Overstated Operating Earnings Increase Risk For The S&P 500 Even After Index Falls In 2022

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Operating Earnings calculated by S&P Global (SPGI) for the S&P 500 overstate Core Earnings,[1] throughout 2021.

Stocks are more expensive than they appear based on Operating Earnings. Despite falling ~6% in 2022, the S&P 500’s current valuation requires more earnings growth than analysts expect, which increases downside risk for the index.

S&P Global’s Earnings Fall and Rebound Are Overstated

Over the past two years, S&P 500 company profits did not decline as much, nor has the rebound been as robust, as SPGI’s Operating Earnings lead investors to believe. For 2021 versus 2020:

  • SPGI’s Operating Earnings improved from $122.37/share to $208.07/share, or 70%
  • Core Earnings improved from $123.17/share to $197.29/share, or just 60%
  • SPGI’s Operating Earnings were 1% below Core Earnings in 2020 and are 5% higher in 2021.

The reason for these differences is that SPGI’s Operating Earnings contain unusual expenses that lead to an exaggerated decline in 2020 and unusual income that lead to an exaggerated rebound in 2021. See Figure 1.

Figure 1: Trailing Twelve Month Earnings: Core Earnings vs. SPGI Operating Earnings: 4Q19 –4Q21[2]

Core Earnings Vs SPGI Operating Earnings Through 2021

New Constructs, LLC

Sources: S&P Global (SPGI). Note: the most recent period’s data for SPGI’s Operating Earnings is based on consensus estimates for companies with a non-standard fiscal year.

More details on the Core Earnings calculation is available in Appendix I.

S&P 500 Is More Expensive than Operating Earnings Imply

At the end of 2021, Core Earnings for the S&P 500 reached new highs, surpassing previous records set in the TTM ended 2Q21 and 3Q21. The bear market that began in 2022 has closed the gap between the S&P 500’s valuation and its true fundamentals, but not as much as many investors think.

As Operating Earnings continue to overstate the S&P 500’s Core Earnings, the index requires continued growth in investor optimism about future profits to support its valuation. We’ve already seen many companies report slowing growth, which has helped drive the market into “correction” territory multiple times this year. As long as investors perceive earnings as higher than they truly are, they are taking more downside risk than they realize.

Figure 2 shows the S&P 500 trailing P/E ratios based on Core Earnings and SPGI’s Operating Earnings have fallen significantly from their peaks in March 2021. Prices have come down relative to earnings since valuations peaked in 2021, but the faster rebound in SPGI’s Operating Earnings results in a lower P/E ratio based on Operating Earnings than when using Core Earnings. The S&P 500 looks inexpensive when valued using Operating Earnings, but that is not the case when the more accurate Core Earnings measure is used.

Figure 2: Price-to-Core vs. Price-to-SPGI’s Operating Earnings: TTM as of 12/31/15 – 3/11/22

Core Vs. Operating PE Ratios Through 20220311

New Constructs, LLC

Core Earnings P/E ratio is aggregating the TTM results for constituents through 6/30/13 and aggregating four quarters of results for the S&P 500 constituents in each measurement period thereafter. SPGI’s P/E is based on four quarters of aggregated S&P 500 results in each period. More details in Appendix II.

Core Earnings are a Less Volatile and More Reliable Measure of Earnings

Figure 3 highlights the percentage changes in Core Earnings and SPGI’s Operating Earnings from 2004 to present (through 3/11/22). The difference between the measures is driven by flaws in legacy datasets that lead to a failure to capture unusual gains/losses buried in footnotes.

Figure 3: Core vs. SPGI’s Operating Earnings per Share for the S&P 500 – % Change: 2004 – 3/11/22

Change In Core Vs Operating Earnings Since 2004 Through 2021

New Constructs, LLC

Core Earnings analysis is based on aggregated TTM data through 6/30/13, and aggregated quarterly data thereafter for the S&P 500 constituents in each measurement period.

Disclosure: David Trainer, Kyle Guske II, and Matt Shuler receive no compensation to write about any specific stock, style, or theme.

Appendix I: Core Earnings Methodology

In the Figures above, I use the following to calculate Core Earnings:

  • aggregated annual data for constituents in the S&P 500 for each measurement period through 6/30/13
  • aggregated quarterly data for constituents in the S&P 500 for each measurement period post 6/30/13 to the present

While I prefer aggregated quarterly numbers, I have examined the potential impacts of the two methodologies and have found no material differences.

Appendix II: P/E Ratio Methodology for Core & SPGI’s Operating Earnings

In Figure 3 above, I calculate the price-to-Core Earnings ratio through 6/30/13 as follows:

  1. Calculate a TTM earnings yield for every S&P 500 constituent
  2. Weight the earnings yields by each stock’s respective S&P 500 weight
  3. Sum the weighted earnings yields and take the inverse (1/Earnings Yield)

I calculate the price-to-Core Earnings ratio for periods post 6/30/13 as follows:

  1. Calculate a trailing four quarters earnings yield for every S&P 500 constituent
  2. Weight the earnings yield by each stock’s respective S&P 500 weight
  3. Sum the weighted earnings yields and take the inverse (1/Earnings Yield)

I use the earnings yield methodology because P/E ratios don’t follow a linear trend. A P/E ratio of 1 is “better” than a P/E ratio of 30, but a P/E ratio of 30 is “better” than a P/E ratio of -15. In other words, aggregating P/E ratios can result in a low multiple due the inclusion of just a few stocks with negative P/Es.

Using earnings yields solves this problem because a high earnings yield is always “better” than a low earnings yield. There is no conceptual difference when flipping from positive to negative earnings yields as there is with traditional P/E ratios.

By using quarterly data as soon as its available, I better capture the impact of changes to S&P 500 constituents on a quarterly basis. For example, a company could be a constituent in 2Q18, but not in 3Q18. This method captures the continuously changing nature of the S&P 500 constituency.

For all periods in Figure 3, I calculate the price-to-SPGI’s Operating Earnings ratio by summing the preceding 4 quarters of Operating Earnings per share and, then, dividing by the S&P 500 price at the end of each measurement period.

[1] Core Earnings research is based on the latest audited financial data, which is the calendar 2021 10-K in most cases. Operating Earnings from S&P Global is based on the same time frame.

[2] 4Q21 refers to financial data for calendar 2021 10-Ks and price data as of 3/11/22 (earliest date for which all the calendar 2021 10-Ks for the S&P 500 constituents were available).

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