Spatial data mining recently emerges from a number of real applications, such as real-estate marketing, urban planning, weather forecasting, medical image analysis, road traffic accident analysis, etc. It demands for efficient solutions for many new, expensive, and complicated problems. In this paper, we investigate the problem of evaluating the top k distinguished “features” for a “cluster” based on weighted proximity relationships between the cluster and features. We measure proximity in an average fashion to address possible nonuniform data distribution in a cluster. Combining a standard multi-step paradigm with new lower and upper proximity bounds, we presented an efficient algorithm to solve the problem. The algorithm is implemented in...
. An algorithm for ranking spatial objects according to increasing distance from a query object is i...
Establishing neighborhood relationships among data points is important for several data analysis app...
This paper presents an improved clustering algorithm for categorizing data with arbitrary shapes. Mo...
Spatial data mining recently emerges from a number of real applications, such as real-estate marketi...
Spatial data mining recently emerges from a number of real applications, such as real-estate marketi...
This thesis deals with a nearest-neighbour problem. Specifically, we identify proximity relationshi...
We study the spatial data mining problem of how to extract a special type of proximity relationship-...
With the growth of geo-referenced data and the sophistication and complexity of spatial databases, d...
Cluster analysis plays a significant role regarding automating such a knowledge discovery process in...
Spatial databases play a vital role in many applications such as Geographic InformationSystems (GIS)...
Abstract. Consider two sets of spatial objects R and S, where each ob-ject is assigned a score (e.g....
Abstract. Consider two sets of spatial objects R and S, where each ob-ject is assigned a score (e.g....
We introduce a new probabilistic proximity search algorithm for range and K-nearest neighbor (K-NN) ...
In paper we present C²P, a new clustering algorithm for large spatial databases, which exploits spat...
Efficient learning of a data analysis task strongly depends on the data representation. Most methods...
. An algorithm for ranking spatial objects according to increasing distance from a query object is i...
Establishing neighborhood relationships among data points is important for several data analysis app...
This paper presents an improved clustering algorithm for categorizing data with arbitrary shapes. Mo...
Spatial data mining recently emerges from a number of real applications, such as real-estate marketi...
Spatial data mining recently emerges from a number of real applications, such as real-estate marketi...
This thesis deals with a nearest-neighbour problem. Specifically, we identify proximity relationshi...
We study the spatial data mining problem of how to extract a special type of proximity relationship-...
With the growth of geo-referenced data and the sophistication and complexity of spatial databases, d...
Cluster analysis plays a significant role regarding automating such a knowledge discovery process in...
Spatial databases play a vital role in many applications such as Geographic InformationSystems (GIS)...
Abstract. Consider two sets of spatial objects R and S, where each ob-ject is assigned a score (e.g....
Abstract. Consider two sets of spatial objects R and S, where each ob-ject is assigned a score (e.g....
We introduce a new probabilistic proximity search algorithm for range and K-nearest neighbor (K-NN) ...
In paper we present C²P, a new clustering algorithm for large spatial databases, which exploits spat...
Efficient learning of a data analysis task strongly depends on the data representation. Most methods...
. An algorithm for ranking spatial objects according to increasing distance from a query object is i...
Establishing neighborhood relationships among data points is important for several data analysis app...
This paper presents an improved clustering algorithm for categorizing data with arbitrary shapes. Mo...