The Failure of Economics Statistics

The Failure of Economics Statistics
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Jeffrey A. Tucker
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Commentary

There is the reality all around us—restaurants struggling to survive, bills eating household income, jobs ever less secure, costs soaring for all enterprise, even the local dollar stores hitting hard times—and there are the macroeconomic statistics reported daily by the media. They seem to have ever less connection to each other.

Why do we have macroeconomic statistics? We all want to know more about the world outside of our direct experience. That is especially true for those whose livelihoods are bound up with knowing. For economics, that includes academics, investors, and just regular business people who are trying to make plans and would like to make sense of their prospects in a different market.

Starting about a century ago, a new market for data opened up. It was for government planners to exercise newly granted powers to plan the economy better than markets. The idea was that with better data, they could do a better job of adjusting outcomes in a way that would be more socially optimal.

The data collection industry was born. And it grew and grew, taking a huge leap in the 1930s, during which time governments and central banks embarked upon a grand plan to tame business and trade cycles. They imagined themselves to have various levers in control rooms, with handles and names such as “fiscal policy” and “monetary policy.” They would pull and push these levers to smooth out the recklessness of markets.

If you head to Washington today and go to the Federal Trade Commision, you will see an impressive statue from the 1930s called “Man Controlling Trade.” It’s a muscular man representing government and a wild horse representing the market economy. The man is successfully keeping the market in check. That’s how it was imagined to work back then and still today.

To be sure, we’ve learned that the reality is otherwise. It is more like the horse is riding the man or actually the horse is pulling the man, depending on your perspective. The man only intervenes to get something for himself, not to serve the public. If that outlook sounds dark, have a look at the operation of any sector of economic life and look at it honestly. You will see, if you look carefully, that the storied vision of how it is supposed to work contradicts the reality.

In any case, back to statistics. Consistent with the way in which our times have lost faith in so much of what is called “science,” the science of data collection for purposes of economic planning has not gone well. For instance, back in the 1960s, it was widely believed that there was a consistent tradeoff between inflation and unemployment. When one was up, the other was down. It was said to be possible to control each element by manipulating the other.

To some extent, Fed Chair Jerome Powell seems to believe something like this now. His idea of controlling inflation was not, at least overtly, to better manage the money stock but rather to “slow down” economic growth that is believed to be the underlying cause of inflation. At least that is what he said.

And yet when you think about this alleged tradeoff, it keeps being contradicted by reality. In the 1970s, we saw our first big bout of what was named stagflation, when both inflation and unemployment were high. At that point, the Fed had no idea what to do. And in our own time, we had low inflation and low unemployment for nearly two decades when suddenly they began to see-saw in strange ways with lockdowns. Unemployment soared but inflation stayed low until inflation rose and unemployment went back down. Now we are seeing inflation still high and unemployment rising with it.

That’s a problem with the theory, but there’s an even more fundamental problem with the data collection itself. When we see numbers and charts, there is something in the modern human brain that suspends incredulity. We simply take it for granted that what we are seeing is true.

We saw this in COVID-19. The charts were everywhere: exposure, infection, cases, hospitalizations, and deaths, and they were presented in waves. We thought we were following the science. We were told to look at the data and follow the science. We heard it over and over like a mantra. But people rarely if ever stopped and wondered: Is any of this even true?

Obviously, the case and infection data were entirely contingent on testing, and the testing results were themselves contingent on accuracy, and the death data were contingent upon a judgment call concerning the cause of death. Put it all together with possible errors and what do you end up with? We came to realize that much of what we were being told was accurate was, in fact, complete gibberish.

Sadly, the same thing is happening in economics today. What the Bureau of Labor Statistics (BLS) reports as true inflation does not comport with anything being pushed by industry. Groceries are a good example. The consumer price index lists them as up by 20 percent over four years, but industry puts the figure closer to 34 percent. It’s the same with cars: The rates of inflation are double what government reports. Meanwhile, many costs are not reported at all, such as taxes, interest, or home prices.

It reaches absurdity with home prices because government reports “owners equivalent rent” rather than, you know, the actual home prices. We end up with figures that are twice as high as government reports.

(Data: Federal Reserve Economic Data (FRED), St. Louis Fed; Chart: Jeffrey A. Tucker)
(Data: Federal Reserve Economic Data (FRED), St. Louis Fed; Chart: Jeffrey A. Tucker)

As for the gross domestic product numbers, take them with a grain of salt. That’s because some 17 percent of the number is attributable to increases in government spending. Take that away from the total and you turn numbers in the black to numbers in the red. And if you want to go further and adjust those by actual inflation numbers as compared with BLS fictions, you end up with deep recessionary conditions.

We just learned that the jobs numbers have been overstated for two years by some 1.2 million jobs that really do not exist. In searching for a reason for such an egregious error, we come across a strange statistical adjustment deployed by the BLS called the “birth-death” rate—not of lives but of businesses.

What in the world is this? Well, the BLS has a model that estimates based on historical data how many businesses have formed versus how many have gone out of business. They smash this together with surveys and adjust the results. What you end up with is a complete fiction, some kind of cockamamie bureaucratic baloney that does not comport with any reality.

And keep in mind that they are running this model during times of epic business failure as lockdowns wrecked countless small businesses around the country. Extend your historical data far enough and you can pretend as if this never happened, which means that you can estimate jobs data in ways that entirely circumvent all existing business conditions. That is apparently what they did, which means that we are likely going to see dramatic downward revisions hit following the election in November.

Mark my words, come January, we are going to get a backward-dated recession that will extend six months at least but maybe even more. A fully honest reporting would likely revise the economic history all the way back to March 2020. I doubt they will go that far because doing so would be too much honesty too soon. We’ll likely have to wait decades for that kind of brazen transparency.

It’s bad enough that government collects all these data in order to “plan, regulate, control, or reform various industries—or impose central planning and socialization on the entire economic system,” as Murray Rothbard wrote in 1961. It’s even worse when one discovers that no one can even trust the results. It’s garbage in, garbage out.

I’m hardly alone in feeling a sense of shock that we cannot actually believe the data coming out of these government agencies. Everyone depends on that information. We don’t really have alternatives overall even if we have snippets from this or that industry. Mostly we are stuck with the data we have, however fictional. That is quite the commentary on the Age of Science, isn’t it?

Views expressed in this article are opinions of the author and do not necessarily reflect the views of The Epoch Times.
Jeffrey A. Tucker
Jeffrey A. Tucker
Author
Jeffrey A. Tucker is the founder and president of the Brownstone Institute and the author of many thousands of articles in the scholarly and popular press, as well as 10 books in five languages, most recently “Liberty or Lockdown.” He is also the editor of “The Best of Ludwig von Mises.” He writes a daily column on economics for The Epoch Times and speaks widely on the topics of economics, technology, social philosophy, and culture.