Affiliation:
1. Renmin University of China, Beijing, China
2. HKUST, Clear Water Bay, Hong Kong
Abstract
We study the problem of two-dimensional orthogonal range counting with additive error. Given a set
P
of
n
points drawn from an
n
×
n
grid and an error parameter ε, the goal is to build a data structure, such that for any orthogonal range
R
, it can return the number of points in
P
∩
R
with additive error ε
n
. A well-known solution for this problem is obtained by using
ε-approximation
, which is a subset
A
⊆
P
that can estimate the number of points in
P
∩
R
with the number of points in
A
∩
R
. It is known that an ε-approximation of size
O
(1/ε log
2.5
1/ε) exists for any
P
with respect to orthogonal ranges, and the best lower bound is Ω(1/ε log 1/ε).
The ε-approximation is a rather restricted data structure, as we are not allowed to store any information other than the coordinates of the points. In this article, we explore what can be achieved without any restriction on the data structure. We first describe a simple data structure that uses
O
(1/ε(log
2
1/ε + log
n
)) bits and answers queries with error ε
n
. We then prove a lower bound that any data structure that answers queries with error ε
n
will have to use Ω(1/ε (log
2
1/ε + log
n
)) bits. Our lower bound is information-theoretic: We show that there is a collection of 2
Ω
(
n
log
n
) point sets with large
union combinatorial discrepancy
and thus are hard to distinguish unless we use Ω(
n
log
n
) bits.
Funder
HKRGC
Fundamental Research Funds for the Central Universities
Research Funds of Renmin University of China
National Natural Science Foundation of China
Publisher
Association for Computing Machinery (ACM)
Subject
Mathematics (miscellaneous)
Reference28 articles.
1. P. K. Agarwal and J. Erickson. 1997. Geometric range searching and its relatives. In Discrete and Computational Geometry: Ten Years Later. Mathematical Society Press. P. K. Agarwal and J. Erickson. 1997. Geometric range searching and its relatives. In Discrete and Computational Geometry: Ten Years Later. Mathematical Society Press.
2. Small-Size $\eps$-Nets for Axis-Parallel Rectangles and Boxes
3. Approximate Halfspace Range Counting
4. Approximate range searching☆☆A preliminary version of this paper appeared in the Proc. of the 11th Annual ACM Symp. on Computational Geometry, 1995, pp. 172–181.
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