1 / 31

T heoretical C omputer S cience methods in asymptotic geometry

Avi Wigderson IAS, Princeton For Vitali Milman’s 70 th birthday. T heoretical C omputer S cience methods in asymptotic geometry. Three topics: Methods and Applications. Parallel Repetition of games and Periodic foams Zig-zag Graph Product and

decima
Télécharger la présentation

T heoretical C omputer S cience methods in asymptotic geometry

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Avi Wigderson IAS, Princeton For Vitali Milman’s 70th birthday TheoreticalComputerScience methods in asymptotic geometry

  2. Three topics:MethodsandApplications • Parallel Repetition of games and • Periodic foams • Zig-zag Graph Product and • Cayley expanders in non-simple groups • Belief Propagation in Codes and • L2 sections of L1

  3. Parallel Repetition of Games and Periodic Foams

  4. Isoperimetric problem: Minimize surface area given volume. One bubble. Best solution: Sphere

  5. Many bubbles Isoperimetric problem: Minimize surface area given volume. Why? Physics, Chemistry, Engineering, Math… Best solution?: Consider R3 Kelvin 1873 Optimal… Wearie-Phelan1994 Even better

  6. Our Problem Minimum surface area of body tiling Rd with period Zd ? d=2 area: Choe’89: Optimal! >4 4

  7. [Kindler,O’Donnell, Rao,Wigderson] Bounds in d dimensions ≤OPT≤ ≤ OPT ≤ “Spherical Cubes” exist! Probabilistic construction! (simpler analysis [Alon-Klartag]) OPEN: Explicit?

  8. Randomized Rounding Round points in Rd to points in Zd such that for every x,y 1. 2. x y 1

  9. Spine Surface blocking all cycles that wrap around Torus

  10. Probabilistic construction of spine Step 1 Probabilistically construct B, which in expectation satisfies B Step 2 Sample independent translations of B until [0,1)d is covered, adding new boundaries to spine.

  11. Linear equations over GF(2) m linear equations: Az = b in n variables: z1,z2,…,zn Given (A,b) 1) Does there exist z satisfying all m equations? Easy – Gaussian elimination 2) Does there exist z satisfying ≥ .9m equations? NP-hard – PCP Theorem [AS,ALMSS] 3) Does there exist z satisfying ≥ .5m equations? Easy – YES! [Hastad] >0, it is NP-hard to distinguish (A,b) which are not (½+)-satisfiable, from those (1-)-satisfiable!

  12. Linear equations as Games Game G Draw j  [m] at random Xij Yij Alice Bob αj βj Check if αj +βj = bj Pr [YES] ≤ 1- 2n variables: X1,X2,…,Xn, Y1,Y2,…,Yn m linear equations: Xi1 +Yi1 = b1 Xi2 +Yi2 = b2 ….. Xim +Yim = bm Promise: no setting of the Xi,Yi satisfy more than (1-)m of all equations

  13. Hardness amplification byparallel repetition Game Gk Draw j1,j2,…jk  [m] at random Xij1Xij2 XijkYij1Yij2 Yijk Alice Bob αj1αj2 αjkβj1βj2 βjk Check if αjt +βjt = bjt t [k] Pr[YES] ≤ (1-2)k [Raz,Holenstein,Rao] Pr[YES] ≥ (1-2)k 2n variables: X1,X2,…,Xn, Y1,Y2,…,Yn m linear equations: Xi1 +Yi1 = b1 Xi2 +Yi2 = b2 ….. Xim +Yim = bm Promise: no setting of the Xi,Yi satisfy more than (1-)m of all equations [Feige-Kindler-O’Donnell] Spherical Cubes  X [Raz] [KORW]Spherical Cubes 

