How Overextended Are You, QQQ?

We’ve highlighted all the warning signs as this bull market phase has seemed to near an exhaustion point. We shared bearish market tells, including the dreaded Hindenburg Omen, and how leading growth stocks have been demonstrating questionable patterns. But despite all of those signs of market exhaustion, our growth-led benchmarks have been pounding even higher.

This week, Nvidia’s blowout earnings report appeared to through gasoline on the fire of market euphoria, and the AI-fueled bullish frenzy appeared to be alive and well going into the weekend. As other areas of the equity markets have shown more constructive price behavior and volatility has remained fairly low, the question remains as to when and how this relentless market advance will finally meet its peak.

I would argue that the bearish implications of weaker breadth, along with bearish divergences and overbought conditions, still remain largely unchanged even after NVDA’s earnings report. The seasonality charts for the S&P 500 confirm that March is in fact one of the weakest months in an election year. So will the Nasdaq 100 follow the normal seasonal pattern, or will the strength of the AI euphoria push this market to even further heights into Q2?

By the way, we conducted a similar exercise for the Nasdaq 100 back in November, and guess which scenario actually played out?

Today, we’ll lay out four potential outcomes for the Nasdaq 100. As I share each of these four future paths, I’ll describe the market conditions that would likely be involved, and I’ll also share my estimated probability for each scenario. And remember, the point of this exercise is threefold:

  1. Consider all four potential future paths for the index, think about what would cause each scenario to unfold in terms of the macro drivers, and review what signals/patterns/indicators would confirm the scenario.
  2. Decide which scenario you feel is most likely, and why you think that’s the case. Don’t forget to drop me a comment and let me know your vote!
  3. Think about how each of the four scenarios would impact your current portfolio. How would you manage risk in each case? How and when would you take action to adapt to this new reality?

Let’s start with the most optimistic scenario, involving even more all-time highs over the next six-to-eight weeks.

Option 1: The Very Bullish Scenario

The most optimistic scenario from here would mean the Nasdaq basically continues its current trajectory. That would mean another 7-10% gain into April, the QQQ would be threatening the $500 level, and leading growth stocks would continue to lead in a big way. Nvidia’s strong earnings release fuels additional buying, and the market doesn’t much care about what the Fed says at its March meeting because life is just that good.

In this very bullish scenario, value-oriented stocks, including Industrials, Energy, and Financials, would probably move higher in this scenario, but would still probably lag the growth leadership that would pound even higher.

Dave’s Vote: 15%

Option 2: The Mildly Bullish Scenario

What if the market remains elevated, but the pace slows way down? This second scenario would mean that the Magnificent 7 stocks would take a big-time breather, and more of a leadership rotation begins to take place. Value stocks outperform as Industrials and Health Care stocks improve, but since the mega-cap growth names don’t lose too much value, our benchmarks remain pretty close to current levels.

Dave’s vote: 25%

Option 3: The Mildly Bearish Scenario

Both of the bearish scenarios would involve a pullback in leading growth names, and stocks like NVDA would quickly give back some of their recent gains. Perhaps some economic data comes in way stronger than expected, or inflation signals revert back higher, and the Fed starts reiterating the “higher for longer” approach to interest rates through 2024.

I would think of this mildly bearish scenario as meaning the QQQ remains above the first Fibonacci support level, just over $400. That level is based on the October 2023 low and also assumes that the Nasdaq doesn’t get much higher than current levels before dropping a bit. We don’t see defensive sectors like Utilities outperforming, but it’s clear that stocks are taking a serious break from the AI mania of early 2024.

Dave’s vote: 45%

Option 4: The Super Bearish Scenario

Now we get to the really scary option, where this week’s upswing ends up being a blowoff rally, and stocks flip from bullish to bearish with a sudden and surprising strength. The QQQ drops about 10-15% from current levels and retests the price gap from November 2023, which would represent a 61.8% retracement of the recent upswing. Defensive sectors outperform and investors try to find safe havens as the market tracks its traditional seasonal pattern. Perhaps gold finally breaks above $2,000 per ounce, and investors start to talk about how a break below the October 2023 low may be just the beginning of a new bearish phase.

Dave’s vote: 15%

What probabilities would you assign to each of these four scenarios? Check out the video below, and then drop a comment there for which scenario you select and why!

RR#6,

Dave

P.S. Ready to upgrade your investment process? Check out my free behavioral investing course!


