Title :
A Novel Visualization Approach for Data-Mining-Related Classification
Author :
Seifert, Christin ; Lex, Elisabeth
Author_Institution :
Know-Center Graza, Graza, Austria
Abstract :
Classification and categorization are common tasks in data mining and knowledge discovery. Visualizations of classification models can create understanding and trust in data mining models. However, existing visualizations are often complex or restricted to specific classifiers and attributes. In this work, we propose an intuitive visualization system to observe and understand classification processes and results. Our system can handle multiple classes, nominal and numeric attributes, and supports all classifiers whose predictions can be interpreted as probabilities. We state that the possibility to observe the training process of a classifier boosts the understanding of classification results also for non-expert users. In combination with an intuitive visualization, we provide a system to generate in-depth understanding of classification processes and results. Our simulations revealed that the system could support the user to better understand a classifier´s decision, and to gain insights into classification processes.
Keywords :
data mining; data visualisation; pattern classification; probability; data mining; intuitive visualization system; knowledge discovery; pattern categorization; pattern classification; probability; Classification tree analysis; Data mining; Data visualization; Decision trees; Displays; Probability distribution; Self organizing feature maps; Support vector machine classification; Support vector machines; Testing; classification; data mining; visualization;
Conference_Titel :
Information Visualisation, 2009 13th International Conference
Conference_Location :
Barcelona
Print_ISBN :
978-0-7695-3733-7