In traditional OLAP systems, roll-up and drill-down operations over data cubes exploit fixed hierarchies defined on discrete attributes, which play the roles of dimensions, and operate along them. New emerging application scenarios, such as sensor networks, have stimulated research on OLAP systems, where even continuous attributes are considered as dimensions of analysis, and hierarchies are defined over continuous domains. The goal is to avoid the prior definition of an ad-hoc discretization hierarchy along each OLAP dimension. Following this research trend, in this paper we propose a novel method, founded on a density-based hierarchical clustering algorithm, to support roll-up and drill-down operations over OLAP data cubes with continuous...
Abstract: Actual data warehouses models usually consider OLAP dimensions as static entities. However...
Abstract. Hierarchical clustering has been proved an effective means for physically organizing large...
Online Analytical Processing (OLAP) is a database paradigm that supports the rich analysis of multi-...
In traditional OLAP systems, roll-up and drill-down operations over data cubes exploit fixed hierarc...
In traditional OLAP systems, roll-up and drill-down operations over data cubes exploit fixed hierarc...
Abstract. In traditional OLAP systems, roll-up and drill-down operations over data cubes exploit fix...
This paper deals with the problem of physical clustering of multidimensional data that are organized...
The pre-computation of data cubes is critical for improving the response time of OLAP(online analyti...
The data cube operator exemplifies two of the most important as-pects of OLAP queries: aggregation a...
Abstract. The standard approach to OLAP requires measures and di-mensions of a cube to be known at t...
Shrink is an OLAM (On-Line Analytical Mining) operator based on hierarchical clustering, and it has ...
Hierarchical clustering has been proved an effective means for physically organizing large fact tabl...
Analysts interact with OLAP data in a predominantly drill-down fashion, i.e. gradually descending ...
Continuous valued dimensions in OLAP data cubes are usually grouped into countable disjoint interval...
Organizations have been used decisions support systems to help them to understand and to predict int...
Abstract: Actual data warehouses models usually consider OLAP dimensions as static entities. However...
Abstract. Hierarchical clustering has been proved an effective means for physically organizing large...
Online Analytical Processing (OLAP) is a database paradigm that supports the rich analysis of multi-...
In traditional OLAP systems, roll-up and drill-down operations over data cubes exploit fixed hierarc...
In traditional OLAP systems, roll-up and drill-down operations over data cubes exploit fixed hierarc...
Abstract. In traditional OLAP systems, roll-up and drill-down operations over data cubes exploit fix...
This paper deals with the problem of physical clustering of multidimensional data that are organized...
The pre-computation of data cubes is critical for improving the response time of OLAP(online analyti...
The data cube operator exemplifies two of the most important as-pects of OLAP queries: aggregation a...
Abstract. The standard approach to OLAP requires measures and di-mensions of a cube to be known at t...
Shrink is an OLAM (On-Line Analytical Mining) operator based on hierarchical clustering, and it has ...
Hierarchical clustering has been proved an effective means for physically organizing large fact tabl...
Analysts interact with OLAP data in a predominantly drill-down fashion, i.e. gradually descending ...
Continuous valued dimensions in OLAP data cubes are usually grouped into countable disjoint interval...
Organizations have been used decisions support systems to help them to understand and to predict int...
Abstract: Actual data warehouses models usually consider OLAP dimensions as static entities. However...
Abstract. Hierarchical clustering has been proved an effective means for physically organizing large...
Online Analytical Processing (OLAP) is a database paradigm that supports the rich analysis of multi-...