Enlightened Economics

Economics for an Enlightened Age

Archive for the ‘Statistics’ Category

• Financial and Economic Modelling – A Waste of Time?

Posted by Ron Robins on May 30, 2011

By Ron Robins. First published April 21, 2011, in his weekly economics and finance column at alrroya.com

“…both risk models and econometric models… are still too simple to capture the full array of governing variables that drive global economic reality,” wrote Alan Greenspan, former chairman of the US Federal Reserve in the Financial Times on March 16, 2008. And if anyone should know about the quality and predictive validity of such models, it would be Mr. Greenspan. Time and again it has been shown that reliance on the predictions from such models is foolhardy.

It was the reliance on, and failure of their predictions, that caused enormous global financial and economic carnage in 2008 and 2009. Yet today dependence on these models seems greater than ever. I suggest our overt focus and use of them is often a wasted effort.

A truth that many modellers and their followers seem to have difficulty accepting is that the past—which most modellers use to prognosticate the future—has frequently been shown to be a poor basis upon which to determine future outcomes. Modellers can continue to refine their models in great detail, and then some unusual event occurs with a one in a million chance of happening—such as the US sub-prime mortgage fiasco—and their models fail. Sadly, the variables which may encompass a one in a million event are numerous. Among them are sudden changes of investor attitudes, weather patterns, geological events, and political and social upheavals.

If we look around today from the sudden movements in sovereign bond markets to the extraordinary weather recently in Australia, to the horrific Japanese earthquake, tsunami and nuclear reactor troubles, to the political upheavals in North Africa and the Middle East—all are kinds of exogenous events that can trash the predictions of the most exacting risk or econometric model.

Furthermore, a ‘perfect’ econometric model would only be possible, metaphorically speaking, if the modeller had ‘the mind of the creator.’ Only then perhaps, could all be known and predicted. Sadly—and I do not mean any disrespect to the modellers—I do not believe that many (if any) of them have that level of intelligence and consciousness at this time. So those constituencies that trust in these models are doomed to suffer continuing disappointments.

Another problem with these models is how to model for human behaviour, as it is both rational and irrational at different and unpredictable times. Therefore, before such modelling can ever hope to fully succeed, it must completely understand human consciousness: who we are, and how and why we act. And the modellers are a long, long way from such an understanding. Incidentally, there is a branch of economics, ‘behavioural economics,’ that is moving in that direction. I wish them good luck with that!

Economists today, unlike those of earlier eras, seem to believe that the only way they can be perceived as legitimate is to be scientifically oriented. Hence their passion for increasingly complex models and their statistician-like orientation.

The type of economic modelling that incorporates mathematics and statistical relationships to economic data, is termed econometrics. Google econometrics and you will probably find over 5,000,000 links. They are largely links to innumerable academics, research institutions, studies, papers and journals. With so much effort put into this field, any independent observer could conclude that econometrics must be a highly successful and seemingly scientific endeavour. It reminds me of the enormous quest for artificial intelligence (AI) to recreate the abilities of the human mind in computers. At least AI is somewhat plausible as it advances the field of computing and robotics which have many, many practical applications that we all know about.

But unlike AI research, economic and econometric models—with their significant variances and failures—have much less to offer society at this time. Mark Thoma, Professor of Economics at the University of Oregon offers these pertinent remarks in his blog, Economist’s View, on February 8. “Much of the uncertainty in economics derives from our inability to do laboratory experiments, and that includes uncertainty about which model best describes the macroeconomy. When the present crisis is finally over, those who advocated fiscal policy, those who advocated monetary policy, and those who advocated no policy at all will all say ‘I told you so’ based upon their reading of the evidence… the answers you get are only as good as the model used to get them, and considerable uncertainty remains over which macroeconomic model is best.”

In the 19th century’s Europe and North America, there were no econometric models (not in the way we know of them today), yet those continents experienced unprecedented economic growth. And the concept of gross domestic product (GDP)—which is usually a top concern in econometric modelling—was not created and used until World War II.

