Difference between revisions of "ISC-5939-03"

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Class meeting is on Mondays 3-4pm in room 499 (on days with faculty meetings we may need to shift to half an hour earlier, or shorten the meeting)
 
Class meeting is on Mondays 3-4pm in room 499 (on days with faculty meetings we may need to shift to half an hour earlier, or shorten the meeting)
 
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<br><br><br><br>
'''September 9''' Peter Beerli will lead. [[File:metropolistitle.png|500px|right]] We will all read this paper and discuss their approach: interesting topics are assumptions, run time, number of evaluation etc.([[Media:metropolis-et-al-1953.pdf|download PDF]])
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Here are some more tidbits from the early MCMC times: first textbook by Hammersley and Handscomb (1962) [[Media:hammersleyhandscomb.pdf|PDF]], news from the ''Los Alamos Science'': [[media:metropolis.pdf|The Beginning of the Monte Carlo method]], [[Media:harlowmetropolis.pdf|Computing and Computers]]
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'''September 23''' Peter Beerli will lead: Geyer C. J. and E. A. Thompson (1995) Annealing Markov Chain Monte Carlo with Applications to Ancestral Inference.
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[[Media:geyer_thompson_1995.pdf|download PDF]][[File:Geyer.jpg|100px]][[File:Thompson.jpg|100px|right]] You definitely want to visit [http://users.stat.umn.edu/~geyer/  Charly Geyer's website] and specifically his rant about on long chains and burn-in of MCMC.
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'''September 16''' Sachin Shanbhag will lead: W. K. Hastings (1970) Monte Carlo Sampling Methods Using Markov Chains and Their Applications. Biometrika 57(1):97-109. [[Media:hastings1970.pdf|download PDF]]
 
'''September 16''' Sachin Shanbhag will lead: W. K. Hastings (1970) Monte Carlo Sampling Methods Using Markov Chains and Their Applications. Biometrika 57(1):97-109. [[Media:hastings1970.pdf|download PDF]]
  
  
'''September 23''' Peter Beerli will lead: Geyer C. J. and E. A. Thompson (1995) Annealing Markov Chain Monte Carlo with Applications to Ancestral Inference.
+
'''September 9''' Peter Beerli will lead. [[File:metropolistitle.png|500px|right]] We will all read this paper and discuss their approach: interesting topics are assumptions, run time, number of evaluation etc.([[Media:metropolis-et-al-1953.pdf|download PDF]])
[[Media:geyer_thompson_1995.pdf|download PDF]][[File:Geyer.jpg|100px|right]][[File:Thompson.jpg|100px|right]] You definitely want to visit [http://http://users.stat.umn.edu/~geyer/  Charly Geyer's website] and specifically his rant about on long chains and burn-in of MCMC.
+
Here are some more tidbits from the early MCMC times: first textbook by Hammersley and Handscomb (1962) [[Media:hammersleyhandscomb.pdf|PDF]], news from the ''Los Alamos Science'': [[media:metropolis.pdf|The Beginning of the Monte Carlo method]], [[Media:harlowmetropolis.pdf|Computing and Computers]]

Revision as of 12:25, 17 September 2013

Fermiac.jpg

Markov Chain Monte Carlo in Practice Seminar

We will read and discuss papers on MCMC, the goal is to bring the students up to speed on MCMC and to bring the different groups (Material Science, Geology, and Evolution) together.

Class meeting is on Mondays 3-4pm in room 499 (on days with faculty meetings we may need to shift to half an hour earlier, or shorten the meeting)



September 23 Peter Beerli will lead: Geyer C. J. and E. A. Thompson (1995) Annealing Markov Chain Monte Carlo with Applications to Ancestral Inference.

download PDFGeyer.jpg

Thompson.jpg

You definitely want to visit Charly Geyer's website and specifically his rant about on long chains and burn-in of MCMC.


September 16 Sachin Shanbhag will lead: W. K. Hastings (1970) Monte Carlo Sampling Methods Using Markov Chains and Their Applications. Biometrika 57(1):97-109. download PDF


September 9 Peter Beerli will lead.

Metropolistitle.png

We will all read this paper and discuss their approach: interesting topics are assumptions, run time, number of evaluation etc.(download PDF)

Here are some more tidbits from the early MCMC times: first textbook by Hammersley and Handscomb (1962) PDF, news from the Los Alamos Science: The Beginning of the Monte Carlo method, Computing and Computers