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Graph Powering Cont. PCP proof by Irit Dinur Presentation by: Alon Vekker. Last lecture G’ construction. V’ = V B=C · t C = const. E’ = For every two vertices at distance at most t we have a new edge between them. From last lecture. V. V’ = V. Σ. C(u,v). gap’ ≥ t/O(1)*min(gap,1/t).
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Graph Powering Cont. PCP proof by Irit Dinur Presentation by: Alon Vekker
Last lecture G’ construction • V’ = V • B=C·t C = const. • E’ = For every two vertices at distance at most t we have a new edge between them.
From last lecture V V’ = V Σ C(u,v) gap’ ≥ t/O(1)*min(gap,1/t) gap
We built the graph linearly. • We look at vertices at distance at most t. • We look at opinions at distance at most B.
Plurality assignment • Definition: : V’ is defined as follows: the opinion of w about v. • Definition: : V is defined as follows: (v) is the plurality of opinions of about v. • Plurality : al least • Unweighted edges!!!
Example for σ’ We use here : t ≤ 2 Σ = {1,2,3} a
Last week Analysis • Definition: F is a subset of E which includes all edges that are not satisfied by σ. • |F|/|E|≥gap • We throw edges from F until |F|/|E|=min(gap,1/t)=:
Last week Analysis [e’ passes through F] [e’ completely misses F] ( by the lemma ) ( since for )
Example Too long a e’ 2 a b 1 v u F
Another look Is it working? Un weighted plurality
E’: What weight to give to an edge? • Pick a random vertex a • Take a step along a random edge out of the current vertex. • Decide to stop with probability 1/t. • Stop if you passed B steps already.
Example • A is the plurality but they are too far. B a a b a a u b a b a a b v b b a a b a a
Why do we get weighted edges? 2 3 2 b 3 2 2 a 1 2 3 3 1 3 2 1 1 b 1 1 1 1
Edge Weight: • (a,b) G’ • Dist(a,b) ≤ t • The weight on the adge (a,b) is:
New plurality To define (v): consider the probability distribution on vertices as follows: • Do SW starting from v, ending on w.
Lemma 1: • if a path a b in G uses an edge (u,v) • Then, if: • (u,v) F THEN : σ’ violates the constraint on edge e’. That leads us to a conclusion… • When the length of the path < B
Lemma 2: • Let G be an (n,d,λ)-expander and F subset of E. Then the probability that a random walk, starting in the zero-th step from a random edge in F, passes through F on its t step is bounded by • Later used to prove PCP theorem.
Final Analysis [e’ completely misses F] Lemma 1 Lemma 2
Proof of lemma 1: • Suppose we don’t stop SW after B steps • Our Σ will depend on the number of vertices. • Its to big so we must stop after B steps.
calculations • Lets count the probability of a path longer then B: • And therefore we get: