Title :
Visual Clustering for Large Scale Commercial Enterprises
Author :
Charkhabi, Masoud ; Dhot, Tarundeep
Author_Institution :
Adv. Analytics, Canadian Imperial Bank of Commerce, Toronto, ON, Canada
Abstract :
Clustering is a well established data exploration and analysis method. It allows interactive discovery and interpretation of groups of entities that have similar properties and characteristics. However, deriving meaningful insights from clusters often presents challenges in large sets of structurally complex data. Large scale commercial enterprises hold an increasing volume of complex, highly-dimensional data. In order to effectively analyze this data and create meaningful clusters from it, pre-processing the data prior to clustering is essential. Once clusters are created, interpretation and representation of clusters is equally essential to capture insights that can aid corporate decision making. In this paper, we present a generic approach to data preparation and cluster interpretation implemented on a large scale enterprise database.
Keywords :
business data processing; data analysis; data mining; data visualisation; pattern clustering; cluster interpretation; cluster representation; cluster visualization; corporate decision making; data analysis method; data exploration method; data mining approach; data preparation; interactive group discovery; interactive group interpretation; kNN imputation; large scale commercial enterprises; large scale enterprise database; visual clustering; Cluster Visualization; Independent Component Analysis; Multi-Dimensional Scaling; kNN Imput;
Conference_Titel :
Information Visualisation (IV), 2013 17th International Conference
Conference_Location :
London