From the “fighting denial with denial” department comes this desperate ploy and press release written to snare headlines with gullible media. Meanwhile, just a couple of days ago the UK Met office said the global warming pause may continue.
Global warming ‘hiatus’ never happened, Stanford scientists say
A new study reveals that the evidence for a recent pause in the rate of global warming lacks a sound statistical basis. The finding highlights the importance of using appropriate statistical techniques and should improve confidence in climate model projections.
An apparent lull in the recent rate of global warming that has been widely accepted as fact is actually an artifact arising from faulty statistical methods, Stanford scientists say.
The study, titled “Debunking the climate hiatus” and published online this week in the journal Climatic Change, is a comprehensive assessment of the purported slowdown, or hiatus, of global warming. “We translated the various scientific claims and assertions that have been made about the hiatus and tested to see whether they stand up to rigorous statistical scrutiny,” said study lead author Bala Rajaratnam, an assistant professor of statistics and of Earth system science.
The finding calls into question the idea that global warming “stalled” or “paused” during the period between 1998 and 2013. Reconciling the hiatus was a major focus of the 2013 climate change assessment by the Intergovernmental Panel on Climate Change (IPCC).
Using a novel statistical framework that was developed specifically for studying geophysical processes such as global temperature fluctuations, Rajaratnam and his team of Stanford collaborators have shown that the hiatus never happened.
“Our results clearly show that, in terms of the statistics of the long-term global temperature data, there never was a hiatus, a pause or a slowdown in global warming,” said Noah Diffenbaugh, a climate scientist in the School of Earth, Energy & Environmental Sciences, and a co-author of the study.
Faulty ocean buoys
The Stanford group’s findings are the latest in a growing series of papers to cast doubt on the existence of a hiatus. Another study, led by Thomas Karl, the director of the National Centers for Environmental Information of the National Oceanic and Atmospheric Administration (NOAA) and published recently in the journal Science, found that many of the ocean buoys used to measure sea surface temperatures during the past couple of decades gave cooler readings than measurements gathered from ships. The NOAA group suggested that by correcting the buoy measurements, the hiatus signal disappears.
While the Stanford group also concluded that there has not been a hiatus, one important distinction of their work is that they did so using both the older, uncorrected temperature measurements as well as the newer, corrected measurements from the NOAA group.
“By using both datasets, nobody can claim that we made up a new statistical technique in order to get a certain result,” said Rajaratnam, who is also a fellow at the Stanford Woods Institute for the Environment. “We saw that there was a debate in the scientific community about the global warming hiatus, and we realized that the assumptions of the classical statistical tools being used were not appropriate and thus could not give reliable answers.”
More importantly, the Stanford group’s technique does not rely on strong assumptions to work. “If one makes strong assumptions and they are not correct, the validity of the conclusion is called into question,” Rajaratnam said.
A different approach
Rajaratnam worked with Stanford statistician Joseph Romano and Earth system science graduate student Michael Tsiang to take a fresh look at the hiatus claims. The team methodically examined not only the temperature data but also the statistical tools scientists were using to analyze the data. A look at the latter revealed that many of the statistical techniques climate scientists were employing were ones developed for other fields such as biology or medicine, and not ideal for studying geophysical processes. “The underlying assumptions of these analyses often weren’t justified,” Rajaratnam said.
For example, many of the classical statistical tools often assume a random distribution of data points, also known as a normal or Gaussian distribution. They also ignore spatial and temporal dependencies that are important when studying temperature, rainfall and other geophysical phenomena that can change daily or monthly, and which often depend on previous measurements. For example, if it is hot today, there’s a higher chance that it will be hot tomorrow because a heat wave is already in place.
Global surface temperatures are similarly linked, and one of the clearest examples of this can be found in the oceans. “The ocean is very deep and can retain heat for a long time,” said Diffenbaugh, who is also a senior fellow at the Woods Institute. “The temperature that we measure on the surface of the ocean is a reflection not just of what’s happening on the surface at that moment, but also the amount of trapped heat beneath the surface, which has been accumulating for years.”
