In order to improve the performance of a database or implement security
policies, often, queries need to be rewritten in terms of previous
queries. In this work, we assume the queries are expressed as
conjunctive queries (queries posed as a conjunction of database
relations) and conjunctive queries with arithmetic comparisons (of the
form X \theta Y, where \theta is one of < or <= and X,Y are variables).
Traditionally, the bucket algorithm has been used to rewrite queries
using a set of existing queries. We show that the bucket algorithm is
not complete and present the shared-variable bucket algorithm, which is
sound and complete when the queries are conjunctive. The complexity of
rewriting queries is closely dependent upon the complexity of checking
for query containment, i.e., deciding whether the results produced by
one query is contained in results produced another for any given
database. When the queries contain arithmetic comparisons, the
complexity of query containment is \Pi_2^P-complete. We identify
special cases of arithmetic comparisons for which the problem is
NP-complete and propose an algorithm for rewriting queries for this
restricted class of arithmetic comparisons. We also outline an
efficient, heuristic algorithm that can be used to minimize the size of
the query rewritings.
Let A be a finite mathematical object. For instance, A could be an
integer, or a finite sequence of 0's and 1's, or a finite graph, or
a finite group. Associated with A is a positive integer K(A), the
Kolmogorov complexity of A, which measures the "amount of
information" in A, or the minimum length of a "description" of A.
More precisely, the Kolmogorov complexity of A is the minimum
length of a computer program P which describes A in the sense that,
if we run P with no inputs, then P eventually outputs A and halts.
In this talk we define Kolmogorov complexity and prove some of its
basic properties. We also survey some connections between
Kolmogorov complexity and various mathematical topics. Among these
topics are algorithmic randomness, Hausdorff dimension, diagonal
noncomputability, degrees of unsolvability, tilings of the plane,
and 2-dimensional symbolic dynamics.
Can the size of a solution to a graph problem be computed faster than the
solution itself? I will show that the answer to this question is positive in
many cases. For instance, I will present the first approximation algorithm
that for the family of graphs with degree bounded by d, computes the maximum
matching size to within epsilon * n in time that only depends on d and
epsilon.
I will give an overview of all known results, and I will discuss
applications to property testing and local distributed algorithms. A
byproduct of our techniques is a simple proof for the theorem of Benjamini,
Schramm, and Shapira (STOC 2008) that every minor-closed property of
bounded-degree graphs is testable in constant time.
Joint work with Noga Alon, Avinatan Hassidim, Jonathan A. Kelner, and Huy N. Nguyen.
If a large number of events are all independent of one another, then
there is a positive probability that none of these events will occur.
The Lovasz Local Lemma (LLL) relaxed the independence condition such
that each event is independent of all but a small number of other
events. In this case, there will still be a positive probability that
none of them occurs. Unfortunately, the LLL is non-constructive
because it does not indicate how to pick an explicit element of the
probability space where no event occurs. There have been many attempts
to present a constructive version of LLL under some restricted
conditions. Recently, Robin Moser invented a simple and elegant
constructive proof of LLL, which earned him the best student paper
award and the best paper award at STOC 2009. In this talk, I will
explain Moser's constructive proof and its direct application to the
satisfiability problem.
The absolute privacy of secrets has been the corner-stone of modern cryptography. However, in practice, this assumption is often violated because of information leakage due to side-channel attacks. Side channel attacks such as power-analysis attacks, electromagnetic (EM) attacks, timing attacks and the recent ``cold-boot attacks'' leak information about the secrets, and have been used to completely break many cryptographic systems in common use.
In this talk, I will describe some recent work on mathematically modeling general classes of side-channel attacks, and designing cryptographic schemes secure against side-channels. In particular, I will show various constructions of
* Public-key encryption schemes, and
* Digital signature schemes
that are secure against *general* side-channel attacks.
I will also describe a method of protecting *any* cryptographic computation (including, as a special case, public-key encryption and digital signatures, but encompassing much more) against *specific* classes of side-channel attacks.
Bio:
Vinod Vaikuntanathan is a postdoctoral fellow in the cryptography group at IBM T. J. Watson. He received a Ph.D. from MIT in 2008 under the guidance of Shafi Goldwasser. He is a recipient of the MIT Akamai graduate fellowship, the IBM Josef Raviv Postdoctoral fellowship and the MIT George M. Sprowls Ph.D. thesis award. The focus of his research is cryptography, where his research involves devising new mathematical tools for cryptography, and applying theoretical cryptography to counter practical attacks.
Homomorphic Encryption enables us to perform operations on ciphertexts
without decrypting them. For example, the (textbook) RSA scheme is
homomorphic w.r.t. multiplication (i.e., product of two ciphertexts
gives the encryption of the product of the two corresponding
plaintexts). Previously, we only knew schemes that are homomorphic
under limited type of operations (say, addition or multiplication).
Schemes that allow evaluating any circuit on ciphertexts are called
fullly homomorphic. The problem of constructing a fully homomorphic
scheme has been open for almost 30 years, and many have conjectured
that no such scheme exists.
