Posts filed under 'Global warming'
I often say—it is even the main theme of this blog—that people are too certain. This is especially true when people report results from classical statistics, or use classical methods when implementing modern, Bayesian theory. The picture below illustrates exactly what I mean, but there is a lot to it, so let’s proceed carefully.
Look first only at the jagged line, which is something labeled “Anomaly”; it is obviously a time series of some kind over a period of years. This is the data that we observe, i.e. that we can physically measure. It, to emphasize, is a real, tangible thing, and actually exists independent of whatever anybody might think. This is a ridiculously trivial point, but it is one which must be absolutely clear in your mind before we go on.
I am interested in explaining this data, and by that I mean, I want to posit a theory or model that says, “This is how this data came to have these values.” Suppose the model I start with is
A: y = a + b*t
where y are the observed values I want to predict, a and b are something called parameters, and t is for time, or the year, which goes from 1955 to 2005. Just for fun, I’ll plug in some numbers for the parameters so that my actual model is
A’: y = -139 + 0.07*t
The result of applying model A’ gives the little circles. How does this model fit?

Badly. Almost never do the circles actually meet with any of the observed values. If someone had used our model to predict the observed data, he almost never would have been right. Another way to say this is
Pr(y = observed) ~ 0.04
or the chance that the model equals the observed values is about 4%.
We have a model and have used it to make predictions, and we’re right some of the time, but there is still tremendous uncertainty in our predictions left. It would be best if we could quantify this uncertainty so that if we give this model to someone to use, they’ll know what they are getting into. This is done using probability models, and the usual way to extend our model is called regression, which is this
B: y = a + b*t + OS
where the model has the same form as before except for the addition of the term OS. What this model is saying is that “The observed values exactly equal this straight line plus some Other Stuff that I do no know about.” Since we do not know the actual values of OS, we say that they are random.
Here is an interesting fact: model A, and its practical implementation A’, stunk. Even more, it is easy to see that there are no values of a and b that can turn model A into a perfect model, for the obvious reason that a straight line just does not fit through this data. But model B always can be made to fit perfectly! No matter where you draw a straight line, you can always add to it Other Stuff so that it fits the observed series exactly. Since this is the case, restrictions are always placed on OS (in the form of parameters) so that we can get some kind of handle on quantifying our uncertainty in it. That is a subject for another day.
Today, we are mainly interested in finding values of a and b so that our model B fits as well as possible. But since no straight line can fit perfectly, we will weaken our definition of “fit” to say we want the best straight line that minimizes the error we make using that straight line to predict the observed values. Doing this allows us to guess values of a and b.
Using classical or Bayesian methods of finding these guesses leads to model A’. But we are not sure that the values we have picked for a and b are absolutely correct, are we? The value for b might have been 0.07001, might it not? Or a might have been -138.994.
Since we are not certain that our guesses are perfectly correct, we have to quantify our uncertainty in them. Classical methodology does this by computing a p-value, which for b is 0.00052. Bayesian methodology does this by computing a posterior probability of b > 0 given the data, which is 0.9997. I won’t explain either of these measures here, but you can believe me when I tell you that they are excellent, meaning that we are pretty darn sure that our guess of b is close to its true value.
Close, but not exactly on; nor is it for a, which means that we still have to account for our uncertainty in these guesses in our predictions of the observables. The Bayesian (and classical1) way to approximate this is shown in the dashed blue lines. These tell us that there is a 95% chance that the expected value of y is between these lines. This is good news. Using model B, and taking account of our uncertainty in guessing the parameters, we can then say the mean value of y is not just a fixed number, but a number plus or minus something, and that we are 95% sure that this interval contains the actual mean value of y. And that interval looks pretty good!
Time to celebrate! No, sorry, it’s not. There is one huge thing still wrong with this model: we cannot ever measure a mean. The y that pops out of our model is a mean and shares a certain quality with the parameters a and b, which is that they are unobservable, nonphysical quantities. They do not exist in nature; they are artificial constructs, part of the model, but you will never find a mean(y), a, or b anywhere, not ever.