We know that econometric models are unreliable in providing information on how economies behave as well as their projections of future economic activity. Similarly, modelling for financial risk has been shown to be more than problematic and history shows reliance on risk models brings eventual failure and grief.

Therefore, given the facts, we need to be much, much less anxious about trying to create perfect risk and econometric models—and not rely on these models, generally. After all, it was mostly intuition and drive, not decisions based on risk and econometric models that led our greatest inventors, financiers, entrepreneurs and leaders to great success, thereby creating our modern economies.

Copyright alrroya.com

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• The US Consumer Price Index: Let’s Have An Enlightened Approach!

Posted by Ron Robins on December 13, 2007

Update December 14, 2007

Media relentlessly publish the latest government statistics, and markets react to them, sometimes violently. Often your paycheque, government support payments and investment income are significantly influenced by them. But are they valid? Some astute economists and statisticians conclude there is obfuscation of these statistics, and subsequent misrepresentation of them in the media – who usually have neither the time nor expertise to examine them. Take the US ‘consumer price index’ or CPI. These authoritative observers note that the current US CPI incorporates numerous and continuous changes in components and weightings of components within the index, rendering it a mostly theoretical exercise based on highly questionable hypotheses.

According to John Williams (a private New Jersey consulting economist who has specialized in government statistics for several decades), the “Cost of living was being replaced by the cost of survival. The old system told you how much you had to increase your income in order to keep buying steak. The new system promised you hamburger, and then dog food, perhaps, after that.” (The old system, Mr. Williams says, existed prior to the Clinton Administration.)

On his website at http://www.shadowstats.com/cgi-bin/sgs/article/id=343, Mr. Williams states that, “Inflation, as reported by the [US] Consumer Price Index (CPI) is understated by roughly 2.7% per year… due to recent redefinitions of the series as well as to flawed methodologies, particularly adjustments to price measures for quality changes.”

Mr. Williams discusses how the government statisticians include a concept called ‘hedonics’ to adjust values in the index. He states, “Hedonics adjusts the prices of goods for the increased pleasure the consumer derives from them. That new washing machine you bought did not cost you 20% more than it would have cost you last year, because you got an offsetting 20% increase in the pleasure you derive from pushing its new electronic control buttons instead of turning that old noisy dial, according to the BLS [US Bureau of Labor Statistics].”

Williams continues, “When gasoline rises 10 cents per gallon because of a federally mandated gasoline additive, the increased gasoline cost does not contribute to inflation. Instead, the 10 cents is eliminated from the CPI because of the offsetting hedonic thrills the consumer gets from breathing cleaner air. The same principle applies to federally mandated safety features in automobiles. I have not attempted to quantify the effects of questionable quality adjustments to the CPI, but they are substantial.”

The way US housing costs are included is another oddity, keeping that component — at 32% of the CPI — low. Despite two-thirds of the US population living in their own homes, the statisticians use theorized ‘imputed’ home rents as the basis for the housing statistic! Of course rents have been virtually stagnant for years — even going down in many cities due to overbuilding — while home purchase prices, insurance and local taxes, etc., have been going through the roof!

For those Americans dependent on CPI adjustments to their welfare, social security or other government payments, they have had their payments massively depressed. Williams says that US government welfare and social security payments are now 70% lower than what they would have been had the old 1970s style CPI been used with its fixed basket of goods.

Another astute statistician, Jim Willie, elaborates further on this point. In Domino Distortions from Inflation, an article on his website at http://www.goldenjackass.com/jwarticles.html, he comments, “In my view, the [US] CPI has become little more than a measure intended to exploit the trend of falling imported finished product prices, in order to keep cost of living raises down in US Government pensions of various types…The CPI is kept low by ignoring numerous rising prices, such as property taxes, town usage fees (water, sewer, sanitation), professional services (doctor, dental, lawyer), home services (carpentry, plumbing, electrical, roofing), college tuition, restaurant meals, sports club fees, and more.”

