Subspace analysis methods have gained interest for identifying patterns in subspaces of high-dimensional data. Existing techniques allow to visualize and compare patterns in subspaces. However, many subspace analysis methods produce an abundant amount of patterns, which often remain redundant and are difficult to relate. Creating effective layouts for comparison of subspace patterns remains challenging. We introduce Pattern Trails, a novel approach for visually ordering and comparing subspace patterns. Central to our approach is the notion of pattern transitions as an interpretable structure imposed to order and compare patterns between subspaces. The basic idea is to visualize projections of subspaces side-by-side, and indicate changes bet...
The problem of observation space reordering is presented as a novel approach to pattern recognition ...
Exploration and analysis of large data sets cannot be carried out using purely visual means but requ...
A sequential pattern in data mining is a finite series of elements such as A B C D where A, B, C,...
Subspace analysis methods have gained interest for identifying patterns in subspaces of high-dimensi...
We introduce a novel interactive framework for visualizing and exploring high-dimensional datasets b...
This chapter surveys visualization techniques for frequent itemsets, association rules, and sequenti...
Describing and capturing significant differences between two classes of data is an important data mi...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
The practice of applying a classifier (called a pattern classifier and abbreviated as PC below) in a...
This thesis is divided into a theoretical part, aimed at developing statements around the newly intr...
Abstract: The problem of observation space reordering is presented as a novel approach to pattern re...
Dimensionality Reduction, in particular, projection-based methods transform the data to a lower-dime...
We present an interactive visualization method for the multivariate analysis of large and complex da...
Data about movement through a space is increasingly becoming available for capture and analysis. In ...
Abstract. Subspace clustering (also called projected clustering) addresses the problem that differen...
The problem of observation space reordering is presented as a novel approach to pattern recognition ...
Exploration and analysis of large data sets cannot be carried out using purely visual means but requ...
A sequential pattern in data mining is a finite series of elements such as A B C D where A, B, C,...
Subspace analysis methods have gained interest for identifying patterns in subspaces of high-dimensi...
We introduce a novel interactive framework for visualizing and exploring high-dimensional datasets b...
This chapter surveys visualization techniques for frequent itemsets, association rules, and sequenti...
Describing and capturing significant differences between two classes of data is an important data mi...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
The practice of applying a classifier (called a pattern classifier and abbreviated as PC below) in a...
This thesis is divided into a theoretical part, aimed at developing statements around the newly intr...
Abstract: The problem of observation space reordering is presented as a novel approach to pattern re...
Dimensionality Reduction, in particular, projection-based methods transform the data to a lower-dime...
We present an interactive visualization method for the multivariate analysis of large and complex da...
Data about movement through a space is increasingly becoming available for capture and analysis. In ...
Abstract. Subspace clustering (also called projected clustering) addresses the problem that differen...
The problem of observation space reordering is presented as a novel approach to pattern recognition ...
Exploration and analysis of large data sets cannot be carried out using purely visual means but requ...
A sequential pattern in data mining is a finite series of elements such as A B C D where A, B, C,...