One-way function
In computer science, a one-way function is a function that is easy to compute on every input, but hard to invert given the image of a random input. Here "easy" and "hard" are to be understood in the sense of computational complexity theory, specifically the theory of polynomial time problems. Not being one-to-one is not considered sufficient of a function for it to be called one-way (see Theoretical Definition, below).
The existence of such one-way functions is still an open conjecture. In fact, their existence would prove that the complexity classes P and NP are not equal, thus resolving the foremost unsolved question of theoretical computer science.[1]: ex. 2.2, page 70 Existence of a proof that P and NP are not equal would not directly imply the existence of one-way functions.[2]
In applied contexts, the terms "easy" and "hard" are usually interpreted relative to some specific computing entity; typically "cheap enough for the legitimate users" and "prohibitively expensive for any malicious agents". One-way functions, in this sense, are fundamental tools for cryptography, personal identification, authentication, and other data security applications. While the existence of one-way functions in this sense is also an open conjecture, there are several candidates that have withstood decades of intense scrutiny. Some of them are essential ingredients of most telecommunications, e-commerce, and e-banking systems around the world.
Theoretical definition
A function f: {0, 1}* → {0, 1}* is one-way if f can be computed by a polynomial time algorithm, but for every randomized algorithm A which runs in time polynomial in |x|, every polynomial p(n), and all sufficiently large n
where the probability is over the choice of x from the uniform distribution on {0, 1}n, and the randomness of A.
Note that, by this definition, the function must be "hard to invert" in the average-case, rather than worst-case sense. This is different from much of complexity theory (e.g., NP-hardness), where the term "hard" is meant in the worst-case.
It is not sufficient to make a function "lossy" (not one-to-one) to have a one-way function. In particular, the function which outputs the string of n zeros on any input of length n is not a one-way function. The reason is that an algorithm A which just outputs any string of length n on input f(x) does find a proper preimage of the output, even if it is not the input which was originally used to find the output string.
Related concepts
A trapdoor one-way function or trapdoor permutation is a special kind of one-way function. Such a function is hard to invert unless some secret information, called the trapdoor, is known.
A one-way permutation is a one-way function that is also a permutation—that is, a one-way function that is both injective and surjective. One-way permutations are an important cryptographic primitive, and it is not known if their existence is implied by the existence of one-way functions.
A collision-free hash function f is a one-way function that is also collision-resistant; that is, no randomized polynomial time algorithm can find a collision—distinct values x, y such that f(x) = f(y)—with non-negligible probability.[3]
Theoretical implications of one-way functions
If f is a one-way function, then the inversion of f would be a problem whose output is hard to compute (by definition) but easy to check (just by computing f on it). Thus, the existence of a one-way function implies that P≠NP. However, it is not known whether P≠NP implies the existence of one-way functions.
The existence of a one-way function implies the existence of many other useful concepts, including:
- Pseudorandom generators
- Pseudorandom function families
- Bit commitment schemes
- Private-key encryption schemes secure against adaptive chosen-ciphertext attack
- Message authentication codes
- Digital signature schemes (secure against adaptive chosen-message attack)
The existence of one-way functions also implies that there is no natural proof for P≠NP.
Candidates for one-way functions
Following are several candidates for one-way functions (as of April 2009). Clearly, it is not known whether these functions are indeed one-way; but extensive research has so far failed to produce an efficient inverting algorithm for any of them.
Multiplication and factoring
The function f takes as inputs two prime numbers p and q in binary notation and returns their product. This function can be computed in O(n2) time where n is the total length (number of digits) of the inputs. Inverting this function requires finding the factors of a given integer N. The best factoring algorithms known run in time, which is only pseudo-polynomial in , the number of bits needed to represent N.
This function can be generalized by allowing p and q to range over a suitable set of semiprimes. Note that f is not one-way for arbitrary p,q>1, since the product will have 2 as a factor with probability 3/4.
Modular squaring and square roots
The function f takes two positive integers x and N, where N is the product of two primes p and q, and outputs the remainder of x2 divided by N. Inverting this function requires computing square roots modulo N; that is, given y and N, find some x such that x2 mod N = y. It can be shown that the latter problem is computationally equivalent to factoring N (in the sense of polynomial-time reduction) The Rabin cryptosystem is based on the assumption that this Rabin function is one-way.
Discrete exponential and logarithm
The function f takes a prime number p and an integer x between 0 and p−1; and returns the remainder of 2x divided by p. This discrete exponential function can be easily computed in time O(n3) where n is the number of bits in p. Inverting this function requires computing the discrete logarithm modulo p; namely, given a prime p and an integer y between 0 and p−1, find x such that 2x = y. As of 2009, there is no published algorithm for this problem that runs in polynomial time. The ElGamal encryption scheme is based on this function.
Cryptographically secure hash functions
There are a number of cryptographic hash functions that are fast to compute like SHA 256. Some of the simpler versions have fallen to sophisticated analysis, but the strongest versions continue to offer fast, practical solutions for one-way computation. Most of the theoretical support for the functions are more techniques for thwarting some of the previously successful attacks.
Other candidates
Other candidates for one-way functions have been based on the hardness of the decoding of random linear codes, the subset sum problem (Naccache-Stern knapsack cryptosystem), or other problems.
Universal one-way function
There is an explicit function which has been demonstrated to be one-way if and only if one-way functions exist.[4] Since this function was the first combinatorial complete one-way function to be demonstrated, it is known as the "universal one-way function". The problem of determining the existence of one-way functions is thus reduced to the problem of proving that this specific function is one-way.
See also
References
- ^ Oded Goldreich (2001). Foundations of Cryptography: Volume 1, Basic Tools, (draft available from author's site). Cambridge University Press. ISBN 0-521-79172-3.
- ^ Goldwasser, S. and Bellare, M. "Lecture Notes on Cryptography". Summer course on cryptography, MIT, 1996–2001
- ^ Russell, A. (1995). "Necessary and Sufficient Conditions for Collision-Free Hashing". Journal of Cryptology. 8 (2): 87–99. doi:10.1007/BF00190757.
- ^ Leonid Levin (2003). "The Tale of One-Way Functions". ACM. arXiv:cs.CR/0012023.
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Further reading
- Jonathan Katz and Yehuda Lindell (2007). Introduction to Modern Cryptography. CRC Press. ISBN 1-58488-551-3.
- Michael Sipser (1997). Introduction to the Theory of Computation. PWS Publishing. ISBN 0-534-94728-X. Section 10.6.3: One-way functions, pp. 374–376.
- Christos Papadimitriou (1993). Computational Complexity (1st ed.). Addison Wesley. ISBN 0-201-53082-1. Section 12.1: One-way functions, pp. 279–298.