  14. Zig-zag Graph Product and Cayley expanders in non-simple groups

  15. Expanding Graphs - Properties • Geometric: high isoperimetry • Probabilistic: rapid convergence of random walk • Algebraic: small second eigenvalue ≤1 Theorem. [Cheeger, Buser, Tanner, Alon-Milman, Alon, Jerrum-Sinclair,…]: All properties are equivalent! Numerous applications in CS & Math! Challenge: Explicit, low degree expanders H [n,d, ]-graph: n vertices, degree d, (H) <1

  16. G= SL2(p) : group 2 x 2 matrices of det 1 over Zp. S= { M1 , M2 } : M1 = ( ) , M2 = ( ) 1 1 0 1 1 0 1 1 Algebraic explicit constructions [Margulis ‘73,Gaber-Galil,Alon-Milman,Lubotzky-Philips-Sarnak,…Nikolov,Kassabov,…,Bourgain-Gamburd ‘09,…] Many such constructions are Cayleygraphs. Ga finite group, Sa set of generators. Def. Cay(G,S) has vertices Gand edges (g, gs) for all g  G, s  SS-1. Theorem. [LPS] Cay(G,S) is an expander family.

  17. Algebraic Constructions (cont.) • [Margulis]SLn(p)is expanding (n≥3 fixed!), via property (T) • [Lubotzky-Philips-Sarnak, Margulis]SL2(p)is expanding • [Kassabov-Nikolov]SLn(q)is expanding (q fixed!) • [Kassabov]Symmetric group Snis expanding. • …… • [Lubotzky]All finite non-Abelian simple groups expand. • [Helfgot,Bourgain-Gamburd]SL2(p) with most generators. • What about non-simple groups? • Abelian groups of size n require >log n generators • k-solvable gps of size n require >log(k)n gens [LW] • Some p-groups (eg SL3(pZ)/SL3(pnZ) )expand with • O(1) generating sets (again relies on property T).

  18. H Definition. K zHhas vertices {(v,h) : vK, hH}. (v,h) v u Thm. [RVW] K zHis an [nm, d2, +]-graph, K zH is an expander iff Kand Hare. Explicit Constructions (Combinatorial)-Zigzag Product [Reingold-Vadhan-W] Kan [n, m, ]-graph. H an [m, d, ]-graph. Edges Combinatorial construction of expanders.

  19. [RVW]Kz His an [nm,d2,+]-graph. • Ki+1 = Ki2z H Iterative Construction of Expanders Kan [n,m,]-graph. Han [m,d,] -graph. The construction: A sequence K1,K2,… of expanders Start with a constant size Ha [d4, d, 1/4]-graph. • K1 = H2 [RVW]Ki is a [d4i, d2, ½]-graph.

  20. [Alon-Lubotzky-W] Cay(Ax B, TsT) = Cay (A,S) z Cay(B,T) Semi-direct Product of groups A,Bgroups. Bacts on A. Semi-direct product: Ax B Connection: semi-direct product is a special case of zigzag Assume <T> = B, <S> = A, S= sB(Sis a single B-orbit) [Alon-Lubotzky-W] Expansion is not a group property [Meshulam-W,Rozenman-Shalev-W] Iterative construction of Cayley expanders in non-simple groups. Construction:A sequence of groups G1, G2 ,… of groups, with generating sets T1,T2, … such that Cay(Gn,Tn) are expanders. Challenge: Define Gn+1,Tn+1 fromGn,Tn

  21. Constant degree expansion in iterated wreath-products [Rosenman-Shalev-W] Start with G1 = SYMd, |T1|≤ √d. [Kassabov] Iterate:Gn+1= SYMd x Gnd Get (G1 ,T1 ), (G2 ,T2),…, (Gn ,Tn ),... Gn: automorphisms of d-regular tree of height n. Cay(Gn,Tn ) expands  few expanding orbits for Gnd d n Theorem[RSW]Cay(Gn, Tn) constant degree expanders.

