Correlation!=causation: returning to my old theme (latest example: is exercise/mortality entirely confounded by genetics?), what is the right way to model various comparisons?
By which I mean, consider a paper like "Evaluating non-randomised intervention studies", Deeks et al 2003 which does this:
...In the systematic reviews, 8 studies compared results of randomised and non-randomised studies across multiple interventions using metaepidemiological techniques. A total of 194 tools were identified that could be or had been used to assess non-randomised studies. 60 tools covered at least 5 of 6 pre-specified internal validity domains. 14 tools covered 3 of 4 core items of particular importance for non-randomised studies. 6 tools were thought suitable for use in systematic reviews. Of 511 systematic reviews that included nonrandomised studies, only 169 (33%) assessed study quality. 69 reviews investigated the impact of quality on study results in a quantitative manner. The new empirical studies estimated the bias associated with non-random allocation and found that the bias could lead to consistent over- or underestimations of treatment effects, also the bias increased variatio
I just published an article in the conservative FrontPageMag on college safe spaces. It uses a bit of LW like reasoning.
Last week was a gathering of physicists in Oxford to discuss string theory and the philosophy of science.
From the article:
Nowadays, as several philosophers at the workshop said, Popperian falsificationism has been supplanted by Bayesian confirmation theory, or Bayesianism...
Gross concurred, saying that, upon learning about Bayesian confirmation theory from Dawid’s book, he felt “somewhat like the Molière character who said, ‘Oh my God, I’ve been talking prose all my life!’”
That the Bayesian view is news to so many physicists is itself news to me, and i...
The character from Molière learns a fancy name ("speaking in prose") for the way he already communicates. David Gross isn't saying that he is unfamiliar with the Bayesian view, he's saying that "Bayesian confirmation theory" is a fancy name for his existing epistemic practice.
The gap between the average Nobel laureate (in physics, say) and the average LWer is enormous. If your measure says it isn't, it's a crappy measure.
A major weakness
Where did you get this from? Maintaining beliefs over an entire space of possible solutions is a strength of the Bayesian approach. Please don't talk about Bayesian inference after reading a single thing about updating beliefs on whether a coin is fair or not. That's just a simple tutorial example.
How much do you trust economic data released by the Chinese government? I had assumed that economic indicators were manipulated, but recent discussion suggests it is just entirely fabricated, at least as bad as anything the Soviet Union reported. For example, China has reported a ~4.1% unemployment rate for over a decade. Massive global recession? 4.1% unemployment. Huge economic boom? 4.1% unemployment.
One of the largest, most important economies in the world, and I don't know that we can reliably say much about it at all.
One interesting point, not expanded up on, is this:
One writer chalks this concern up to a bunch of “conspiracy theor(ies)”.
Balding dismisses this by citing Premier Li Keqiang, but I think this objection illustrates a deeper problem with the way the phrase "conspiracy theory" is used. It's frequently used to dismiss any suggestion that someone in authority is behaving badly regardless of whether an actual conspiracy would be required.
Let's look at what it would take for Chinese economic data to be bad. The data is gathered by the central government by delegating gathering the data to appropriate individual branches, by province, industry, etc. So what happens if someone at that level decides to fudge with the data for whatever reason (possibly to make his province and/or industry look better). The aggregate data will be wrong. And that's just one person on one level. In reality, of course, there are many levels in the hierarchy and many corrupt people in all of them.
That was a bit... strange.
Huw Price, a professional philosopher who happens to be one of the founders and the Academic Director of the Centre for the Study of Existential Risk (the one in Cambridge, UK), wrote a piece which is quite optimistic about cold fusion in general and Andrea Rossi in particular.
I am confused about free will. I tried to read about it (notably from the sequences) but am still not convinced.
I make choices, all the time, sure, but why do I chose one solution in particular?
My answer would be the sum of my knoledge and past experiences (nurture) and my genome (nature), with quantum randomness playing a role as well, but I can't see where does free will intervene.
It feels like there is something basic I don't understand, but I can't grasp it.
Thoughts this week:
Career stategy
Thiel isn't decisive on the topic. Is the definite-optimist view is the dominant approach to candidacy in the grand marketplace of talent today?
Kumon
Kumon franchises are cheap. The branding and rep is good. Tutoring is a very attractive market in general and kumon makes it easier for the teachers. But is it ethical, I wonder? To me it's ethical if it delivers value to the students. A caveat is that it seemed cruel the kind of mind-numbing maths done by my classmates as a kid who attended Kumon.
Could somebody who has the English translation of The Spanish Ballad by Feuchtwanger post that piece about Lancelot being in disgrace over his hesitation to sit in the cart into rationality quotes thread? Thank you.