Nearly all of statistics, classical and Bayesian, focuses its attention on parameters and means and on making probability statements about these entities. These statements are not wrong, but they are usually beside the point. A parameter almost never has meaning by itself. Most importantly, the probability statements we make about parameters always fool us into thinking we are more certain than we should be. We can be dead certain about the value of a parameter, while still being completely in the dark about the value of an actual observable.
For example, for model B, we said that we had a nice, low p-value and a wonderfully high posterior probability that b was nonzero. So what? Suppose I knew the exact value of b to as many decimal places as you like. Would this knowledge also tell us the exact value of the observable? No. Well, we can compute the confidence or credible interval to get us close, which is what the blue lines are. Do these blue lines encompass about 95% of the observed data points? They do not: they only get about 20%. It must be stressed that the 95% interval is for the mean, which is itself an unobservable parameter. What we really want to know about is that data values themselves.
To say something about them requires a step beyond the classical methods. What we have to do is to completely account for our uncertainty in the values of a and b, but also in the parameters that make up OS. Doing that produces the red dashed lines. These say, “There is a 95% chance that the observed values will be between these lines.”
Now you can see that the prediction interval—which is about 4 times wider than the mean interval—is accurate. Now you can see that you are far, far less certain than what you normally would have been had you only used traditional statistical methods. And it’s all because you cannot measure a mean.
In particular, if we wanted to make a forecast for 2006, one year beyond the data we observed, the classical method would predict 4.5 with interval 3.3 to 5.7. But the true interval for the prediction of the interval, while still 4.5, has the interval 0.5 to 9, which is three and a half times wider than the previous interval.
…but wait again! (”Uh oh, now what’s he going to do?”)
These intervals are still too narrow! See that tiny dotted line that oscillates through the data? That’s the same model as A’ but with a sine wave added on to it, to account for possibly cyclicity of the data. Oh, my. The red interval we just triumphantly created is true given that model B is true. But what if model B was wrong? Is there any chance that it is? Of course there is. This is getting tedious—which is why so many people stop at means—but we also, if we want to make good predictions, have to account for our uncertainty in the model. But we’re probably all exhausted by now, so we’ll save that task for another day.
1Given the model and priors I used, this is true.
March 9th, 2008
Tim Hall at the Goddard Institute for Space Studies invited me to give a seminar on statistical hurricane modeling. A link to my presentation is below.
Tim, with Stephen Jewson, is doing some interesting work on modeling hurricane tracks, so far mainly in the Atlantic. He has some papers on the GISS web site which you can download. He’s using this work to better quantify landfall frequencies, which are of obvious interest.
What I found most intriguing is that he’s able to show how the location of tropical storm cyclogenesis shifts towards Africa as sea surface temperature increases. Storms born here can tend to be stronger, but they are also less likely to make landfall in the US because of the greater distance.
I got some good comments on my model. Some people did not like that I used the AMO and instead asked for direct SST measures. Well, some like the AMO and some don’t. But I’m perfectly happy to try SSTs. At the least, it’ll make my model a better forecast model.
Didn’t get to meet Hansen, as he’s obviously too busy most of the time. Tim told me that he receives so many requests to come and give talks, that some of the other staff sometimes takes his place.
Here is my talk, in PDF format. Not too many words on the slides, I’m afraid, as I really hate words on slides. Nothing worse than having somebody read words on a slide that everybody in the room can already see. But you can go to my resume page and download the paper to get some words.
March 7th, 2008
A couple of days ago I wrote that people from Titan TV interviewed me, and a slew of others, at the Heartland Climate Conference. Their piece is now on the web and can be found here. I didn’t make the cut, sadly; proving once again I have the perfect face for radio.
I gather, by the selection and arrangement of the sounds bites presented, the Titan TV reporter was attempting irony and humor, which I can tell you ain’t easy. Most who try fail.
