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Foundations of Cryptography Lecture 1

Foundations of Cryptography Lecture 1. Lecturer: Moni Naor. What is Cryptography?. Traditionally: how to maintain secrecy in communication. Alice and Bob talk while Eve tries to listen. Bob. Alice. Eve. History of Cryptography. Very ancient occupation Biblical times -

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Foundations of Cryptography Lecture 1

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  1. Foundations of CryptographyLecture 1 Lecturer:Moni Naor

  2. Whatis Cryptography? Traditionally: how to maintain secrecy in communication Alice and Bob talk while Eve tries tolisten Bob Alice Eve

  3. History of Cryptography • Very ancient occupation Biblical times - איך נלכדה ששך ותתפש תהלת כל הארץ איך היתה לשמה בבל בגויים • Many interesting books and sources, especially about the Enigma • David Kahn, The Codebreakers, 1967 • Gaj and Orlowski, Facts and Myths of Enigma: Breaking Stereotypes Eurocrypt 2003 • Not the subject of this course

  4. Modern Times • Up to the mid 70’s - mostly classified military work • Since then - explosive growth • Commercial applications • Scientific work: tight relationship with Computational Complexity Theory • Major works: Diffie-Hellman, Rivest, Shamir and Adleman (RSA) • Recently - more involved models for more diverse tasks. How to maintain the secrecy, integrity and functionality in computer and communication system.

  5. Complexity Theory - Study the resources needed to solve computational problems computer time, memory Identify problems that are infeasible to compute. Cryptography - Find ways to specify security requirements of systems Use the computational infeasibility of problems in order to obtain security. Cryptography and Complexity The development of these two areas is tightly connected! The interplay between these areas is the subject of the course

  6. Administrivia • Instructor: Moni Naor • Grader: Guy Rothblum • When:     Thursday 14:00--16:00 Where:    Ziskind 1 Home page of the course: www.wisdom.weizmann.ac.il/~naor/COURSE/foundations_of_crypto.html • METHOD OF EVALUATION: around 12 homework assignments and a final (in class) exam • Homework assignments should be turned in on time (usually two weeks after they are given)! • Try and do as many problems from each set. • You may (and are encouraged to) discuss the problems with other students, but the write-up should be individual.

  7. Official Description Cryptography deals with methods for protecting the privacy, integrity and functionality of computer and communication systems. The goal of the course is to provide a firm foundation to the construction of such methods. In particular we will cover topics such as notions of security of a cryptosystem, proof techniques for demonstrating security and cryptographic primitives such as one-way functions and trapdoor permutations

  8. Sources Books: Oded Goldreich, Foundations of Cryptography • Vol 1, Basic Tools, Cambridge ,2001 • Other volumes in www.wisdom.weizmann.ac.il/~oded/books.html Web courses • Trevisan and Wagner: www.cs.berkeley.edu/~daw/cs276 • Bellare and Rogaway: www.cs.ucsd.edu/users/mihir/cse207/index.html

  9. Three Basic Issues in Cryptography • Identification • Authentication • Encryption

  10. Example: Identification • When the time is right, Alice wants to send an `approve’ message to Bob. • They want to prevent Eve from interfering • Bob should be sure that Alice indeed approves Alice Bob Eve

  11. Rigorous Specification of Security To define security of a system must specify: • What constitute a failure of the system • The power of the adversary • computational • access to the system • what it means to break the system.

  12. Specification of the Problem Alice and Bob communicate through a channel Bob has two external states {N,Y} Eve completely controls the channel Requirements: • If Alice wants to approve and Eve does not interfere – Bob moves to state Y • If Alice does not approve, then for any behavior from Eve, Bob stays in N • If Alice wants to approve and Eve does interfere - no requirements from the external state

  13. Can we guarantee the requirements? • No – when Alice wants to approve she sends (and receives) a finite set of bits on the channel. Eve can guess them. • To the rescue - probability. • Want that Eve will succeed with low probability. • How low? Related to the string length that Alice sends…

  14. Example: Identification X X Alice Bob ?? Eve

  15. Suppose there is a setup period • There is a setup where Alice and Bob can agree on a common secret • Eve only controls the channel, does not see the internal state of Alice and Bob (only external state of Bob) Simple solution: • Alice and Bob choose a random string X R{0,1}n • When Alice wants to approve – she sends X • If Bob gets any symbols on channel – compares to X • If equal moves to Y • If not equal moves permanently to N

  16. Eve’s probability of success • If Alice did not send X and Eve put some string X’ on the channel, then • Bob moves to Y only if X=X’ Prob[X=X’] ≤ 2-n Good news: can make it a small as we wish • What to do if Alice and Bob cannot agree on a uniformly generated string X?

