Many machine learning algorithms depend on the choice of an appropriate similarity or distance measure. Comparing such measures in different domains and on diversely structured data is common, but often performed in regards of an algorithm to cluster or classify the data. In this study, data assessed by experts is analyzed instead. The data is taken from the database of the Federal Institute for Drugs and Medical Devices (BfArM) and represents free text incident reports. The Average Silhouette Width, a cluster density measure, is used to compare the distance measures’ ability to discriminate the data according to the experts’ assessments. The Euclidean distance and four distance measures derived from the Jaccard similarity, the Simple Match...
The selection of the distance measure to separate the objects of the knowledge space is critical in ...
In this thesis I have worked with medical image registration, in particular registration of multimod...
Various distance-based clustering algorithms have been reported, but the core component of all of th...
Distance metrics are broadly used in different research areas and applications, such as bio-informat...
Real-world data typically contain a large number of features that are often heterogeneous in nature,...
Distance metrics are broadly used in different research areas and applications, such as bio-informat...
Similarity or distance measures are core components used by distance-based clustering algorithms to ...
For using Data Mining, especially cluster analysis, one needs measures to determine the similarity o...
Distance measures play an important role in cluster analysis. There is no single distance measure th...
It is reported in this paper, the results of a study of the partitioning around medoids (PAM) cluste...
K-medoids clustering uses distance measurement to find and classify data that have similarities and ...
Background: Patient distances can be calculated based on signs and symptoms derived from an ontologi...
Clustering is an unsupervised learning technique which aims at grouping a set of objects into cluste...
In this paper, we proposed a good classifier to match different spatial data sets by applying evalua...
The goal of interactive search-assisted diagnosis (ISAD) is to enable doctors to make better decisio...
The selection of the distance measure to separate the objects of the knowledge space is critical in ...
In this thesis I have worked with medical image registration, in particular registration of multimod...
Various distance-based clustering algorithms have been reported, but the core component of all of th...
Distance metrics are broadly used in different research areas and applications, such as bio-informat...
Real-world data typically contain a large number of features that are often heterogeneous in nature,...
Distance metrics are broadly used in different research areas and applications, such as bio-informat...
Similarity or distance measures are core components used by distance-based clustering algorithms to ...
For using Data Mining, especially cluster analysis, one needs measures to determine the similarity o...
Distance measures play an important role in cluster analysis. There is no single distance measure th...
It is reported in this paper, the results of a study of the partitioning around medoids (PAM) cluste...
K-medoids clustering uses distance measurement to find and classify data that have similarities and ...
Background: Patient distances can be calculated based on signs and symptoms derived from an ontologi...
Clustering is an unsupervised learning technique which aims at grouping a set of objects into cluste...
In this paper, we proposed a good classifier to match different spatial data sets by applying evalua...
The goal of interactive search-assisted diagnosis (ISAD) is to enable doctors to make better decisio...
The selection of the distance measure to separate the objects of the knowledge space is critical in ...
In this thesis I have worked with medical image registration, in particular registration of multimod...
Various distance-based clustering algorithms have been reported, but the core component of all of th...