While designing a framework that would take temporal dependencies into account, the Stanford scientists quickly ran into a problem. Those who argue for a hiatus claim that during the 15-year period between 1998 and 2013, global surface temperatures either did not increase at all, or they rose at a much slower rate than in the years before 1998. Statistically, however, this is a hard claim to test because the number of data points for the purported hiatus period is relatively small, and most classical statistical tools require large numbers of data points.
There is a workaround, however. A technique that Romano invented in 1992, called “subsampling,” is useful for discerning whether a variable – be it surface temperature or stock prices – has changed in the short term based on limited amount of data. “In order to study the hiatus, we took the basic idea of subsampling and then adapted it to cope with the small sample size of the alleged hiatus period,” Romano said. “When we compared the results from our technique with those calculated using classical methods, we found that the statistical confidence obtained using our framework is 100 times stronger than what was reported by the NOAA group.”
The Stanford group’s technique also handled temporal dependency in a more sophisticated way than in past studies. For example, the NOAA study accounted for temporal dependency when calculating sea surface temperature changes, but it did so in a relatively simple way, with one temperature point being affected only by the temperature point directly prior to it. “In reality, however, the temperature could be influenced by not just the previous data points, but six or 10 points before,” Rajaratnam said.
Pulling marbles out of a jar
To understand how the Stanford group’s subsampling technique differs from the classical techniques that had been used before, imagine placing 50 colored marbles, each one representing a particular year, into a jar. The marbles range from blue to red, signifying different average global surface temperatures.
“If you wanted to determine the likelihood of getting 15 marbles of a certain color pattern, you could repeatedly pull out 15 marbles at a time, plot their average color on a graph, and see where your original marble arrangement falls in that distribution,” Tsiang said. “This approach is analogous to how many climate scientists had previously approached the hiatus problem.”
In contrast, the new strategy that Rajaratnam, Romano and Tsiang invented is akin to stringing the marbles together before placing them into the jar. “Stringing the marbles together preserves their relationships to one another, and that’s what our subsampling technique does,” Tsiang said. “If you ignore these dependencies, you can alter the strength of your conclusions or even arrive at the opposite conclusion.”
When the team applied their subsampling technique to the temperature data, they found that the rate of increase of global surface temperature did not stall or slow down from 1998 to 2013 in a statistically significant manner. In fact, the rate of change in global surface temperature was not statistically distinguishable between the recent period and other periods earlier in the historical data.
The Stanford scientists say their findings should go a long way toward restoring confidence in the basic science and climate computer models that form the foundation for climate change predictions.
“Global warming is like other noisy systems that fluctuate wildly but still follow a trend,” Diffenbaugh said. “Think of the U.S. stock market: There have been bull markets and bear markets, but overall it has grown a lot over the past century. What is clear from analyzing the long-term data in a rigorous statistical framework is that, even though climate varies from year-to-year and decade-to-decade, global temperature has increased in the long term, and the recent period does not stand out as being abnormal.”
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Debunking the climate hiatus
Bala Rajaratnam, Joseph Romano, Michael Tsiang, Noah S. Diffenbaugh
Abstract
The reported “hiatus” in the warming of the global climate system during this century has been the subject of intense scientific and public debate, with implications ranging from scientific understanding of the global climate sensitivity to the rate in which greenhouse gas emissions would need to be curbed in order to meet the United Nations global warming target. A number of scientific hypotheses have been put forward to explain the hiatus, including both physical climate processes and data artifacts. However, despite the intense focus on the hiatus in both the scientific and public arenas, rigorous statistical assessment of the uniqueness of the recent temperature time-series within the context of the long-term record has been limited. We apply a rigorous, comprehensive statistical analysis of global temperature data that goes beyond simple linear models to account for temporal dependence and selection effects. We use this framework to test whether the recent period has demonstrated i) a hiatus in the trend in global temperatures, ii) a temperature trend that is statistically distinct from trends prior to the hiatus period, iii) a “stalling” of the global mean temperature, and iv) a change in the distribution of the year-to-year temperature increases. We find compelling evidence that recent claims of a “hiatus” in global warming lack sound scientific basis. Our analysis reveals that there is no hiatus in the increase in the global mean temperature, no statistically significant difference in trends, no stalling of the global mean temperature, and no change in year-to-year temperature increases.
