Posts Tagged ‘ Bayesian statistics ’

Bayes Pharma 2013 (3)

May 22, 2013
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Another very interesting day. The highlight of the morning was, in my opinion, David Ohlssen's talk. David is with Novartis US and has discussed a few issues related with subgroup analysis, pointing out the potential strengths of applying a Bayesian ap...

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Bayes Pharma 2013 (2)

May 21, 2013
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Bayes Pharma 2013 (2)

The first day of the conference was quite good, I thought. I was pleased with the audience's response to my talk and also the other talks were quite good. The level is even higher than last year. There are about 75 people attending (which is ...

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Bayes Pharma 2013 (1)

May 20, 2013
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Earlier today, I've arrived in Rotterdam for the Bayes Pharma conference. As I already said in a previous post, I think we have quite an exciting line up. In fact, I think that the finalised programme is packed with interesting talks!My first impressio...

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Where do theories come from?

May 17, 2013
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Where do theories come from?

Lee Sechrest sends along this article by Brian Haig and writes that it “presents what seems to me a useful perspective on much of what scientists/statisticians do and how science works, at least in the fields in which I work.” Here’s Haig’s abstract: A broad theory of scientific method is sketched that has particular relevance [...]The post Where do theories come from? appeared first on Statistical Modeling, Causal Inference, and…

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Reputations changeable, situations tolerable

May 15, 2013
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David Kessler, Peter Hoff, and David Dunson write: Marginally specified priors for nonparametric Bayesian estimation Prior specification for nonparametric Bayesian inference involves the difficult task of quantifying prior knowledge about a parameter of high, often infinite, dimension. Realistically, a statistician is unlikely to have informed opinions about all aspects of such a parameter, but may [...]The post Reputations changeable, situations tolerable appeared first on Statistical Modeling, Causal Inference, and Social…

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GPstuff: Bayesian Modeling with Gaussian Processes

May 14, 2013
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I think it’s part of my duty as a blogger to intersperse, along with the steady flow of jokes, rants, and literary criticism, some material that will actually be useful to you. So here goes. Jarno Vanhatalo, Jaakko Riihimäki, Jouni Hartikainen, Pasi Jylänki, Ville Tolvanen, and Aki Vehtari write: The GPstuff toolbox is a versatile [...]The post GPstuff: Bayesian Modeling with Gaussian Processes appeared first on Statistical Modeling, Causal Inference,…

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Stan!

May 13, 2013
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Guy Freeman writes: I thought you’d all like to know that Stan was used and referenced in a peer-reviewed Rapid Communications paper on influenza. Thank you for this excellent modelling language and sampler, which made it possible to carry out this work quickly! I haven’t actually read the paper, but I’m happy to see Stan [...]The post Stan! appeared first on Statistical Modeling, Causal Inference, and Social Science.

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Same old same old

May 9, 2013
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In an email I sent to a colleague who’s writing about lasso and Bayesian regression for R users: The one thing you might want to add, to fit with your pragmatic perspective, is to point out that these different methods are optimal under different assumptions about the data. However, these assumptions are never true (even [...]The post Same old same old appeared first on Statistical Modeling, Causal Inference, and Social…

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What the BBC isn’t telling you

April 30, 2013
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What the BBC isn’t telling you

Yesterday Gareth pointed me to this article on the BBC website. The underlying story has to do with Meredith Kercher's murder and the subsequent trial involving mainly her flat-mate Amanda Knox, in Perugia (Italy). As often in these grue...

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Plain old everyday Bayesianism!

April 28, 2013
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Sam Behseta writes: There is a report by Martin Tingley and Peter Huybers in Nature on the unprecedented high temperatures at northern latitudes (Russia, Greenland, etc). What is more interesting is the authors are have used a straightforward hierarchical Bayes model, and for the first time (as far as I can remember) the results are [...]The post Plain old everyday Bayesianism! appeared first on Statistical Modeling, Causal Inference, and Social…

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