David Keller, CMT

Chief Market Strategist

StockCharts.com


Disclaimer: This blog is for educational purposes only and should not be construed as financial advice. The ideas and strategies should never be used without first assessing your own personal and financial situation, or without consulting a financial professional.

The author does not have a position in mentioned securities at the time of publication. Any opinions expressed herein are solely those of the author and do not in any way represent the views or opinions of any other person or entity.

David Keller

About the author:
David Keller, CMT is Chief Market Strategist at StockCharts.com, where he helps investors minimize behavioral biases through technical analysis. He is a frequent host on StockCharts TV, and he relates mindfulness techniques to investor decision making in his blog, The Mindful Investor.

David is also President and Chief Strategist at Sierra Alpha Research LLC, a boutique investment research firm focused on managing risk through market awareness. He combines the strengths of technical analysis, behavioral finance, and data visualization to identify investment opportunities and enrich relationships between advisors and clients.
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The Hoax of Modern Finance – Part 4: Misuse of Statistics and Other Controversial Practices

Note to the reader: This is the fourth in a series of articles I’m publishing here taken from my book, “Investing with the Trend.” Hopefully, you will find this content useful. Market myths are generally perpetuated by repetition, misleading symbolic connections, and the complete ignorance of facts. The world of finance is full of such tendencies, and here, you’ll see some examples. Please keep in mind that not all of these examples are totally misleading — they are sometimes valid — but have too many holes in them to be worthwhile as investment concepts. And not all are directly related to investing and finance. Enjoy! – Greg


The Deception of Average

The World of Finance is fraught with misleading information.

The use of averages, in particular, is something that requires discussion. Figure 4.1 shows the compounded rates of return for a variety of asset classes. If I were selling you a buy-and-hold strategy, or an index fund, I would love this chart. Looking at the 85 years of data shown here, I could say that, if you had invested in small-cap stocks, you would have averaged 11.95 percent a year, and if you had invested in large-cap stocks, you would have averaged 9.85 percent a year. And I would be correct.

Figure 4.1

I think that most investors have about 20 years, maybe 25 years, in which to accumulate their retirement wealth. In their 20s and 30s, it is difficult to put much money away for many reasons, such as low incomes, children, materialism, college, and so on. Therefore, with that information, what is wrong with this chart? It is for an 85-year investment, and people do not have 85 years to invest. As said earlier, most have about 20 years to acquire their retirement wealth. and there are many 20-year periods in this chart where the returns were horrible. The bear market that began in 1929 did not fully recover until 1954, a full 25 years later; 1966 took 16 years to recover, 1973 took 10 years, and, as of 2012, the 2000 bear still had not recovered.

Table 4.1 shows the performance numbers for the asset classes shown in Figure 4.1 (LT—Long Term, IT—Intermediate Term). The cumulative numbers in Table 4.1 begin at 1 on December 31, 1925.

Table 4.1Hint: Be careful when someone uses inappropriate averages; or more accurately, uses averages inappropriately.

In Table 4.1, recall how the small-cap and large-cap compounded returns were about 12 percent and 10 percent, respectively. Figure 4.2 shows rolling 10-year returns by range since 1900. A rolling return means it shows the periods 1900–1909, 1901–1910, 1902–1911, and so on. You can clearly see that the small stock and large stock returns depicted in Table 4.1 fall within the middle range (8 percent–12 percent) in Figure 4.2, yet, of all the 10-year rolling periods, only 22 percent of them were in that range. Often, average is not very average. It reminds me of the story of the six-foot-tall Texan that drowned while wading across a stream that averaged only three-feet deep.

Figure 4.2

Another (and final) example shows how easily it is to be confused over what is average. And, of course, this time it is intentional. This example should put it in perspective. You cannot relate rates of change linearly. In Figure 4.3 , point A is 20 miles from point B. If you drive 60 mph going from point A to point B, but returning from point B to point A, you drive 30 mph. What is his average speed for the time you were on the road?

A. 55 mph

B. 50 mph

C. 45 mph

D. 40 mph

Figure 4.3

Many will answer that it is 45 mph ((60mph + 30mph)/2). However, you cannot average rates of change like you can constants and linear relationships. Distance is rate multiplied by time (d = rt). So time (t) is distance (d)/rate (r). The first leg from A to B was 20 miles divided by 60 mph or one-third of an hour. The second leg from B to A was 20 miles divided by 30 mph or two-thirds of an hour. Adding the two times (1/3+2/3 = 1 hour) will mean you traveled for one hour and covered a total distance of 40 miles, which has to mean the average speed was 40mph. Look up harmonic mean if you want more information on this, as it is the correct method to determine central tendency of data when it is in the form of a ratio or rate.