Craig Gentry (STOC'09) resolved this problem based on some hardness
assumption on ideal lattices. His approach is roughly two-step: he
first showed a generic result that if a scheme could evaluate its own
decryption circuit, then we can construct a fully homomorphic scheme
from this so called "bootstrappable" scheme. Next, he proposed a
bootstrappable encryption scheme using ideal lattices. I will go
through the entire construction in my talk, but more effort will be
placed on the first step, and I will probably only give high-level
ideas about the second step.
Nowadays, it is not unusual to see computations involving massive datasets. Users of such datasets (where user could just be an algorithm accessing the dataset) typically expects the dataset to satisfy certain structural property. Consider, for example, a Binary Search algorithm working on a dataset of list of numbers. The algorithm expects the dataset to be sorted and, in fact, it is a precondition for the correctness of the algorithm. The property of being sorted and many similar properties are sensitive to noise. Even a small amount of corruption could destroy the property. In such settings, one would usually like to modify the dataset minimally to recover the property. Because the underlying dataset is huge (eg. database of customer transactions), even going over the entire data completely once might not be feasible. The field of property testing and sublinear algorithms offers practical, sublinear algorithms for such tasks.
In this context, we seek to design a "filter" that sits between users of the dataset and the dataset itself. The filter accepts queries from user and repairs the dataset "on-the-fly" while answering the queries. We require that the number of "modifications" done by the filter to the dataset to recover the property is never more than a constant (say 2) factor off than what is absolutely necessary in an idealized offline setting. In this talk, I will focus on monotonicity, that is, the property that the dataset is sorted. I will present a sublinear (polylogarithmic) monotonicity reconstruction algorithm based on the paper : .Property-Preserving Data Reconstruction. by Nir Ailon, Bernard Chazelle, Seshadhri Comandur, Ding Liu which appeared in ISAAC (2004).
Invariants are key to proofs of correctness of programs, whether manual or automated. The last decade has seen significant developments in the automated generation of program invariants. This talk will discuss three
dimensions in the art of invariant generation: (a) Program Transformations, (b) Decision Procedures for Logics, and (c) Fixpoints. Program transformations alleviate the need for employing sophisticated invariant generation tools. Simpler invariants on the transformed program correspond to sophisticated invariants on the original program. Decision procedures are used to check satisfiability/validity of formulas involving arithmetic, uninterpreted functions, arrays, lists/reachability, and combinations of theories. Fixpoints are used to automatically generate loop invariants for a particular shade of logic. Examples include iteration (forward or backward), constraint based, proof-rules, and learning.
A variety of the above-mentioned principles for invariant generation will
then be applied to present a solution to the important, but relatively
under-studied, problem of computing a precise symbolic bound on the number
of visits to a given location in a program.
We are concerned with the exponential complexity of the Circuit
Satisfiability (CircuitSat) problem and more generally with the
exponential complexity of NP-complete problems. Over the past 15 years
or so, researchers have obtained a number of exponential-time
algorithms with improved running times for exactly solving a variety
of NP-complete problems. The improvements are typically in the form of
better exponents compared to exhaustive search. Our goal is to develop
techniques to prove specific lower bounds on the exponents under
plausible complexity assumptions. We consider natural, though
restricted, algorithmic paradigms and prove lower bounds on the
exponent of the success probability. Our approach has the advantage of
clarifying the relative power of various algorithmic paradigms.
Our main technique is a a success probability amplification technique, called
the Exponential Amplification Lemma, which shows that for any f(n,m)-size
bounded probabilistic circuit family A that decides CircuitSat with
success probability at least $2^{-\alpha n}$ for $\alpha<1$ on inputs
which are circuits of size $m$ with $n$ variables, there is another
probabilistic circuit family B that decides CircuitSat with size
roughly $f(\alpha n, f(m,n))$ and success probability about
$2^{-\alpha^2 n}$. In contrast, the standard method for boosting
success probability by repeated trials will improve it to
$(1-(1-2^{-\alpha n})^t)$ ($\approx t2^{-\alpha n}$ for $t=O(2^{\alpha
n}$)) using circuits of size about $tf(n,m)$.
Using this lemma, we derive tight bounds on the exponent of the
success probability for deciding the CircuitSat problem in a variety
of probabilistic computational models under complexity assumptions.
For example, we show that the success probability cannot be better
than $2^{-n+o(n)}$ for deciding CircuitSat by probabilistic polynomial
size circuits unless CircuitSat (thereby all of NP) on polynomial size
instances can be decided by $2^{n^\mu}$ size deterministic circuits
for some $\mu <1$, which is considered an unlikely event.
As another example, we show that probabilistic quasilinear size circuits cannot
achieve success probability better than $2^{-n+o(n)}$ unless
CircuitSat (as well as NP) has $O(m^{\lg \lg m})$ size deterministic
circuits, which is very close to the statement $\np\in\ppoly$, a
highly unlikely scenario.