Sign up & Download
Sign in

Visual data mining.

by Edward J Wegman
Statistics in Medicine (2003)

Abstract

Data mining strategies are usually applied to opportunistically collected data and frequently focus on the discovery of structure such as clusters, bumps, trends, periodicities, associations and correlations, quantization and granularity, and other structures for which a visual data analysis is very appropriate and quite likely to yield insight. However, data mining strategies are often applied to massive data sets where visualization may not be very successful because of the limits of both screen resolution, human visual system resolution as well as the limits of available computational resources. In this paper I suggest some strategies for overcoming such limitations and illustrate visual data mining with some examples of successful attacks on high-dimensional and large data sets.

Cite this document (BETA)

Sign up today - FREE

Mendeley saves you time finding and organizing research. Learn more

  • All your research in one place
  • Add and import papers easily
  • Access it anywhere, anytime

Start using Mendeley in seconds!

Already have an account? Sign in

Readership Statistics

7 Readers on Mendeley
by Discipline
 
by Academic Status
 
57% Ph.D. Student
 
14% Student (Bachelor)
 
14% Student (Master)
by Country
 
29% United States
 
14% Germany
 
14% Norway