The US CPI affects not only Americans, but consumers and investors everywhere. US domestic and global interest rates, bond yields, and returns from many other investments — all are significantly influenced by it.

It is worth remembering that the BLS is headed by a political appointee, who just may have certain biases towards statistical methodologies that most please the government — as well as to what gets out to the media.

Reviewing the December 2007 charts on Mr. Williams’ website, we can easily see the startling differences in outcomes with the varying CPI methodologies used over the past thirty years. Using the CPI methodology as it was in 1980 shows inflation today rising +12% year-over-year; employing the CPI methodology as of 1990 shows inflation higher now by +7.5%. However, today’s BLS press release has their CPI-U (urban dwellers) gaining just +4.3% over the past year!

Is the current US government reported CPI presented to play down inflation, to artificially reduce interest rates, social secuurity payments, and government payouts dependent on CPI indexing? I believe so. And it is simply unethical. As the public begins to see through these deceptions, an enlightened economics can begin to truly flourish!

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© Ron Robins, 2007.

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• Unethical US Job Numbers?

Posted by Ron Robins on December 6, 2007

The business world waits with trepidation, the first Friday of each month, the release of the US unemployment/employment numbers. Stock, bond, currency and commodity markets often swing wildly with their release. The media focus on the numbers presented, and discuss their relevance to economic activity. But where is the analysis, the critique, of how these numbers are generated — or of their actual reliability?

Do all economists really believe that the US government’s unemployment data (and other statistics too) are beyond reproach? Are the big banks’ economists too afraid to dig into the numbers for fear of offending or confusing employers and clients? Where is the role of honesty, of ethical responsibility, to the publics these institutions serve?

Fortunately, discussion concerning the ethics and reliability of economic statistics does occasionally appear.

For instance, last year Philipp Bagus asserted in an article, The Problem of Accuracy of Economic Data, August 17, 2006, (http://www.mises.org/story/2280) “[That] we … face the question of why the problem of accuracy of economic data is rarely mentioned or passed over in silence in economics, while in the physical sciences this problem is widely acknowledged.” Further, “In contrast to physics, there is still no estimate of statistical error within economics. The various sources of error that come into play in the social sciences suggest that the error in economic observations is substantial… Economic statistics cannot be accepted at face value.”

In my research on US unemployment data, I have discovered some disquieting information. First of all, they concern the elimination of ‘discouraged workers,’ who used to be in the figures.

Discouraged workers are those who have been looking for employment for more than a year and have given-up looking for a job. They used to be included in the main unemployment numbers, but are now, conveniently left out! John Williams, statistician and economist, believes that when ‘discouraged’ workers and other ‘distorting factors’ are accounted for, then the true unemployment rate, measured in much the same way as it had been historically, would be closer to 12%! (See Welling@Weedon, February 21, 2006, Shadowing Reality interview with John Williams). At the time of Mr. Williams citing this, the US February 2006 unemployment rate was 4.7%, which is the same as for November 2007.

The second major concern is the inclusion in the non-seasonalized data — which influences the media headlined seasonally adjusted numbers — of escalating theoretically derived employment numbers from the business ‘Birth-Death Model.’ This model created by the US Bureau of Labor Statistics (BLS), tracks the purported, yet hypothetical, net employment changes caused by business births and deaths.

Notice how the job gains in the Birth-Death Model have grown from less than half in 2004 to almost equalling the total employment gains in 2007? It begs the question as to how much of 2007’s employment gains are theoretically derived from the Birth-Death Model, and how much are real? The BLS appears silent on this point. With regard to the Birth-Death Model, the BLS states, “[The] BLS will continue researching alternative model-based techniques for the net birth/death component; it is likely to remain as the most problematic part of the estimation process.” Yes, it is certainly problematic.

The lack of analysis of jobs and other US economic data by mainstream economists and media is abysmal. Let economists and business journalists especially, take a lead in an illuminating debate around the make-up and ethics of such economic statistics. So far these individuals have really let down the publics they serve in this regard.

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