We propose measures for compressed data structures, in which space usage is mea- sured in a data-aware manner. In particular, we consider the fundamental dictionary problem on set data, where the task is to construct a data structure to represent a set S of n items out of a universe U = f0; : : : ; u 1g and support various queries on S. We use a well-known data-aware measure for set data called gap to bound the space of our data structures. We describe a novel dictionary structure taking gap+O(n log(u=n)= log n)+O(n log log(u=n)) bits. Under the RAM model, our dictionary supports membership, rank, select, and prede- cessor queries in nearly optimal time, matching the time bound of Andersson and Thorup's predecessor structure [AT00], while ...
Abstract. In this paper we investigate the problem of building a static data structure that represen...
The effcient indexing of large and sparse N-gram datasets is crucial in several applications in Info...
The effcient indexing of large and sparse N-gram datasets is crucial in several applications in Info...
We propose measures for compressed data structures, in which space usage is mea- sured in a data-awa...
We propose measures for compressed data structures, in which space usage is measured in a data-aware...
We propose measures for compressed data structures, in which space usage is measured in a data-aware...
[[abstract]]We propose measures for compressed data structures, in which space usage is measured in ...
AbstractIn this paper, we propose measures for compressed data structures, in which space usage is m...
AbstractIn this paper, we propose measures for compressed data structures, in which space usage is m...
In this paper, we present an experimental study of the spacetime tradeoffs for the dictionary proble...
[[abstract]]In this paper, we present an experimental study of the space-time tradeoffs for the dict...
In this paper, we present an experimental study of the spacetime tradeoffs for the dictionary proble...
In this paper, we present an experimental study of the spacetime tradeoffs for the dictionary proble...
The effcient indexing of large and sparse N-gram datasets is crucial in several applications in Info...
Given a set of integer keys from a bounded universe along with associated data, the dictionary prob...
Abstract. In this paper we investigate the problem of building a static data structure that represen...
The effcient indexing of large and sparse N-gram datasets is crucial in several applications in Info...
The effcient indexing of large and sparse N-gram datasets is crucial in several applications in Info...
We propose measures for compressed data structures, in which space usage is mea- sured in a data-awa...
We propose measures for compressed data structures, in which space usage is measured in a data-aware...
We propose measures for compressed data structures, in which space usage is measured in a data-aware...
[[abstract]]We propose measures for compressed data structures, in which space usage is measured in ...
AbstractIn this paper, we propose measures for compressed data structures, in which space usage is m...
AbstractIn this paper, we propose measures for compressed data structures, in which space usage is m...
In this paper, we present an experimental study of the spacetime tradeoffs for the dictionary proble...
[[abstract]]In this paper, we present an experimental study of the space-time tradeoffs for the dict...
In this paper, we present an experimental study of the spacetime tradeoffs for the dictionary proble...
In this paper, we present an experimental study of the spacetime tradeoffs for the dictionary proble...
The effcient indexing of large and sparse N-gram datasets is crucial in several applications in Info...
Given a set of integer keys from a bounded universe along with associated data, the dictionary prob...
Abstract. In this paper we investigate the problem of building a static data structure that represen...
The effcient indexing of large and sparse N-gram datasets is crucial in several applications in Info...
The effcient indexing of large and sparse N-gram datasets is crucial in several applications in Info...