Figure 4.4 shows the 20-year rolling price returns for the Dow Industrials. The range of returns in this 127-year sample (1885–2012) is from a low on 08/31/1949 (of .3.71) percent to a high on 3/31/2000 (of 14.06 percent), a 17.77 percent range.

To help clarify rolling returns, if investors were in the Dow Industrials from 9/30/1929 until 8/31/1949 (the low mentioned previously), they had a return of .3.71 percent. Complementary, if they invested on 4/30/1980, then, on 3/31/2000, they had a return of 14.06 percent. The mean return is 5.2 percent and the median return 4.8 percent. When median is less than mean, it simply means more returns were less average. If you recall the long-term assumptions that are often used in the first part of this chapter (Figure 4.1), you can see there is a problem. The magnitude of errors in assumptions of long-term returns cannot be overstated and certainly cannot be ignored. This variability of returns can mean totally different retirement environments for investors who use these long-term assumptions for future returns. It can be the difference between living like a king, or living on government assistance. Institutional investors have the same problems if using these long-term averages.

Figure 4.4

One of the primary beliefs developed by Markowitz in the 1950s as the architect of Modern Portfolio Theory was the details on the inputs for the efficient investment portfolio. In fact, his focus was hardly on the inputs at all. The inputs that are needed are expected future returns, volatility, and correlations. The industry as a whole took the easy approach to solving this by utilizing long-term averages for the inputs — in other words, one full swing through all the data that was available, and the average is the one used for the inputs into an otherwise fairly good theory. Those long-term inputs are totally inappropriate for the investing horizon of most investors; in fact, I think they are inappropriate for all human beings. While delving into this deeper is not the subject of this book, it once again brings to light the horrible misuse of average. These inputs should use averages appropriate for the investor’s accumulation time frame.

One If by Land, Two If by Sea

Sam Savage is a consulting professor of management science and engineering at Stanford University, and a fellow of the Judge Business School at the University of Cambridge. He wrote an insightful book, The Flaw of Averages, in 2009, wherein he included a short piece called “The Red Coats” that fits right into this chapter.

Spring 1775: The colonists are concerned about British plans to raid Lexington and Concord, Massachusetts. Patriots in Boston develop a plan that explicitly takes a range of uncertainties into account: The British will come either by land or by sea. These unsung pioneers of modern decision analysis did it just right by explicitly planning for both contingencies. Had Paul Revere and the Minutemen planned for the single average scenario of the British walking up the beach with one foot on the land and one in the sea, the citizens of North America might speak with different accents today.

Incidentally, Dr. Savage’s father, Leonard J. Savage, wrote the seminal The Foundation of Statistics in 1972 and was a prominent mathematical statistician who collaborated closely with Milton Friedman.

Everything on Four Legs Is a Pig

Although this is unrelated to investments and finance, it is a story about averages that offers additional support to this topic. Doctors use growth charts (height and weight tables) for a guide on the growth of a child. What folks do not realize is that they were created by actuaries for insurance companies and not doctors. As doctors began to use them, the terms overweight, underweight, obese, and so on were created based on average. So if your doctor says you are overweight and you need to lose weight, he is also saying you need to lose weight to be average. And from a Wall Street Journal article by Melinda Beck on July 24, 2012, “The wide variations are due in part to rising obesity rates, an increase in premature infants who survive, and a population that is growing more diverse. Yet the official growth charts from the Centers for Disease Control (CDC) and Prevention still reflect the size distribution of U.S. children in the 1960s, 1970s, and 1980s. The CDC says it doesn’t plan to adjust its charts because it doesn’t want the ever-more-obese population to become the new norm.” And now you know.

During my last physical examination, I told my doctor about how these charts on height and weight were just large averages created by actuaries for insurance companies, and that I did not mind being above average. The chapter that follows focuses on the multibillion-dollar industry of prediction. I rarely am invited to be on the financial media anymore because I refuse to make a prediction; it is a fool’s game.


Thanks for reading this far. I intend to publish one article in this series every week. Can’t wait? The book is for sale here.

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