The practice of applying a classifier (called a pattern classifier and abbreviated as PC below) in a visual analysis system to identify patterns from interactively generated visualizations is gradually emerging. Demonstrated cases in existing works focus on ideal scenarios where the analyst can determine all the pattern types in advance without adjusting the classifier settings during the exploration process. However, in most real-world scenarios, analysts know nothing about data patterns before exploring the dataset and inevitably find novel patterns during the exploration. This difference makes the traditional classifier training and application mode less suitable. Analysts have to artificially determine whether each generated visualizati...
Data visualisation is centered on new ways of processing and displaying large data sets to support p...
In this thesis new variants for the coupling of visualization techniques and data-mining methods are...
Visual exploration of multivariate data typically requires projection onto lower dimensional represe...
Abstract. We live in the era of data and need tools to discover valuable information in large amount...
Recent advances in visual analytics have enabled us to learn from user interactions and uncover anal...
This chapter surveys visualization techniques for frequent itemsets, association rules, and sequenti...
Classification is a common task in data mining and knowledge discovery. Usually classifiers have to ...
Classifying large datasets without any a-priori information poses a problem in numerous tasks. Espec...
Supervised machine learning techniques require labelled multivariate training datasets. Many approac...
bonn.de We present a general method for employing interactive embedding techniques to enable an anal...
Abstract. Active Learning Method (ALM) is a powerful fuzzy soft computing tool, developed originally...
Methods from supervised machine learning allow the classification of new data automatically and are ...
The derivation, manipulation and verification of analytical models from raw data is a process which ...
Exploration and analysis of large data sets cannot be carried out using purely visual means but requ...
Data visualization provides a means to present known information in a format that is easily consumab...
Data visualisation is centered on new ways of processing and displaying large data sets to support p...
In this thesis new variants for the coupling of visualization techniques and data-mining methods are...
Visual exploration of multivariate data typically requires projection onto lower dimensional represe...
Abstract. We live in the era of data and need tools to discover valuable information in large amount...
Recent advances in visual analytics have enabled us to learn from user interactions and uncover anal...
This chapter surveys visualization techniques for frequent itemsets, association rules, and sequenti...
Classification is a common task in data mining and knowledge discovery. Usually classifiers have to ...
Classifying large datasets without any a-priori information poses a problem in numerous tasks. Espec...
Supervised machine learning techniques require labelled multivariate training datasets. Many approac...
bonn.de We present a general method for employing interactive embedding techniques to enable an anal...
Abstract. Active Learning Method (ALM) is a powerful fuzzy soft computing tool, developed originally...
Methods from supervised machine learning allow the classification of new data automatically and are ...
The derivation, manipulation and verification of analytical models from raw data is a process which ...
Exploration and analysis of large data sets cannot be carried out using purely visual means but requ...
Data visualization provides a means to present known information in a format that is easily consumab...
Data visualisation is centered on new ways of processing and displaying large data sets to support p...
In this thesis new variants for the coupling of visualization techniques and data-mining methods are...
Visual exploration of multivariate data typically requires projection onto lower dimensional represe...