The paper is open access, read it here

The … variety … of contradictory conclusions arising from such a “settled science” is enough to make one’s head spin.
Perhaps tunnel vision focusing only on CO2 keeps them from getting dizzy?
Oh, snap! Silly me, I thought we launched those buoys because the buckets dropped over the side of ships were sporadic and inaccurate. Now NOAA explains those pesky — and expensive! — buoys are somehow LESS accurate than readings [taken] by Shanghaid seafarers with buckets, rope and thermometers.
Or is NOAA just pulling our legs again?
Stupid spell check. That’s “than”.
“The finding highlights the importance of using appropriate statistical techniques…”
OMFG!!! Seriously????
Maybe the witch doctors (climate scientists) from Stamford could apply this same “precise level of statistics” to determine if the correlation coefficient between global temperature and CO2 is better than +/-0.3.
“Precise level of statistics” – that’s a doozy. Isn’t statistics all about precision?
A few things said in the article that struck me.
!) …”many of the ocean buoys used to measure sea surface temperatures during the past couple of decades gave cooler readings than the measurements gathered from ships….by correcting the buoy measurements the hiatus signal disappears.” (This is short for what Karl did in his paper.)
This follows the grand climate science tradition of using bad data to correct good data. The higher tainted temperatures of urban areas (caused by the Urban Heat Island effect) are routinely used to raise the pristine data obtained from rural areas. Much more could be said but why bother.
2) “if one makes strong assumptions and they are not correct, the validity of the conclusion is called into question, Rajaratnam said.” (Rajaratnam claims he does not make such an assumption.)
“For example if it is hot today, there’s a higher chance that it will be hot tomorrow because a heat wave is already in place.”
What is Rajaratnam strong assumption? CO2 has warmed the earth in the past and since that CO2 is already in place (and even continuing to increase!) it is certain that it will be still hotter tomorrow. (The data must be wrong if it says otherwise.)
Hmmm…I can state with 100% confidence that all heatwaves in the past have ended. Rajaratnam assumption is that his heatwave caused by CO2 not only never ends but gets continuously hotter. We do know that CO2’s small effectiveness for increasing global temperatures decrease as more CO2 is added to the atmosphere. Eventually it loses all practical new effect, if it has ever had any (this is ignoring all other mitigating effects which have a huge negative effect of their own). Rajaratnam’s heatwave also must end.
I ignore the fact that we are coming out of the Little Ice Age and (though we can’t pinpoint exactly why) temperatures have been steadily rising. Of course, this will eventually stop also. In the long run warming comes and goes.
3) [Previously] “if you wanted to determine the liklehood of getting 15 marbles of a certain color pattern you could repeatedly pull out 15 marbles at a time [out of a jar] and plot the average color on a graph” …etc.
“In contrast the new strategy that Rajaratnom, Romano and Tsiang invented is akin to stringing the marbles together before placing them into the jar……. if you ignore these dependencies you can alter the strength of your conclusion and even arrive at the opposite conclusion.”
Hmmm…To start let me just change one word of that last bit. — If you “create” these dependencies you can alter the strength of your conclusion and even arrive at the opposite conclusion.
The claim is a “new” factor has to be taken into account. It is actually an old factor, the old claim that Increasing CO2 in the atmosphere means there must be increasing warming. It should be obvious to anyone that this new factor can only turn a flat trend into a rising trend. It is the equivalent of just steadily increasing the data numbers along a timeline. Tomorrow will be warmer, the day after that warmer still, etc.
Beneath a “smokescreen of statistics” that is all that is going on here.
Did they learn the concept from Gavin Schmidt? He assumes that since CO2 is constantly increasing the temperature of the earth in the past must have been cooler than the present so that temperature data has to be adjusted down — and from there all temperature data must show an upward trend — so raise the recent temperature data to show the upward trend.