Oh—and you’ll get this if you watch the two-minute video—I do not own a car, or motorcycle, or any other form of transportation, not even a bike, and I have not owned any of these for over a decade. I walk most places and I actually do use those miniature fluorescent light bulbs to illuminate my exorbitantly expensive 800 square feet, but only to foil Con Edison’s plan to take as much of my paycheck as the money-besotted Congress does.
March 5th, 2008
This is an editorial that I sent out to various places.
I am one of the scientists that attended the recent Heartland Climate Conference in Manhattan, where I live. It is my belief that the strident and frequent claims of catastrophes caused by man-made global warming are stated with a degree of confidence not warranted by the data.
Although it is a logically fallacy to invoke this argument against opponents, let me say first that I have never accepted any money (except my graduate student tuition) for the work I have done in statistical meteorology and climatology. Incidentally, it isn’t because I wouldn’t, it’s just that nobody’s ever offered. I also did not get the one-thousand dollar honorarium from Heartland for speaking at this conference.
At the conference, I presented the same original research that I recently gave at the American Meteorological Society conference in New Orleans. I serve on the Probability and Statistics Committee of the AMS. This work was based on a paper I wrote and is about to appear in the Journal of Climate that shows that the number of tropical storms and hurricanes have not increased in number or intensity since we have had reliable satellite measurements. I also find that previous crude statistical methods others have used to analyze hurricanes have given misleading results.
It is trivially true that man, and every other organism, influences his environment, and hence his climate. It is only a question of how much, is it harmful, and can the harm be mitigated. It is indisputable that mankind causes climate change, even harmful change. But most of this change is local and due mainly to land use modifications. For example, replacing a forest with crop land creates different heat exchange characteristics in the boundary layer. These differences are easily measurable: cooler nighttime temperatures over crop land is an easy example.
It is important to recognize that some changes to our climate are beneficial. That converted crop land, for example, feeds people, which most would agree is a benefit. Diverted and dammed rivers provide water.
We also know with something near certainty that carbon dioxide has been increasing since the late 1950s. We are less certain, though nearly sure, that it has been increasing since about 1900. Before this date, we are even less certain of the global average amount. The reason is that before 1959 there were no consistent direct atmospheric measurements and so we must estimate the values based on proxies. Converting proxies to estimates requires statistical modeling. Part of every statistical model is, or should be, a quantification of the uncertainty of the estimates. This uncertainty is known by those who convert the proxies, but nearly always forgotten by those who use the estimates as input to climate or economic models.
It is absolutely clear that mankind is responsible for a portion of the carbon dioxide increase. What most people—not climatologists, but others—do not know is that this portion is only a fraction of the increase. The rest of the increase is due to other causes. These causes are not fully understood—a sentence you have often seen, and which means that we are not certain.
Temperatures have been directly measured for a little over a century. The number of locations at which temperature is taken has gradually increased, reaching something like full coverage only in the last thirty to forty years. It is certain that at many individual stations mankind has caused changes in measured temperature. Mankind caused both warming, due to the urban heat island effects, and cooling, such as by land use changes.
Joining these disparate measurements, and controlling for the changes and increases in locations, and the changes known to be due to urban heat island and other land use changes, to form an estimate of global average temperature again requires statistical modeling. And very difficult and uncertain statistical modeling at that. The resulting estimate should be presented with its error bounds, though it never is. These error bounds are currently larger than any projected increases in temperature, which makes it difficult or impossible to verify climate model output.
Surprisingly, climate models are not certain. We have deduced, and therefore know, the fundamental equations of motion, but there is some uncertainty in how to solve them inside a computer. We also are fairly sure of the physics of heat and radiative transfer, but there is large uncertainty in how to best represent these physics in computer code because climate models describe processes at very large scales and heat physics take place at the microscopic level. So these physics are parameterized, which increases the uncertainty in the climate model forecast.
