The emerging class of instance-optimized systems has shown potential to achieve high performance by specializing to a specific data and query workloads. Particularly, Machine Learning (ML) techniques have been applied successfully to build various instance-optimized components (e.g., learned indexes). This paper investigates to leverage ML techniques to enhance the performance of spatial indexes, particularly the R-tree, for a given data and query workloads. As the areas covered by the R-tree index nodes overlap in space, upon searching for a specific point in space, multiple paths from root to leaf may potentially be explored. In the worst case, the entire R-tree could be searched. In this paper, we define and use the overlap ratio to quan...
In theoretical studies, we often develop structures that are dedicated to specific problems. In prac...
Abstract. Pruning plays an integral role in reducing the search space of nearest neighbor queries on...
In recent years, we have seen increased interest in applying machine learning to system problems. Fo...
Learned indexes have been proposed to replace classic index structures like B-Tree with machine lear...
Even with its significant impacts on the database area, the R-tree is often criticized by its lack o...
In this paper we study the node distribution of an R-tree storing region data, like for instance isl...
In this paper we study the node distribution of an R-tree storing region data, like for instance isl...
We study the node distribution of an R-tree storing region data, like for instance islands, lakes or...
The performance of spatial queries depends mainly on the underlying index structure used to handle t...
The construction of an efficient tree structure should take into account parameters which can be opt...
This thesis investigates the performance of memory resident spatial search, focusing on the R-tree. ...
: In this paper we present an analytical model that predicts the performance of R-trees (and its var...
The query efficiency of a data structure that stores a set of objects, can normally be assessed by a...
The query efficiency of a data structure that stores a set of objects, can normally be assessed by a...
The construction of an efficient tree structure should take into account parameters that can be opti...
In theoretical studies, we often develop structures that are dedicated to specific problems. In prac...
Abstract. Pruning plays an integral role in reducing the search space of nearest neighbor queries on...
In recent years, we have seen increased interest in applying machine learning to system problems. Fo...
Learned indexes have been proposed to replace classic index structures like B-Tree with machine lear...
Even with its significant impacts on the database area, the R-tree is often criticized by its lack o...
In this paper we study the node distribution of an R-tree storing region data, like for instance isl...
In this paper we study the node distribution of an R-tree storing region data, like for instance isl...
We study the node distribution of an R-tree storing region data, like for instance islands, lakes or...
The performance of spatial queries depends mainly on the underlying index structure used to handle t...
The construction of an efficient tree structure should take into account parameters which can be opt...
This thesis investigates the performance of memory resident spatial search, focusing on the R-tree. ...
: In this paper we present an analytical model that predicts the performance of R-trees (and its var...
The query efficiency of a data structure that stores a set of objects, can normally be assessed by a...
The query efficiency of a data structure that stores a set of objects, can normally be assessed by a...
The construction of an efficient tree structure should take into account parameters that can be opti...
In theoretical studies, we often develop structures that are dedicated to specific problems. In prac...
Abstract. Pruning plays an integral role in reducing the search space of nearest neighbor queries on...
In recent years, we have seen increased interest in applying machine learning to system problems. Fo...