Eugene WR Gallun
You forgot the image (for 6-8 years old):
http://insideclimatenews.org/sites/default/files/styles/content_top_breakpoints_theme_solve_narrow_1x/public/global%20temperature%20trends.jpg
I was confused by the rate of rise that was indicated by the graph, and then I noticed that they had used the trick that’s becoming all to common. Scientific information being presented in Fahrenheit rather than Celsius so the numbers look more alarming.
These guys aren’t scientists, they’re marketing gurus.
At last, I’ve found all the uninformed, psuedo-scientists all in one convenient site, feeding off of each other’s ignorance At least your quasi-religious anti-science beliefs are confined safely here and don’t threaten the general public
[But SkS does threaten the public. 8<) .mod]
Wait, so the older methods, while indicating warming trends, were correct, unquestionable, settled science, 97% consensus and all that. Now that they indicate no trend (and have not for over 18 years) they are obviously flawed and a new method must be created. Apparently the old way was somewhat shy of settled.
What’s the over/under on how many statistical black boxes they had to try before they devised one that gave them their trend back? Oh yeah, this is absolutely unassailable. I see a Nobel here.
According to Stanford:
“Using a novel statistical framework that was developed specifically for studying geophysical processes such as global temperature fluctuations, Rajaratnam and his team of Stanford collaborators have shown that the hiatus never happened.”
“Faulty ocean buoys
…Another study, led by Thomas Karl, the director of the National Centers for Environmental Information of the National Oceanic and Atmospheric Administration (NOAA) and published recently in the journal Science, found that many of the ocean buoys used to measure sea surface temperatures during the past couple of decades gave cooler readings than measurements gathered from ships. The NOAA group suggested that by correcting the buoy measurements, the hiatus signal disappears.”
So the pause can be made to disappear of one applies a “novel statistical framework”. Fancy that. And temperature samples taken from canvass buckets and engine room intakes are more accurate than the output from the finest temperature-measuring buoys money can buy. Who would have thought? And the mainstream press trumpets such claims worldwide without the least iota of incredulity. How absolutely unexpected.
Translation: ocean buoys measurements gave cooler readings, so those measurements were “corrected”.
I take issue with the many commentators here who derisively dismiss the value of statistics. Stats is one of our most powerful armaments in the struggle to gain knowledge. It works. The fact that so many misuse it and get bogus, stupid, or dishonest results is just another symptom of our intellectual decline into a new dark age. But don’t dismiss statistics. So let’s use it right for once.
The claim as I understand it is that the current flat line is simply an unusual statistical sample. If we had put our buoys in different places, or shifted a temp station or whatever, we would in all probability have seen a steadily rising line in accord with model expectations. Right? Because if not, then there really IS a pause.
Well if that is true, then the next data point to be released is extremely likely to be very much higher than even the 1998 datapoint. And again for the one after, and so on. So after just a single additional datapoint, unless it rises hugely, right back on track with the climate models (not simply “hottest evaahhh”, but really, seriously hot – then their claim that this is a statistical aberration is exploded. And after two additional datapoints, write them off completely.
But of course, if it really is “that hot” – how come we haven’t noticed? Maybe global warming isn’t all that bad after all.
Things might/would be different if ‘climate scientists’ ever used real statisticians. That was what I was taught to do. But, then the game would be up.
Statistics is a tool, only a tool.
Like any other tool, it is a poor workman that blames or credits their tool for the quality of work.
It is people like Karl, Rajaratnam, Joseph Romano and grad student Michael Tsiang who utilize statistics to mask and disguise temperature trends that are obvious to any lay person with intelligence, eyesight or touch.
The rot in climate science sullies the tool called statistics; let us hope that science and statistics are not dealt fatal blows by the climate team’s inappropriate use of statistics.
“Who are you going to believe? Me or your lying eyes?”
I am a member of a minority ( I am left handed) I am offended by this paper so therefore you must take it back!
One can say it isnt really slowing down only if one first admits that it wasn’t speeding up in the first place.