All climate models undergo a “tuning” process, whereby the parameterizations and other parts of the computer code are tweaked so that the model better fits the past observed data. This necessary step always increases the uncertainty we have in predicting independent data, which is data that has not been used in any way to fit or tune the models. And it is a fact, and therefore certain, that, so far, climate models have over-forecast independent data, meaning that they have said temperatures would be higher than have actually occurred.
Lastly, there is the abundance of secondary research that uses climate model output as fixed input. This is the work that shows global warming causes every possible ill. I have never met one of these studies that quantified the uncertainty due to assuming climate models are error free. This means that their conclusions are vastly overstated.
Too many people are too confident about too many things. That was the simple message of the Heartland conference, and one that I hope sinks in.
Update 6 March: I have been getting some private questions, so I wanted to emphasize that I have not even gotten grant money to do my meteorology/climatology work. Any grant money I did get was from my advisor for my research fellowship in mathematical statistics when I was a graduate student. Since then it has been in the form of NIH and private foundation grants for biostatistical work. Unlike most climate researchers, I do it for fun and not for profit.
March 5th, 2008
Czech Republic President Vaclav Klaus started off the day with a rousing speech. I hadn’t known he was an economist, but it was obvious quickly through his use of phrases like “maximize their personal utility function” and “is there statistically significant global warming?” This was not a standard political speech.
He joked that certain people “want to stop economic growth [in Europe]; though, not their own,” particularly in developing countries. Klaus was most authoritative by reminding us of living under communist rule which featured “central planning of all kinds of human activity.” Communists, and the socialists like them, “believe in their ability to assemble all relevant data” and to give instructions to millions of people. He talked of how some enlightened folks want a return to this type of control because, of course, they are experts and know what’s best for everybody. Sound like academia to anybody else?
I believe his speech will eventually be made available on the Heartland website.
Bill Gray went next, but started off with what I felt was an unfortunate comment. He said that model climate modelers “don’t have much background on how the atmosphere ticks.” The statement is strictly false, and even ridiculous. It was offered in a friendlier spirit than it reads: more of a “weather weenies” (yes, this is what we call them) versus “climate modelers”. The former are the day-to-day weather forecasters, the guys who memorize the pressure, vorticity and CAPE of each storm back to 1965. The later are the guys who sweat over partial differential equations and, obviously, write computer code. There is always a tension between the two groups, but a good natured one.
But some people won’t understand the “inter-service rivalry” undertone. All they’ll hear is that Bill Gray said climate modelers don’t know how the atmosphere “ticks”, which will cause them to then trot out the qualifications of some climate modelers saying, “Look here. This guy has a PhD and 82 papers and can integrate you under the table.” And they’d be right.
It’s understandable for some people to want to score some points against the more outrageous claims of the “other side”, but I think it’s best done through plain writing or through humor. Public petulance and overstatement just will not work except against you.
If you’ve ever been to a science conference you’ll know that much of the best stuff happens out in the halls, which is where I spent the rest of my morning chatting with Jennifer Marohasy, Craig Loehle, Willie Soon, David Legates, Joel Schwartz and others. We talked mostly of work and upcoming papers and went through the standard ritual of griping about journal editors and the ridiculous hoops we sometimes have to jump through to get papers published. But some of the guys had absolute horror stories of what happened to them when they tried getting papers published that explored non-”consensus” views. Really outrageous and unethical behavior on the parts of some editors. I was shocked. I’d like to be able to tell some of these stories, but they belong to their owners, and I’ll let them do it.
Lord Monckton joined our group and said that he was off to, inter alia, the University of Rochester to talk about his climate sensitivity work. He’ll be writing it up soon and working with some scientists there to better quantify some of the ideas. I look forward to this because it is an excellent opportunity to not only get better point estimate of the quantities involved, but to also quantify their uncertainty. Specify error bounds, if you like, which is something that is almost never done!
