This thesis consits of four papers dealing with distance based (non-Euclidean) tests for spatial clustering in inhomogeneous populations. The density adjusted distance (DAD), which considers the underlying density, is defined in the first paper. The proposed distance can be used together with any of the old distance based methods developed for traditional homogeneous spatial patterns. The test statistics in distance based tests can all be seen as a weighted sum of distance measures for distances between n cases with known co-ordinates. DAD based test statistics are developed and their performance is compared with the performance of previously suggested tests by simulation in the second paper. The tests are compared in different types of d...
Most multivariate tests are based on the hypothesis of multinormality. But often this hypothesis fai...
The probabilistic distance clustering method of the authors [2, 8], assumes the cluster membership p...
When analyzing ecological data, one considers traditional multivariate techniques to be unsuitable. ...
This thesis consits of four papers dealing with distance based (non-Euclidean) tests for spatial clu...
SADIE (Spatial Analysis by Distance Indices) is a new methodology to detect and measure the degree o...
Abstract. The paper deals with a simulation study of one of the well-known hierarchical cluster anal...
The topic of this paper is the distribution of the distance between two points distributed independe...
Researchers have been using clustering algorithms for many years to group similar observations based...
Abstract Background Geographic perspectives of disease and the human condition often involve point-b...
Geographical data usually exhibit some amount of spatial dependency, a correlation between the value...
Popular clustering algorithms based on usual distance functions (e.g., the Euclidean distance) often...
Distance measure plays an important role in clustering data points. Choosing the right distance meas...
Clustering is an important field for making data meaningful at various applications such as processi...
Clustering is an important descriptive model in data mining. It groups the data objects into meaning...
This thesis consists of two parts. In Chapter 2, we focus on the spatial scan statistics with overdi...
Most multivariate tests are based on the hypothesis of multinormality. But often this hypothesis fai...
The probabilistic distance clustering method of the authors [2, 8], assumes the cluster membership p...
When analyzing ecological data, one considers traditional multivariate techniques to be unsuitable. ...
This thesis consits of four papers dealing with distance based (non-Euclidean) tests for spatial clu...
SADIE (Spatial Analysis by Distance Indices) is a new methodology to detect and measure the degree o...
Abstract. The paper deals with a simulation study of one of the well-known hierarchical cluster anal...
The topic of this paper is the distribution of the distance between two points distributed independe...
Researchers have been using clustering algorithms for many years to group similar observations based...
Abstract Background Geographic perspectives of disease and the human condition often involve point-b...
Geographical data usually exhibit some amount of spatial dependency, a correlation between the value...
Popular clustering algorithms based on usual distance functions (e.g., the Euclidean distance) often...
Distance measure plays an important role in clustering data points. Choosing the right distance meas...
Clustering is an important field for making data meaningful at various applications such as processi...
Clustering is an important descriptive model in data mining. It groups the data objects into meaning...
This thesis consists of two parts. In Chapter 2, we focus on the spatial scan statistics with overdi...
Most multivariate tests are based on the hypothesis of multinormality. But often this hypothesis fai...
The probabilistic distance clustering method of the authors [2, 8], assumes the cluster membership p...
When analyzing ecological data, one considers traditional multivariate techniques to be unsuitable. ...