That is, if the ups and downs are just blips, but since they didnt accept this in the first place, they cant turn around and say it hasn’t slowed down or paused.
So, IPCC’s AR5, which acknowledged in 2013 that there was no “statistically significant warming” 1998-2012 was wrong? That admission got the stamp of approval from all the high muckety-mucks and grand poobahs of the climate-government establishment, and it was wrong? All the scads of billions of dollars that was spent to get to AR5 got us the wrong answer?
From the paper
This is hilarious. And deeply disturbing all at the same time.
They didn’t alter their start date from 1950 to say 1970 which I can see would have altered their result a lot. They didn’t use RSS or UAH which is also likely to make a big difference. They used the phrase “battery of rigorous test procedures” which even on the surface is well overstated.
I doubt McIntyre would bother with this paper. Willis will rip it to shreds anyway.
I don’t need “advanced statistical methods” to look at a satellite temperature plot and see zero trend.
The climate has no problems at all figuring out what it’s going to do — it is totally obvious to the climate. We are the ones having the problem forecasting what the climate is going to do.
The abstract says: “Our analysis reveals that there is no hiatus in the increase in the global mean temperature, no statistically significant difference in trends, no stalling of the global mean temperature, and no change in year-to-year temperature increases.”
So if the zero-trend “pause” is not statistically significant different from the warming trend, does it not follow that the warming trend is not statistically significant different from zero?
The second-to-last paragraph in the paper concludes: “our results instead demonstrate that the evolution of global surface temperature over the past 1–2 decades is not abnormal or unexpected within the context of the long-term record of variability and change.”
Exactly! If there’s little or no warming, then of course a “pause” is not abnormal!
Hey, you could use this paper to prove that there is no warming – just change a few sentences in the conclusion.
Since we were sold expensive renewable energy on the basis of the science was beyond question surely it is well overdue of a purge on climate science fraud on a scale at least equal to the mis-selling scandal of the banking and insurance industries.
I estimate that my losses thanks to the banks is at most a third of my renewable energy subsidy costs.
They should not say the recent 15yr trend is statistical not significant, but they should say the x-yr trend is statistical significant where x = 30, 60,120,…and so on.
Hmmm, not even a consensus as to the validity of the conclusion that refuted the conclusions of the proponents of the purported consensus.
“the latest in a growing series of papers to cast doubt on the existence of a hiatus.”
As if truth is subject to a paper count.
“science is not a democracy” … “with 97% of (valid) ballots (counted by me and my friends) we WIN THE FACT ELECTION!” (no recount needed, we promise)
When the final denouement of the AGW farce has come, the authors will regret they ever wrote something so stupidly political correct. It will cost them their job, it ought to.
I have just had a wonderful day at Harwell as part of a Cambridge University alumni guided visit. Golly, the scientists are impressive – professional, articulate, open-faced, knowledgeable, cutting edge. So different from the flaky ‘climate science’ lot. Programmes at Harwell are stunning – hi power laser, materials science, particle accelerators, medical programmes at molecular level, sun science, satellite instrumentation…… I will pick only one programme of hundreds – it’s the Sea and Land Surface Temperature Radiometer which will be launched on the ESA/EU GMES Sentinel – 3 satellite in late 2015. Reputedly accurate to 0.3Kelvin and with a discrimination fine enough to pick up Urban Heat Islands and Hot Spots! (it’s googlable for details) Blimey, will this not blow the warmist/alarmists out of the water? Satellite is on a polar orbit so does the whole planet daily. I asked the scientist whether he collaborated/communicated with U of Alabama – he didn’t fire up on that – ‘we collab w. many U’s etc’. (I’m a recent mature history graduate from Southampton U myself)
‘Blimey, will this not blow the warmist/alarmists out of the water?”
Not after the output has been Mannipulated.
So by “stringing the marbles together” does this not mean that they are lowering the resolution to make the last 18 years (of single-marble variability) disappear?
Of course not!
It means they’ve lost of few of them.
I am hopeful that I can use this novel statistical framework to show that I am not fat.