You’re Fired! The REAL Reason Behind the Job Revisions and Why the BLS Commissioner Should NOT be Blamed
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You’re Fired! The REAL Reason Behind the Job Revisions and Why the BLS Commissioner Should NOT be Blamed

“For the FOURTH month in a row, jobs numbers have beat market expectations with nearly 150,000 good jobs created in June. American-born workers have accounted for ALL of the job gains since President Trump took office and wages continue to rise.”

— White House Press Secretary Karoline Leavitt, July 3rd, 2025

“In my opinion, today’s Jobs Numbers were RIGGED in order to make the Republicans, and ME, look bad.”

— President Donald Trump, August 1st, 2025

What a difference a month makes. Strong leaders share the credit and accept the blame. Weak leaders take all the credit and lay the blame on others.

Talk about a classic case of shooting the messenger. If you don’t trust the nonfarm payroll data, then just go to the companion Household Survey, which showed a huge -260k jobs decline in July and is down -402k since the end of the first quarter (in the aftermath of all the tariff-related uncertainty, if you are seeking out a culprit). And with no revisions to blame, either. What a sham. We are on a slippery slope, folks.

President Trump said BLS Commissioner Erika McEntarfer would be “replaced with someone much more competent and qualified,” claiming in a social-media post that the government’s jobs numbers were manipulated. What utter nonsense, but nary a peep from Congress, who worry about being primaried, or from the business media, either. Never mind that Ms. McEntarfer wasn’t merely nominated to the post by then-President Joe Biden, but she was also confirmed by the Senate on an 86-8 vote in January 2024 — and Vice President JD Vance, then a senator, was among those voting for her! Did she all of a sudden become incompetent? Hard to fathom. I hardly would fire a BLS commissioner because of the headline or revisions to the data, which are normal — in fact, the sort of downward revisions we saw in the last two months, while very large, is hardly without precedent. We have seen revisions close to this no fewer than two dozen times, going back to 1980. Nobody else ever got fired over it. This was a large two-month downward revision, to be sure, but that is only because the numbers in May and June were grossly overstated, and every other employment statistic showed that nonfarm payrolls were the odd man out. And the revisions only corrected that anomaly.

The plain fact of the matter is that there is nothing insidious or nefarious going on. No attempt to mislead and no sloppy usage of the data. No case for Erika McEntarfer, who has been a government statistician since 2002, covering a span where Bush, Obama, Biden, and Trump were in the Oval Office, to be fired. This is one part ruse and one part deflection. That’s all it is. The fact that this last two-month revision (-258k) was so big only attests to how the Establishment Survey was so out of sync with the other data, which is why the consensus on the first data release has been consistently below what came out initially. So, I ask: what is so difficult to figure out here beyond the sampling problem, which the BLS did not create?

The issue is with the post-COVID plunge in the business “response rate.” This is not about the BLS, which is forced to deal with the data that companies send in with respect to the initial release.

It seems completely lost in this discussion that the root of the problem is the historically low company response rate to the first round of the monthly survey — this is a survey that depends on business cooperation, and the reality is that the response rate does not approach anything that can be considered reliable until that second revision comes in. Maybe the BLS should simply stop publishing the payroll data so quickly — think of the first release as something no more than an incomplete snapshot of the labor market, because it is no easy task “to get it right” in the days that follow a month in a market as complex and as large as a 170 million person labor force, not to mention all the churning that goes on beneath the surface. What we gain in speed of delivery of the data, we lose in veracity, given the naturally lower sample size once the response rate rises in the next two months.

The one thing to consider is that it is an entire employment report, replete with a wealth of information beneath the headline, even if incomplete at first. But there is typically a high error term in the first go-around, especially since the pandemic, as a low share of 58% of businesses now get in their responses on time for the first payroll release. Pre-COVID, it was over 80% in terms of the response rate. By the time the third revision comes in, the response rate goes to 94%, where it’s mostly been in the past, and it is only then that the BLS truly has enough information collected for anyone to get an accurate portrayal of what the labor market really looked like in the month of the first release. 

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It’s really something that people are only now paying attention to — the fact that first estimates get revised as more accurate information is received. This has been a fact of life… forever. Nobody was talking about it a month ago, funny enough. And there will be future benchmark revisions as even more information comes in. Everyone who follows the data closely knows that there is a high error term in the initial release of everything from payrolls to retail sales, to GDP. It is all written up each month in the detailed notes to the data releases. The price paid for receiving information quickly is the accuracy, as it pertains to the initial report. Nobody is amazed that we got the July data on the first day of August? And this number will get revised too, for sure. These are preliminary estimates with a large error term only because the sample size for the first stab at the employment report is so small. Why is everyone so shocked?

