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Encodings

Encodings. Overview. Some basic math Error correcting codes Low degree polynomials Introduction to consistent readers and consistency tests. H.W. +, ·,0, 1, -a and a -1 are only notations!. Fields.

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Encodings

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  1. Encodings

  2. Overview • Some basic math • Error correcting codes • Low degree polynomials • Introduction to consistent readers and consistency tests H.W

  3. +,·,0, 1, -a and a-1 are only notations! Fields Definition (field): A set F with two binary operations + (addition) and · (multiplication) is called a field if 6 a,bF, a·bF 7 a,b,cF, (a·b)·c=a·(b·c) 8 a,bF, a·b=b·a 9  1F, aF, a·1=a 10a0F,  a-1F, a·a-1=1 1 a,bF, a+bF 2 a,b,cF, (a+b)+c=a+(b+c) 3 a,bF, a+b=b+a 4  0F, aF, a+0=a 5 aF,  -aF, a+(-a)=0 11 a,b,cF, a·(b+c)=a·b+a·c

  4. Finite Fields Definition (finite field):A finite set F with two binary operations + (addition) and · (multiplication) is called a finite field if it is a field. Example:Zpdenotes {0,1,...,p-1}. We define + and · as the addition and multiplication modulo p respectively. One can prove that (Zp,+,·) is a field iff p is prime. Throughout the presentations we’ll usually refer to Zpwhen we’ll mention finite fields.

  5. Strings & Functions (1) • Let  = 0 2 . . . n-1, where i.We can describe the string  asa function  : {0…n-1}  , such that i (i) = i. • Let f be a function f : D  R. Then f can be described as a string in R|D|, spelling f’s value on each point of D.

  6. Strings & Functions - Example For example, let f be afunction f : Z5  Z5, and let  = Z5. f(x) = x2   = 0, 1, 4, 4, 1

  7. received message “noise” 1 1101110 Introduction to Error Correcting Codes Motivation: original message 1001110 1001110 communication line We’d like to still be able to reconstruct the original message

  8. Error Correcting Codes Note that :mmR+ is indeed a distance function, because it satisfies: (1) x,ym(x,y)0 and (x,y)=0 iff x=y (2) x,ym(x,y)=(y,x) (3) x,y,zm(x,z)(x,y)+(y,z) Definition (encoding): An encodingE is a function E : n  m, where m >> n. Definition (-code): An encoding E is an-code if n (E(),E())  1 - , where (x,y) (the Hamming distance), denotes the fraction of entries on which x and y differ.

  9. E1- -code: illustration D R

  10. Univariate Polynomials Definition (univariate polynomial): a polynomial in x over a field F is a function P:FF, which can be written as for some series of coefficientsa0,...,ar-1F. The natural number r is called the degree-bound of the polynomial. Note: A polynomial whose degree-bound is r is of degree at most r-1 !

  11. Univariate Interpolation If there are two such polynomials: p1 & p2, then p1-p2 is a polynomial with degree-bound r, which has r roots. This contradicts the fundamental theorem of Algebra! Given x0,y0,...,xr-1,yr-1F there is a single univariate polynomial P and degree-bound r, which satisfies 0kr-1 P(xk)=yk (Lagrange’s formula) The process of finding the coefficients of a polynomial given its value in r points is called interpolation. yt 0 a-b denotes a+(-b) a/b denoted a•(b-1) Let’s check the value of this polynomial in x = xt for some 0  t  r-1: Since the degree-bound of this polynomial is r, we in fact proved the correctness of the formula

  12. A Generic -code Set F to be the finite field Zp for some prime p, and assume for simplicity that = F and m = p. Given n, let E() be the string of the function f : F  F that satisfies:f is the unique polynomial of degree-bound n such that f(i) = ifor all 0  i  n-1.

  13. A Generic -code (2) • E() can be interpolated from any n points. • Hence, for any , E() and E() may agree on at most n – 1 points. • Therefore, E is an (n – 1) / m - code.

  14. A Generic -code - Example p = m = 5, n = 2

  15. Strings & Functions (2) • We can describe any string as a function f:Hd  H (H is a finite field, d is a positive integer). • Given a n we’ll achieve that by choosing H=Zq, where q is the smallest prime greater than ||, and d=logqn.

  16. Multivariate Polynomials Definition (polynomial): Let F be a field and let d be some positive integer number. A function p:FdF is a polynomial if it can be written as for some series of coefficients in the field. h is the degree-bound on each one of the variables. The total-degree of the polynomial is max{ i0+…+id-1 : ai0…id-1 0 }.

  17. -Codes - Home Assignment • We’ve seen that univariate polynomials over a finite field F with degree-bound r are -codes for  = (r-1)/|F|. • For which  multivariate polynomials (over a finite field F, with degree-bound h in each variable and dimension d) are -codes? Next

  18. Curves Definition (curve): Let F be a field and let d be some natural number. A (univariate) curve is a function :F Fdof the form where p1,...,pd are univariate polynomials over F. The degree-bound of  is the maximum over the degree-bounds of the polynomials.

