Visual-interactive cluster analysis provides valuable tools for effectively analyzing large and complex data sets. Due to desirable properties and an inherent predisposition for visualization, the Kohonen Feature Map (or Self-Organizing Map, or SOM) algorithm is among the most popular and widely used visual clustering techniques. However, the unsupervised nature of the algorithm may be disadvantageous in certain applications. Depending on initialization and data characteristics, cluster maps (cluster layouts) may emerge that do not comply with user preferences, expectations, or the application context. Considering SOM-based analysis of trajectory data, we propose a comprehensive visual-interactive monitoring and control framework extending ...
Fig. 1. Hierarchical clustering results on a synthetic point dataset (the black dots) are shown as a...
Cluster analysis is an important data mining technique for analyzing large amounts of data, reducing...
Trajectory analysis is important for discovering patterns from a time series data. It involves track...
Visual-interactive cluster analysis provides valuable tools for effectively analyzing large and comp...
Visual-interactive cluster analysis provides valuable tools for effectively analyzing large and comp...
The Self-Organizing Map (SOM) algorithm is a popular and widely used cluster algorithm. Its constrai...
The Self-Organizing Map (SOM) algorithm is a popular and widely used cluster algorithm. Its constrai...
One of the most common operations in exploration and analysis of various kinds of data is clustering...
Cluster analysis is the name given to a diverse collection of techniques that can be used to classif...
Analyzing large trajectory sets enables deeper insights into multiple real-world problems. For exam...
Clustering is a core building block for data analysis, aiming to extract otherwise hidden structures...
Clustering is a core building block for data analysis, aiming to extract otherwise hidden structures...
Cluster analysis is an important data mining technique for analyzing large amounts of data, reducing...
Analyzing trajectory data plays an important role in practical applications, and clustering is one o...
We will show that the number of output units used in a self-organizing map (SOM) influences its appl...
Fig. 1. Hierarchical clustering results on a synthetic point dataset (the black dots) are shown as a...
Cluster analysis is an important data mining technique for analyzing large amounts of data, reducing...
Trajectory analysis is important for discovering patterns from a time series data. It involves track...
Visual-interactive cluster analysis provides valuable tools for effectively analyzing large and comp...
Visual-interactive cluster analysis provides valuable tools for effectively analyzing large and comp...
The Self-Organizing Map (SOM) algorithm is a popular and widely used cluster algorithm. Its constrai...
The Self-Organizing Map (SOM) algorithm is a popular and widely used cluster algorithm. Its constrai...
One of the most common operations in exploration and analysis of various kinds of data is clustering...
Cluster analysis is the name given to a diverse collection of techniques that can be used to classif...
Analyzing large trajectory sets enables deeper insights into multiple real-world problems. For exam...
Clustering is a core building block for data analysis, aiming to extract otherwise hidden structures...
Clustering is a core building block for data analysis, aiming to extract otherwise hidden structures...
Cluster analysis is an important data mining technique for analyzing large amounts of data, reducing...
Analyzing trajectory data plays an important role in practical applications, and clustering is one o...
We will show that the number of output units used in a self-organizing map (SOM) influences its appl...
Fig. 1. Hierarchical clustering results on a synthetic point dataset (the black dots) are shown as a...
Cluster analysis is an important data mining technique for analyzing large amounts of data, reducing...
Trajectory analysis is important for discovering patterns from a time series data. It involves track...