Monckton also spoke on Glen Beck’s radio show this morning and had some words to say about Jim Hansen who, as a government official, “condemned” two of Lord Monckton’s speeches. The transcript of the Beck interview is here. Here’s a blurb
So I wrote to the administrator of NASA and I said, [Hansen’s] conduct is not acceptable; I want it investigated and I think there are financial irregularities behind the conduct of your people in this matter and given that they have financial links with Al Gore. And so they are, in fact, now investigating it. It was referred to the inspector general of NASA who is their internal affairs officer, and he is now looking at this. And if they don’t come back to me very soon and say that they have disciplined this man for making unscientific statements when he’s a paid public official against a private citizen — that’s what he did — then I am going to refer this case via diplomatic channels to the U.S. attorney general’s office because they are the only office who are allowed to refer investigations to the Securities & Exchange Commission.
Oh. I also asked if his “stellar solar scientist” remark from yesterday was a planned pun. He said, with body language indicating the opposite of his words, “Well, of course it was.”
I had to get back by noon and so missed the wrap up talks, including one by John Stossel which I would have liked to have heard.
Though there was the “Manhattan Declaration on Climate Change”, which can be found here. This was circulated late this morning and people were asked to sign in public or anonymous support. Go and read it and see what you think.
The natural question is: Was the conference a success? To answer that requires time and waiting. For me it was successful because I got to meet some colleagues that I had only previously corresponded with. I got some work to do out of it, too. Plus, I was able to learn about some of the political aspects of the debate, though I am still abysmally ignorant here.
March 4th, 2008
In the morning, there were enormous piles of bacon, which is, as all competent doctor’s should recommend, the best way to start a day.
Robert Balling of Arizona State gave the coffee talk, emphasizing measurement error and uncertainty overall, and with observation stations in particular. He showed how the IPCC reports, through time, gently acknowledged other sources of climate forcing, like sulfates, burning biomass, irradiance, land use changes, etc. This is in line with what I’m also harping about: people are too certain all the time.
Ross McKitrick went over a paper he and P. Michaels did on adjusting observation stations for such things as population size etc. It was a fairly standard econometric model applied to observational data. This is a vast improvement over the regular method and just the right thing to do, for a start. Individual stations should not be adjusted and then entered into the record, they should be modeled as part of an overall system, and then we can look at the overall system to see if changes are taking place. This is too vague, I know. I’ll have to write about this later.
There were several concurrent sessions after this, like many conferences, and you had to pick one. I choose one with David Douglas from U. Rochester. What I liked about his talk is that she showed the temperature of the earth through time. And I mean all of it: from a little over 4 billion years ago to now. This is the complete-record way to do things. He then showed the temps at time scales closer and closer to daily life. All of which proved a point: we do not appreciate the actual variability of temperatures on this planet.
Christopher Monckton batted next. His talk was mixed politics/science and I wish he had more time to talk about his estimates of climate sensitivity. This was the real meat of the talk, and his original work, but he had to rush through it and I didn’t assimilate most of it except to note that the IPCC overestimated the sensitivity. He made the valid point that we “cannot falsify [the IPCC] equations because they haven’t said how they’ve done them.” He also slipped in a pun, unintentional I think, and nobody caught it. He called a certain gentleman a “stellar solar scientist.”
I gave my hurricane talk in the afternoon. Luckily, right after lunch, which generously allowed people time to nap and digest their meals. Hardly anybody walked out on me, so I consider it a great success.
Joel Schwartz, of the American Enterprise Institute, gave an interesting talk following the course of some papers of ozone and global warming. Several of these peer-reviewed papers modeled ozone into the future using observed concentrations from 1996. Which sounds fine, except that the papers were written in the mid-2000s and could have used concentrations of ozone which were less than 1996. Ozone had been on a decades-long descent which was strangely unacknowledged in any of these papers.
As I was coming out of a session, some people from Titan TV grabbed me for an interview. I didn’t know who they were until after the interview was over and I got back to my computer to Google them. The reporter was a guy in his lesser 30s, and I had the idea I disappointed him by not being dogmatic on any of the questions he asked me. For example, he asked me, RE: global warming, am I a “glass half full or half empty” kind of guy. I had no idea how to answer this, except to say what I always do, “It is a trivial fact that humans influence their environment, hence their climate. It is only a question of how much, and is it harmful, and if so, how much can we mitigate it.” Wishy washy sounding, I guess. He also thought it was ironic that today’s high was in the 50s, to which I said, disappointing him again, that it wasn’t that unusual.