  19. Vector Spaces Definition (vector space): Let F be a field and V a set. V is a vector space over F if a binary addition + is defined over V and a scalar multiplication · is defined over V and F s.t 6 vV, aFa·vV 7 u,vV,  aFa(u+v)=au+av 8 vV,  a,bF(a+b)v=av+bv 9 vV,  a,bF(ab)v=a(bv) 10vV, 1·v=v 1 u,vV, u+vV 2 u,v,wV, (u+v)+w=u+(v+w) 3 u,vV, u+v=v+u 4  0V, vV, v+0=v 5 vV,  -vV, v+(-v)=0

  20. Vector Spaces - Example Let F be a field and let n be a natural number. Fn = { (a1,...,an) | a1,...,anF } is a vector space over F where for any (a1,...,an),(b1,...,bn)Fn (a1,...,an) + (b1,...,bn) = (a1+b1,...,an+bn) and for any (a1,...,an)Fnand cF c•(a1,...,an) = (c•a1,...,c•an)

  21. Subspaces Definition (subspace): A subset W of a vector space V (over a field F) is called a subspace of V if W itself is a vector space over the addition and scalar multiplication operations of V.

  22. Affine Subspaces Definition (affine subspace): Let V be a vector space. UV is an affine subspace of V if there exist a subspace W of V and a vV, such that U = { u | wW : u = w + v }

  23. Linear Combinations Definition (linear combination):Let V be a vector space over some field F. Let v1,...,vkV and let a1,...,akF. The sum a1v1+...+akvkis called a linear combination ofv1,...,vk with the coefficients a1,...,ak. Definition (linear dependent): A set of vectors {v1,...,vk} in some vector space V over a field F is linear dependentif there exist a1,...,akF and an 1ik for which ai0, s.ta1v1+...+akvk=0. Vectors which are not linear dependent are called linear independent.

  24. Basis Definition (Span): Let V be a vector space over some field F. Let KV. Span(K) denotes the subspace of all the linear combination of members of K. Definition (Basis): Let B{0} be a subset of a vector space V. B is called a basis for V if (a) B is linear independent. (b) Span(B)=V.

  25. Dimensions Definition (dimension): The number of vectors in any basis of a vector space is called its dimension. Similarly, the dimension of an affine subspace is the dimension of its corresponding subspace.

  26. Restriction of Polynomials Definition (restriction of a polynomial to an affine subspace): Let U be an affine subspace of Fd(where F is a field and d is a positive integer). Let p:FdF be a polynomial. The restriction of p to U is p’:UF, uU p’(u)=p(u). Definition (restriction of a polynomial to a curve): Let :FFd be a curve (where F is a field and d is a positive integer). Let p:FdF be a polynomial. The restriction of p to  is p’(x)=p((x)).

  27. Restriction of Polynomials - Home Assignment [1] Prove that the restriction of p to U is a polynomial. What are its degree-bound and dimension? [2] The same for . Next

  28. Low Degree Extension (LDE) Definition (low degree extension): Let  : Hd  H be a string (where H is some finite field). Given a finite field F, which is a superset of H, we define a low degree extension of  to F as a polynomial LDE : Fd  F which satisfies: • LDE agrees with  on Hd(extension). • The degree-bound of LDEis |H| in each variable (low degree).

  29. LDE - Home Assignment Let {0,1}n. Write down an expression for LDE.

  30. Reading a value Goal: To be able to find the value of an LDE in any point (set of points) of Fd. LDE x LDE(x)

  31. Straightforward Approach Represent the LDE by its coefficients. Alas, this will require access to |H|d variables,log|F| bits each, each time! the coefficients of the dimension-d, degree-bound- |H|LDE x LDE(x)

  32. “Tricky” Approach But now we encounter anew problem: we cannot be sure the values we are given are consistent, i.e. correspond to a single dimension-d, degree-bound-|H| polynomial. Represent the LDE by its values in the points of Fd. Now we only need access to one variable (log|F| bits) each time. the value of the LDE in every point in Fd x LDE(x)

  33. Consistent Readers In the upcoming lectures we’ll see how to build readers which: • access only a small number of the variables each time. • detect inconsistency with high probability. We’ll later weaken this notion

  34. v v v v v v v v v v v v v v Consistency Tests Suppose we have a set of variables which represent the LDE in some manner. A consistency test is a set of local tests. • If the values of the variables are consistent, all the local tests accept. • Otherwise a random test should reject w.h.p.

  35. Corresponding Game • Prover sets values to all variables in the representation. • Verifier picks randomly a single local-test and accepts or rejects according to its output. • The error-probability of a test is the fraction of local tests that may accept although the assigned values do not conform to global consistency.

  36. Corresponding Game

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