Itai Benjamini

Itai Benjamini is an Israeli mathematician who holds the Renee and Jay Weiss Chair in the Department of Mathematics at the Weizmann Institute of… (More)
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Topic mentions per year

2001-2011
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Papers overview

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2012
2012
We study the appearance of the giant component in random subgraphs of a given large finite graph G = (V , E) in which each edge… (More)
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2011
2011
Motivated by the renormalization method in statistical physics, Itai Benjamini defined a finitely generated infinite groupG to be… (More)
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2011
2011
  • Damien Gaboriau
  • 2011
A graph G is a couple G = (V, E) where V denotes the set of vertices of G and V the set of undirected edges. We will assume that… (More)
  • figure 1
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2009
2009
Motivated by the renormalization method in statistical physics, Itai Benjamini defined a finitely generated infinite group G to… (More)
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2008
2008
Consider the following method of card shuffling. Start with a deck of N cards numbered 1 through N. Fix a parameter p between 0… (More)
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2008
2008
A. We study convex sets C of finite (but non-zero) volume inH andE.Weshowthat the intersectionC∞ of any such setwith the… (More)
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2007
2007
Noise sensitivity is a notion related to probability and statistical physics that came up in my work with Itai Benjamini and Oded… (More)
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2005
2005
Let G be a planar graph with polynomial growth and isoperimetric dimension bigger than 1. Then the critical p for Bernoulli… (More)
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Review
2003
Review
2003
A well known phenomenon in probabilistic constructions in R or Z is that usually some critical dimension d exists, above which… (More)
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2001
2001
Suppose that G j is a sequence of finite connected planar graphs, and in each G j a special vertex, called the root, is chosen… (More)
  • figure 2.1
  • figure 3.1
  • figure 3.2
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