The Fed recently announced a small interest rate hike, but rates remain astonishingly low in the US and in most other countries. In several countries the interest rate is negative - you have to pay the bank to hold your money - a bizarre situation which many economists previously dismissed as a theoretical impossibility.
How should individuals respond to this weird macroeconomic situation? My naive analysis is that demand for investment opportunities far outstrips supply, so we should be trying to find new ways to invest money. Perhaps we should all be doing part-time real estate investing? Are there other simple investment strategies that individuals are in a better position to pursue than big investment firms?
If reports are correct, this is sort of an example of a transplant version of the Trolley problem in the wild: http://timesofindia.indiatimes.com/world/middle-east/Islamic-State-sanctioned-organ-harvesting-in-document-taken-in-US-raid/articleshow/50326036.cms
Where can I find The Browser's Golden giraffes competition nominees? They have deleted the list and I don't have an offline copy.
Thoughts this week, part 2
Sweat equity marketplaces
Anyone know why online sweat equity marketplaces never took off? Their website is basically non-functional. I can see the potential for sweat-equity marketplace focusing on a surprising number of fields - say cash strapped writers looking for an editor for instance.
Nuremburg principles
I was just following norms
-Normies the Normenberg trails for norm crimes
Love and subjective well-being
Love has too complex a relationship with happiness for me to want to try to make rational decisions in relation to (...
I think Robins et al (?Hernan?) at some point recovered the result of an RCT via his g methods from observational data.
The paper you are referring to is "Observational Studies Analyzed Like Randomized Experiments: An application to Postmenopausal Hormone Therapy and Coronary Heart Disease" by Hernan et al. It is available at https://cdn1.sph.harvard.edu/wp-content/uploads/sites/343/2013/03/observational-studies.pdf
The controversy about hormone replacement therapy is fascinating as a case study. Until 2002, essentially all women who reached menopause got medical advise to start taking pills containing horse estrogen. It was very widely believed that this would reduce their risk of having a heart attack. This belief primarily based on biological plausibility: Estrogen is known to reduce cholesterol, and cholesterol is believed to increase the risk of heart disease. Also, there were many observational studies that seemingly suggested that women who took hormone replacement therapy (HRT) had less risk of heart disease. (In my view, this was not surprising: Observational studies always show what the investigators expect to find.)
In 2002, the Women's Health Initiative randomized trial was stopped early because it showed that estrogen replacement therapy actually substantially increased the risk of having a heart attack. Overnight, the medical establishment stopped recommending estrogen for menopausal women. But a perhaps more important consequence was that many clinicians stopped trusting observational studies altogether. In my opinion, this was mostly a good thing.
The largest observational study to show a protective effect of estrogen the Nurses Health Study. In 2008, my thesis advisor Miguel Hernan re-analyzed this dataset using Jamie Robins' g-methods (which are equivalent to Pearl), and was essentially able to reproduce the results of the WHI trial. Miguel's paper uses valid methods and gets the correct results. In my view, this shows that the new methods might work, but the paper would have meant much more if it was published prior to the randomized trials.
Miguel and Jamie's paper sparked off a very interesting methodological debate with the original investigators at the Nurses Health Study, who are still clinging to their original analysis. See http://www.ncbi.nlm.nih.gov/pubmed/18813017 .
Many people still believe that Estrogen/HRT is beneficial. The most popular theory is that WHI recruited too many old women (sometimes in their 90s!) and that estrogen is harmful if given that long after menopause. A new randomized trial which is limited to women at menopause is currently being conducted. A second theory is that the results in the trial were due to differences in statin usage. I analyzed the second theory for my doctoral thesis, but found that this had negligible impact on the results.
It is also interesting to note that while it is true that the trial found that estrogen increased the risk of heart disease, it also showed a (non-significant) reduction in all-cause mortality. So the increased risk of cardiovascular disease didn't even result in more deaths. Presumably, people care more about all-cause mortality than heart attacks. However, since it was "non-significant", not even the most dedicated proponents of estrogen treatment ever point out this fact.
A side question, prompted by an amusing factoid in the Hernan paper: "...we restricted the population to women who had reported plausible energy intakes (2510 –14,640 kJ/d)".
In the statistical analysis in this paper, and also as a general practice in medical publications based on questionnaire data, are there adjustments for uncertainty in the questionnaire responses?
When you have a data point that says, for example, that person #12345 reports her caloric intake as 4,000 calories/day, do you take it as a hard precise number, or do you take it as an imprecise estimate with its own error which propagates into the model uncertainty, etc.?
If it's worth saying, but not worth its own post (even in Discussion), then it goes here.
Notes for future OT posters:
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3. Open Threads should be posted in Discussion, and not Main.
4. Open Threads should start on Monday, and end on Sunday.