placed in the Danger Zone in late March 2016 . Despite impressive revenue growth, Mondelez has never generated positive economic earnings . In fact, since 2008, the company’s economic earnings have declined from -$763 million to -$1.3 billion. The company’s ROIC has declined from 7% in 2009 to 5% in 2015. As we pointed out in our Danger Zone report, MDLZ likes to push focus away from the deterioration of business operations by using misleading non-GAAP metrics that remove many standard operating costs. Worst of all, MDLZ is significantly overvalued. To justify its current price of $42/share, MDLZ must grow NOPAT by 10% compounded annually for the next 17 years . The expectations embedded in the stock price are simply too high considering the decline in profits and the corporate governance risk related to the company’s reliance on non-GAAP measures of performance. Figures 3 and 4 show the rating landscape of all Consumer Staples ETFs and mutual funds. Figure 3: Separating the Best ETFs From the Worst ETFs Click to enlarge Sources: New Constructs, LLC and company filings Figure 4: Separating the Best Mutual Funds From the Worst Mutual Funds Click to enlarge Sources: New Constructs, LLC and company filings D isclosure: David Trainer and Kyle Guske II receive no compensation to write about any specific stock, sector or theme. Disclosure: I/we have no positions in any stocks mentioned, and no plans to initiate any positions within the next 72 hours. I wrote this article myself, and it expresses my own opinions. I am not receiving compensation for it. I have no business relationship with any company whose stock is mentioned in this article.

Upbeat Industrial Q1 Results Fail To Lift ETFs

Most of the industrial bellwethers have beaten on earnings in the first quarter of 2016. However, it’s not surprising given the low estimates, which had fallen ahead of this reporting cycle. Among other factors, a recent pullback in the greenback and encouraging manufacturing trends could have played a role in the beat. A strong dollar impacts most industrial bigwigs adversely as most of these companies have significant international exposure. However, the earnings beat came largely on the back of lowered expectations (read: ETFs to Watch on U.S. Manufacturing Revival ). Meanwhile, revenue weakness in the sector remains thanks to reduced spending, volatility in oil prices and lackluster global growth. Below we have highlighted in greater detail earnings of some of the major industrial companies which really drive this sector’s outlook. Industrial Earnings in Focus General Electric Company (NYSE: GE ) Diversified industrial conglomerate General Electric posted mixed first quarter results as it reported in line earnings but missed on revenues. The company’s earnings came in at 21 cents per share, in line with the Zacks Consensus Estimate but up 5% from the year-ago quarter. Shares of the company fell slightly after the earnings release. Revenues were up 6% to $27.8 billion, missing the Zacks Consensus Estimate of $29 billion. The revenue miss was due to a weak global economy and an oil price slide that hurt the renewable and oil and gas segments. For 2016, the company reaffirmed its earnings per share guidance of $1.45-$1.55 (read: Industrial ETFs in Focus on Mixed GE Q1 Performance ). 3M Company (NYSE: MMM ) Another major conglomerate, 3M Company reported earnings of $2.05 per share in first-quarter 2016, beating the Zacks Consensus Estimate of $1.92. Net sales during the quarter were $7.4 billion, down 2.2% year over year but ahead of the Zacks Consensus Estimate of $7.3 billion. The year-over-year decrease in sales was largely due to a significantly negative foreign currency translation impact. 3M shares fell on the day of its earnings release. Honeywell International Inc. (NYSE: HON ) Honeywell International’s earnings per share of $1.53 in the reported quarter beat the Zacks Consensus Estimate of $1.50. Revenues in first-quarter 2016 were up 3% year over year to $9.5 billion, ahead the Zacks Consensus Estimate $9.4 billion. Based on favorable business conditions, Honeywell narrowed its 2016 guidance. The company anticipates earnings in the range of $6.55 to $6.70 per share on revenues of $40.3 billion and $40.9 billion. Shares of the company rose slightly on the day of its earnings release. Union Pacific Corporation (NYSE: UNP ) The rail transportation operator, Union Pacific reported first-quarter 2016 earnings of $1.16 per share, which beat the Zacks Consensus Estimate of $1.09. Earnings declined 11% on a year-over-year basis. Revenues decreased 14% year over year to $4.8 billion in the first quarter, falling short of the Zacks Consensus Estimate of $4.9 billion. A 14% decline in freight revenues hurt the top line. Declining coal shipments weighed on the railroad operator’s results yet again. The stock gained after reporting results. ETF Impact Despite reporting encouraging earnings, most of the industrial stocks failed to hold up gains over the past 10 days, sending the related ETFs into rocky territory. This has put the spotlight on industrial ETFs. Below we discuss four of these ETFs having a sizeable exposure to the above stocks. Industrial Select Sector SPDR Fund (NYSEARCA: XLI ) This product tracks the Industrial Select Sector Index. General Electric occupies the top spot with 11.2% allocation, while 3M, Honeywell and Union Pacific have a combined exposure of roughly 14.7% in the fund. XLI has garnered $7.2 billion in assets and trades in a heavy volume of 13.2 million shares per day. It has a low expense ratio of 0.14%. The fund has the highest exposure to Aerospace & Defense (26%), followed by Industrial Conglomerates (21%). The product gained 0.3% in the past 10 days and currently has a Zacks ETF Rank #4 or ‘Sell’ rating with a Medium risk outlook. Vanguard Industrials ETF (NYSEARCA: VIS ) This fund follows the MSCI US IMI Industrials 25/50 index and holds about 342 securities in its basket. Of these firms, GE occupies the top position with 12.7% share, while 3M, Honeywell and Union Pacific together comprise almost 10.7% of the fund’s assets. The fund manages nearly $2.1 billion in its asset base and charges only 10 bps in annual fees. From an industry perspective, the fund has the highest exposure to Aerospace & Defense (21.7%), followed by Industrial Conglomerates (20.6%). Volume is moderate as it exchanges roughly 112,000 shares a day on average. The product lost 0.1% in the past 10 days and currently has a Zacks ETF Rank #3 or ‘Hold’ rating with a Medium risk outlook. iShares U.S. Industrials ETF (NYSEARCA: IYJ ) IYJ tracks the Dow Jones U.S. Industrials Index to provide exposure to 214 U.S. companies that produce goods used in construction and manufacturing. General Electric occupies the top spot in the fund with almost 11% share while 3M, Honeywell and Union Pacific have a combined exposure of more than 10%. The ETF manages an asset base of $737.6 million and trades in an average volume of 75,000 shares. The fund has top exposure to Capital Goods (58.9%) and Software & Services (12.7%) and Transportation (11.7%) have double-digit exposure each. The fund is slightly expensive with 45 basis points as fees. It rose almost 0.4% in the last 10 days and currently has a Zacks ETF Rank #3 with a Medium risk outlook. Fidelity MSCI Industrials Index ETF (NYSEARCA: FIDU ) This fund tracks the MSCI USA IMI Industrials Index, holding 342 stocks in its basket. General Electric takes the top spot at 12.7% share while 3M, Honeywell and Union Pacific have a combined exposure of almost 11.5%. The product has amassed $161.2 million in its asset base while it trades in moderate volume of nearly 115,000 shares a day on average. The fund has top exposure to Aerospace & Defense (23.4%) and Industrial Conglomerates (20.9%). It is one of the low cost choices in the space charging 12 bps in annual fees from investors. The fund gained 0.5 % in the last 10 days and currently has a Zacks ETF Rank #3 with a Medium risk outlook. Link to the original post on Zacks.com