It’s not as if the BLS hides the fact that the smaller the sample size, the larger the error term… this quote below is taken right from the report (the range of possibilities is huge, but is stated for the record):

“[…] the confidence interval for the monthly change in total nonfarm employment from the establishment survey is on the order of plus or minus 136,000 […] The precision of estimates also is improved when the data are cumulated over time […] in the establishment survey, estimates for the most recent 2 months are based on incomplete returns; for this reason, these estimates are labeled preliminary in the tables. It is only after two successive revisions to a monthly estimate, when nearly all sample reports have been received, that the estimate is considered final.”

Maybe the way the BLS reports the data should be changed, but it is at the behest of the companies reporting their payroll on time and accurately. Maybe those in the trading pits should be forced to wait two to three months for the better estimate instead of being spoon-fed something quick with a low sample size.

You just need to compare the business response rate of the first nonfarm payroll estimate to the month containing the third revision — as aforementioned, from around 58% to 94% — to see how the BLS is forced to make guesswork out of the 42% of the business universe that fail to report their headcount on time. The information trickles in over the next two months. Maybe there should be a financial penalty applied to the firms that don’t send in their information on time. I’ve been talking about this discrepancy for the past few years… and, in fact, the revisions have constantly been on the downside.

The next question is why have the revisions been squarely to the downside, even before last Friday’s report? Prior to what we saw unfold on Friday, there were downward revisions to every month of the year, and they totaled -208k. That was before the downward two-month revision of -258k in May and June. Ergo, this has been a pattern all year long and transcends what happened in the July report.

There is also the question as to why the data are constantly being revised lower. This is akin to asking why the prior payroll data were so artificially inflated. Once again, at the time of that initial release, the BLS is compelled to deal with a whack load of guesswork. It must fill in the gaps from the fact that, once again, the initial response rate is so low. There is a huge information gap. The lower the sample size, the wider the confidence interval and the higher the error term — a basic premise of statistical analysis. The issue is that since COVID-19, the small business sector, in particular, has been slow to send in their updated staffing numbers to the BLS in time for that first survey. And we know for a fact that the small business sector (fewer than 50 employees) has created no jobs at all over the past six months and have, on net, fired -42k workers over the May-July period. The BLS very likely was extrapolating small business job creation that simply did not exist over the spring and into the summer, and that anomaly was corrected last Friday. End of story. 

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Nobody from the White House discusses this, but what happened on Friday with the revisions is that the nonfarm payrolls survey, which had been the odd man out, was brought into alignment with the vast array of other very soft labor market indicators of late. For example, the average private sector nonfarm payroll print of +52k, from May to July, now more closely approximates (actually a little higher) the ADP comparable of +37k. Mr. President — it’s not as if the BLS is any further away from telling the same story as ADP is. Do you want to know the name of the person who is President and CEO of ADP so you can dismiss them too (if you can)? Her name is Maria Black. Maybe she needs to be subpoenaed.

Over this same May-July period, the Fed’s Beige Book showed nearly half the country posting flat to negative job growth. All the payroll numbers did on Friday was reflect that. The University of Michigan’s July consumer sentiment data on employment lined up as the fourth-worst reading since the end of the Global Financial Crisis in early 2009. The Conference Board’s consumer confidence survey showed that only 30% of those polled believed that jobs were “plentiful,” the second-lowest since March 2021 — surely households would have a pretty good idea of what their job situation is, don’t you think? But just in case you want to have the President and CEO of the Conference Board fired too, his name is Steve Odland, and I’m sure he is not too hard to find.

There are plenty of culprits around these days spreading bad labor market news. Be done with them all!

Christian Perera

Data Science Specialist Seeking Contract Position | MS PowerBI Certified | SQL Proficiency |Tableau Proficiency | Python Proficiency | Passion For Data Driven Business Intelligence

3w

It's the BLS commissioner's job to ensure the response rates are high enough to be statistically meaningful. If the response rates are not high enough, she's not doing her job hence needs to be replaced which someone who CAN increase response rates to the necessary levels.

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Larry Dyer

Retired US Rate Strategist as of September 2023

1mo

Thanks for the analysis.

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Neil M B.

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1mo

lies, damn lies, stats

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Thierry Tremblay

Portfolio Manager at iA Private Wealth

1mo

Thanks for sharing, David

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Jack Kendall

I put the “SENIOR” in INTERIM Sr Finance/FP&A Leader | Most helpful for 6-18 months during periods of transition | at Companies from $15M to $800M, revenue family owned to global publicly traded

1mo

There is a much simpler solution to report monthly jobs dated in the United States: Require that the major payroll providers, such as ADP, Paycom, Paycor, etc., report their payroll data to the government each month. That will be far more accurate and much simpler than surveying thousands of businesses. All of the data about jobs and payroll that one would want to evaluate would be contained in those data feeds from the major payroll providers.

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