Journal Club » History » Version 12
Robert Suhada, 11/27/2012 11:32 AM
1 | 1 | Robert Suhada | h1. Journal Club |
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3 | 3 | Robert Suhada | *Time:* Weekly - TBD |
4 | 3 | Robert Suhada | *Place:* Seminar room - TBD |
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7 | 12 | Robert Suhada | {{toc}} |
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10 | 2 | Robert Suhada | h2. Next paper |
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12 | 3 | Robert Suhada | *Order statistics applied to the most massive and most distant galaxy clusters* |
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14 | 2 | Robert Suhada | Jean-Claude Waizmann, Stefano Ettori, Matthias Bartelmann |
15 | 2 | Robert Suhada | (Submitted on 22 Oct 2012) |
16 | 2 | Robert Suhada | In this work we present for the first time an analytic framework for calculating the individual and joint distributions of the n-th most massive or n-th highest redshift galaxy cluster for a given survey characteristic allowing to formulate LCDM exclusion criteria. We show that the cumulative distribution functions steepen with increasing order, giving them a higher constraining power with respect to the extreme value statistics. Additionally, we find that the order statistics in mass (being dominated by clusters at lower redshifts) is sensitive to the matter density and the normalisation of the matter fluctuations, whereas the order statistics in redshift is particularly sensitive to the geometric evolution of the Universe. For a fixed cosmology, both order statistics are efficient probes of the functional shape of the mass function at the high mass end. To allow a quick assessment of both order statistics, we provide fits as a function of the survey area that allow percentile estimation with an accuracy better than two per cent. Furthermore, we discuss the joint distributions in the two-dimensional case for different combinations of order. |
17 | 1 | Robert Suhada | Having introduced the theory, we apply the order statistical analysis to the SPT massive cluster sample and MCXC catalogue and find that the ten most massive clusters in the sample are consistent with LCDM and the Tinker mass function. In turn, by assuming the LCDM reference cosmology, order statistics can also be utilised for consistency checks of the completeness of the observed sample and of the modelling of the survey selection function. [abridged] |
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19 | 5 | Robert Suhada | http://arxiv.org/abs/1210.6021 |
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21 | 2 | Robert Suhada | h2. Paper pool |
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23 | 9 | Robert Suhada | *[[paper_pool|Add papers you'd like to discuss here.]]* |
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25 | 2 | Robert Suhada | * If possible please roughly keep a uniform format. |
26 | 7 | Robert Suhada | * If you are really interested you can vote for a paper by incrementing the vote counter by 1, this might increase its chance to be discussed. |
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29 | 9 | Robert Suhada | *[[paper_pool_2|Here you can add interesting papers that are too off-topic or controversial for the journal club.]]* |
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31 | 11 | Robert Suhada | h2. Video talks and lectures |
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33 | 10 | Robert Suhada | *[[talks_pool|Add links to talk or lectures you recommend here.]]* |
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36 | 2 | Robert Suhada | h2. Previous papers |