Only a half day tomorrow. Stay tuned.
March 3rd, 2008
For the next three days, I’ll be reporting on the Heartland Conference on Climate Change.
Day started late with a cash bar at the at the Marquis hotel. I live in New York City, where the conference is, so I was not shocked when the bartender asked me for ten bucks for a Budweiser. I could have paid eleven and gotten a Amstel Light.
Dinner followed; surprisingly not terrible and not chicken. Joe Bast, who heads Heartland, gave the expected opening speech, the gist of which was that legitimate skeptics (as to completely harmful global warming) existed. Comedian followed and \.
Patrick Michaels gave one of his speeches, which was a bit unfocused. He correctly emphasized that, yes, warming had indeed taken place and that humans had at least something to do with it. He pointed out, rightly, that the La Nina and low solar activity have recently combined to produce some lower temperatures, but that skeptics should not use these facts to argue global warming didn’t exist. But then showed some slides of the return of sea ice at the poles to show that…what? That warming was gone?
Well, if temperatures are only temporarily going down, then ice will only temporarily reappear.
Michaels did a good job documenting some of the irrational frenzy from some who actually seem to wish ardently that global warming be devastating. He used “warming island” as an example (Google that).
Met some people and collected some tracts. I didn’t need to go and explore the lights of Broadway, so I went to bed.
Stay tuned.
March 3rd, 2008
I am finding it difficult to breathe after reading this abstract from a peer-reviewed scholarly article in a respected journal1.
This paper describes the application of a methodology designed to analyse the relationship between climatic conditions and the perception of bioclimatic comfort. The experiment consisted of conducting simultaneous questionnaire surveys and weather measurements during 2 sunny spring days in an open urban area in Lisbon. The results showed that under outdoor conditions, thermal comfort can be maintained with temperatures well above the standard values defined for indoor conditions. There seems to be a spontaneous adaptation in terms of clothing whenever the physiological equivalent temperature threshold of 31°C is surpassed. The perception of air temperature is difficult to separate from the perception of the thermal environment and is modified by other parameters, particularly wind. The perception of solar radiation is related to the intensity of fluxes from various directions (i.e. falling upon both vertical and horizontal surfaces), weighted by the coefficients of incidence upon the human body. Wind was found to be the most intensely perceived variable, usually negatively. Wind perception depends largely on the extreme values of wind speed and wind variability. Women showed a stronger negative reaction to high wind speed than men. The experiment proved that this methodology is well-suited to achieving the proposed objectives and that it may be applied in other areas and in other seasons.
(All emphasis mine; visual proof of their findings is here.)
In case you are not used to parsing academicese, I have take the liberty of re-writing this abstract in plain English.
We went to an open-air cafe in Lisbon on 2 sunny spring days and asked people if they were hot or cold. People were happier being in the sun than indoors. When it got hot, people took their shirts off. People generally did not care to think about out questions about the difference between perceptions of temperature and wind. It was always hotter sitting in the sun. People didn’t like when the wind blew away their newspapers and napkins. Women complained more than men about the wind. We plan on asking these questions in Hawaii in January if we can get another grant.
Remember this! It isn’t true unless a study says it’s true.
1Sandra Oliveira and Henrique Andrad, 2006 (may they forgive me). An initial assessment of the bioclimatic comfort in an outdoor public space in Lisbon, International Journal of Biometeorology, 52, 69-84
March 1st, 2008
Today, another brief (in the sense of intellectual content) essay, as I’m still working on the Madrid talk, the Heartland conference is this weekend, and I have to, believe it or not, do some work my masters want.
William F. Buckley, Jr. has died, God rest his soul. He famously said, “I’d rather be governed by the first 2000 names in the Boston phone book than by the dons of Harvard.” I can’t usefully add to the praise of this great man that has begun appearing since his death two days ago, but I can say something interesting about this statement.