  17. Less than perfect random variables • Suppose X is chosen according to some distribution Px cover some set of symbols Γ • What is Eve’s best strategy? • What is her probability of success

  18. (Shannon) Entropy Let X be random variable over alphabet Γ with distribution Px The (Shannon) entropy of X is H(X) = - ∑ x ΓPx (x) log Px (x) Where we take 0 log 0 to be 0. Represents how much we can compress X

  19. Examples • If X=0 (constant) then H(x) = 0 • Only case where H(X)=0 when X is constnat • All other cases H(X) >0 • If X {0,1} and Prob[X=0] = p and Prob[X=1]=1-p, then H(X) = -p log p + (1-p) log (1-p) ≡ H(p) If X {0,1}n and is uniformly distributed, then H(X) = - ∑ x  {0,1}n1/2n log 1/2n =2n/2n n = n

  20. Properties of Entropy • Entropy is bounded H(X) ≤ log | Γ | with equality only if X is uniform over Γ

  21. Does High Entropy Suffice for Identification? • If Alice and bob agree on X {0,1}n where X has high entropy (say H(X) ≥ n/2 ), what are Eve’s chances of cheating? • Can be high: say • Prob[X=0n ] = 1/2 • For any x1{0,1} n-1 Prob[X=x ] = 1/2n Then H(X) = n/2+1/2 But Eve can cheat with probability at least ½ by guessing that X=0n

  22. Another Notion: Min Entropy Let X be random variable over alphabet Γ with distribution Px The min entropy of X is Hmin(X) = - log max x ΓPx (x) The min entropy represents the most likely value of X Property: Hmin(X) ≤ H(X) Why?

  23. High Min Entropy and Passwords Claim: if Alice and Bob agree on such that Hmin(X) ≥ m, then the probability that Eve succeeds in cheating is at most 2-m Proof: Make Eve deterministic, by picking her best choice, X’ = x’. Prob[X=x’] = Px (x’) ≤ max x ΓPx (x) = 2 –Hmin(X) ≤ 2-m Conclusion: passwords should be chosen to have high min-entropy!

  24. One-time vs. many times • This was good for a single identification. What about many identification? • Later…

  25. A different scenario – now Charlie is involved • Bob has no proof that Alice indeed identified • If there are two possible verifiers, Bob and Charlie, they can each pretend to each other to be Alice • Can each have there own string • But, assume that they share the setup phase • Whatever Bob knows Charlie know • Relevent when they are many of them

  26. The new requirement • If Alice wants to approve and Eve does not interfere – Bob moves to state Y • If Alice does not approve, then for any behavior from Eve and Charlie, Bob stays in N • Similarly if Bob and Charlie are switched Charlie Alice Bob Eve

  27. Can we achieve the requirements? • Observation: what Bob and Charlie received in the setup phase might as well be public • Therefore can reduce to the previous scenario (with no setup)… • To the rescue - complexity Alice should be able to perform something that neither Bob nor Charlie (nor Eve) can do Must assume that the parties are not computationally all powerful!

  28. Function and inversions • We say that a function f is hard to invert if given y= f(x) it is hard to find x’ such that y=f(x’) • x’ need not be equal to x • We will use f-1(y) to denote the set of preimages of y • To discuss hard must specify a computational model • Use two flavors: • Concrete • Asymptotic

  29. One-way functions - asymptotics A function f: {0,1}n → {0,1}n is called aone-way function, if • f is a polynomial-time computable function • for every probabilistic polynomial-time algorithm A, every positive polynomial p(.), and all sufficiently large n’s Prob[A[f(x)] f-1(f(x)) ] ≤ 1/p(n) Where x is chosen uniformly in {0,1}nand the probability is also over the internal coin flips of A

  30. One-way functions – concrete version A function f: {0,1}n → {0,1}n is called a (t,ε) one-way function, if • f is a polynomial-time computable function (independent of t) • for every t-time algorithm A, Prob[A[f(x)] f-1(f(x)) ] ≤ ε Where x is chosen uniformly in {0,1}nand the probability is also over the internal coin flips of A Can either think of t and εas being fixed or as t(n), ε(n)

  31. Complexity Theory and One-way Functions • Claim: if P=NP then there are no one-way functions • Proof: for any one-way function f: {0,1}n → {0,1}n consider the language : • Consisting of strings of the form {y, b1, b2…bk} • There is an x  {0,1}n s.t. f(x)=y and • The first k bits of x are b1, b2…bk Lf is NP – guess x and check If Lf is P then f is invertable in polynomial time

  32. A few properties and questions concerning one-way functions • Major open problem: connect the existence of one-way functions and P=NP? question. • If f is one-to-one it is a called a one-way permutation. In what complexity class does the problem of inverting one-way permutations reside? Homework • If f is a one-way function, is f’ where f’(x) is f(x) with the last bit chopped a one-way function? • If f is a one-way function, is fL where fL(x) consists of the first half of the bits of f(x) a one-way function? Homework • If f is a one way function is g(x) = f(f(x)) necessarily a one-way function? Homework

  33. Solution to the password problem • Assume that • f: {0,1}n → {0,1}n is a (t,ε) one-way function • Adversaries run times is bounded by t • Setup phase: Alice chooses x{0,1}n , computes y=f(x) and given Bob and Charlie y • When Alice wants to approve – she sends X • If Bob gets any symbols on channel – call them z; compute f(z) and compares to y • If equal moves to state Y • If not equal moves permanently to state N

  34. Eve’s and Charlie’s probability of success • If Alice did not send x and Eve (Charlie) put some string x’ on the channel to Bob, then: • Bob moves to state Y only if f(x’)=y=f(x) • But we know that Prob[A[f(x)] f-1(f(x)) ] ≤ ε or else we can use Eve to break the one-way function Good news: if ε can be made as small as we wish, then we have a good scheme. • Can be used for monitoring • Similar to the Unix password scheme • f(x) stored in login file • DES used as the one-way function.

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