  22. Near-constant degree expansion in solvable groups [Meshulam-W] Start with G1 = T1= Z2. Iterate:Gn+1= Gn x Fp[Gn] Get (G1 ,T1 ), (G2 ,T2),…, (Gn ,Tn ),... Cay(Gn,Tn ) expands  few expanding orbits for Fp[Gn] Conjecture (true for Gn’s): Cay(G,T) expands  Ghas ≤exp(d) irreducible reps of every dimension d. Theorem [Meshulam-W] Cay(Gn,Tn) with near-constant degree: |Tn| O(log(n/2)|Gn|) (tight! [Lubotzky-Weiss] )

  23. Belief Propagation in Codes and L2 sections of L1

  24. Random Euclidean sections of L1N • Classical high dimensional geometry [Kashin 77, Figiel-Lindenstrauss-Milman 77]: For a randomsubspaceX RNwith dim(X) = N/2, L2 and L1 norms are equivalent up to universal factors |x|1 = Θ(√N)|x|2 xX L2 mass of x is spread across many coordinates #{ i : |xi| ~ √N||x||2 } = Ω(N) • Analogy: error-correcting codes: Subspace Cof F2Nwith every nonzero c  C has (N) Hamming weight.

  25. Euclidean sections applications: • Low distortion embedding L2 L1 • Efficient nearest neighbor search • Compressed sensing • Error correction over the Reals. • …… Challenge[Szarek, Milman, Johnson-Schechtman]:find an efficient, deterministic section with L2~L1 X RNdim(X)vs.istortion(X) (X) =Maxx X(√N||x||2)/||x||1 We focus on: dim(X)=(N) & (X) =O(1)

  26. Derandomization results [Arstein-Milman] For dim(X)=N/2 (X) =(√N||x||2)/||x||1 = O(1) X= ker(A) # random bits • [Kashin ’77, Garnaev-Gluskin ’84] O(N2 ) A a random sign matrix. • [Arstein-Milman ’06] O(N log N) Expander walk on A’s columns • [Lovett-Sodin ‘07] O(N) Expander walk + k-wise independence • [Guruswami-Lee-W ’08](X) = exp(1/) N>0 Expander codes & “belief propagation”

  27. Spread subspaces Key ideas [Guruswami-Lee-Razborov]: L  Rdis (t,)-spread if every x  L, S [d], |S|≤t ||xS||2 ≤ (1-)||x| “No t coordinates take most of the mass” Equivalent notion to distortion (and easier to work with) • O(1) distortion  ( (d), (1) )-spread • (t, )-spread  distortion O(-2· (d/t)1/2) Note: Every subspace is trivially (0, 1)-spread. Strategy: Increase t while not losing too much L2 mass. • (t, )-spread  (t’, ’)-spread

  28. Constant distortion construction [GLW](like Tanner codes) Ingredients for X=X(H,L): - H(V,E): a d-regular expander - L Rd : a random subspace X(H,L) = { xRE: xE(v)  L v V } Note: - N = |E| = nd/2 - If L has O(1) distortion (say is(d/10, 1/10)-spread) for d = n/2, we can pick L using nrandom bits. Belongs to L

  29. Distortion/spread analysis [GLW]: If H is an (n, d,√d)-expander, and Lis (d/10, 1/10)-spread, then the distortion of X(H,L) is exp(logdn) Pickingd = n we get distortion exp(1/) =O(1) Suffices to show: For unit vector x  X(H,L) & setWof<n/20vertices W V

  30. Belief / Mass propagation • Define Z= { zW:zhas>d/10neighbors inW} • By local(d/10, 1/10)-spread, mass in W \ Z “leaks out” It follows that By expander mixing lemma, |Z| < |W|/d Iterating this logd n times… Completely analogous to iterative decoding of binary codes, which extends to error-correction over Reals. [Alon] This “myopic” analysis cannot be improved! OPEN: Fully explicit Euclidean sections Z W V

  31. Summary TCS goes hand in hand with Geometry Analysis Algebra Group Theory Number Theory Game Theory Algebraic Geometry Topology … Algorithmic/computational problems need math tools, but also bring out new math problems and techniques

More Related