There are several grades of pine “2 by 4’s”, the studs that make up the walls and ceilings of your house. Superior grades are made for exterior walls, lesser grades are useful for external projects, such as temporary bracing. A carpenter would never think of using a lesser grade to build your roof’s trusses, for example. Now, if you were run into a Home Depot and grab the first pine studs you came to (along with the book How to Build a Wall), thinking you could construct a sturdy structure on your own, you might be right. But you’re more likely to be wrong. So you would not hesitate to call in an expert, like my old dad, to either advise you of the proper materials or to build the thing himself.
Building an entire house, or even just one wall, is not easy. It is a complicated task requiring familiarity with a great number of tools, knowledge of various building techniques and materials, and near memorization of the local building codes. But however intricate a carpenter’s task is, we can see that it is manageable. Taken step by step, we can predict to great accuracy exactly what will happen when we, say, cut a board a certain way and nail it to another. In this sense, carpentry is a simple system.
There is no shortage of activities like this: for example baking, auto mechanics, surgery, accounting, electronic engineering, and even statistics. Each of these diverse occupations are similar in the sense that when we are plying that trade, we can pull a lever and we usually or even certainly know which cog will engage and therefore what output to expect. That is, once one has become an expert in that field. If we are not an expert and we need the services of one of these trades, we reach for phone book and find somebody who knows what he’s doing.
But there are other areas which are not so predictable. One of these is governance, which is concerned with controlling and forecasting the activity and behavior of humans. As everybody knows, it is impossible to reliably project what even one person will do on a consistent basis, let alone say what a city or country full of people will be like in five years. Human interactions are horribly, unimaginably complex and chaotic, and impossible to consistently predict.
Of course, not everyone thinks so. There is an empirically-observed relationship that says the more institutionalized formal education a person has, the more likely it is that that person believes he can predict human behavior. We call these persons academics. These are the people who make statements (usually in peer-reviewed journals) like, “If we eliminate private property, then there will be exact income equality” and “We can’t let WalMart build a store in our town because WalMart is a corporation.” (I cleaned up the language a bit, since this is a PG-rated blog.)
It is true, and it is good, that everybody has opinions on political matters, but most people, those without the massive institutionalized formal education, are smart enough to realize the true value of their opinions. Not so the academics, who are usually in thrall to a theory whose tenets dictate that if you pull this one lever, this exact result will always obtain. Two examples, “If we impose a carbon tax, global warming will cease” and “If the U.S.A. dismantles its nuclear weapons, so too will the rest of the world, which will then be a safer place.”
Political and economic theories are strong stuff and even the worst of them is indestructible. No amount of evidence or argument can kill them because they can always find refuge among the tenured. The academics believe in these theories ardently and often argue that they should be given the chance—because they are so educated and we are not—to implement them. They think that—quite modestly of course–because they are so smart and expert, that they can decide what is best for those not as smart and expert. Their hero is Plato who desired a country run by philosophers, the best of the best thinkers. In other words, people like them.
The ordinary, uneducated man is more likely to just want to be left alone in most matters and would design his laws accordingly. He would in general opt for freedom over guardianship. He is street-smart enough to know that his decisions often have unanticipated outcomes, and is therefore less lofty in his goals. And this is why Buckley would choose people from the phone book rather the from the campus.
February 29th, 2008
The other (for U.S. readers) Times, the original one, has compiled a list of the top 50 eco blogs and paid me the generous compliment of including this blog.
Other, and more important sites, like Climate Audit and Climate Resistance are featured in the Skeptical Category, with sites like Climate Debate Daily and Dot Earthlisted in the News Category.
The editors at the paper said that “the blogosphere is, frankly, a scary place” and that the “sheer diversity of the groups is staggering.” They “spent countless hours, days and months scouring the web” and ask “Did we manage to find the best?” Visit the site and find out.
February 27th, 2008
Next Posts
Previous Posts