Open AccessProceedings Article
Visual Data Mining and Machine Learning.
Fabrice Rossi
- 01 Jan 2006
pp 251-264
TL;DR: An overview of information visualization is given and the links between this field and machine learning are surveyed, to provide insight and understanding of unorganized data.
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Abstract: Information visualization and visual data mining leverage the human visual system to provide insight and understanding of unorganized data. In order to scale to massive sets of high dimensional data, simplification methods are needed, so as to select important dimensions and objects. Some machine learning algorithms try to solve those problems. We give in this paper an overview of information visualization and survey the links between this field and machine learning.
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Laplacian Eigenmaps for dimensionality reduction and data representation
Mikhail Belkin,Partha Niyogi +1 more
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