Paper 2016/170
Fast Learning Requires Good Memory: A Time-Space Lower Bound for Parity Learning
Ran Raz
Abstract
We prove that any algorithm for learning parities requires either a memory of quadratic size or an exponential number of samples. This proves a recent conjecture of Steinhardt, Valiant and Wager and shows that for some learning problems a large storage space is crucial. More formally, in the problem of parity learning, an unknown string $x \in \{0,1\}^n$ was chosen uniformly at random. A learner tries to learn $x$ from a stream of samples $(a_1, b_1), (a_2, b_2)... $, where each $a_t$ is uniformly distributed over $\{0,1\}^n$ and $b_t$ is the inner product of $a_t$ and $x$, modulo 2. We show that any algorithm for parity learning, that uses less than $n^2/25$ bits of memory, requires an exponential number of samples. Previously, there was no non-trivial lower bound on the number of samples needed, for any learning problem, even if the allowed memory size is $O(n)$ (where $n$ is the space needed to store one sample). We also give an application of our result in the field of bounded-storage cryptography. We show an encryption scheme that requires a private key of length $n$, as well as time complexity of $n$ per encryption/decryption of each bit, and is provenly and unconditionally secure as long as the attacker uses less than $n^2/25$ memory bits and the scheme is used at most an exponential number of times. Previous works on bounded-storage cryptography assumed that the memory size used by the attacker is at most linear in the time needed for encryption/decryption.
Metadata
- Available format(s)
- Publication info
- Preprint. MINOR revision.
- Keywords
- bounded storage model
- Contact author(s)
- ran raz mail @ gmail com
- History
- 2016-02-19: received
- Short URL
- https://ia.cr/2016/170
- License
-
CC BY
BibTeX
@misc{cryptoeprint:2016/170, author = {Ran Raz}, title = {Fast Learning Requires Good Memory: A Time-Space Lower Bound for Parity Learning}, howpublished = {Cryptology {ePrint} Archive, Paper 2016/170}, year = {2016}, url = {https://eprint.iacr.org/2016/170} }