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  <title><![CDATA[Manifold Learning: Discovering Nonlinear Variation Patterns in Complex Data Sets]]></title>
  <body><![CDATA[<p><strong>TITLE:</strong> Manifold Learning: Discovering Nonlinear Variation Patterns in 
Complex Data Sets</p><p><strong>SPEAKER:</strong> Professor Daniel Apley</p><p><strong>ABSTRACT:</strong></p><p>In statistical analysis and data mining of multivariate data sets, many 
problems can be viewed as discovering variation patterns in a set of N 
observations of n variables. The term "variation pattern" refers to the 
structured, interdependent manner in which the n variables may vary over 
the N observations. In a very general mathematical representation we 
view each multivariate observation as a vector in n-dimensional space. 
Then over the set of N observations, we assume the data consist of a 
structured component plus noise, where the structured component lies on 
a p-dimensional manifold with
p &lt;&lt; n. The objective is to learn, or discover, the manifold based only 
on the set of data, with no prior knowledge of what to expect. Discovery 
of the manifold is useful in many different contexts:&nbsp; Denoising noisy 
images and other multivariate data; dimensionality reduction of large 
data sets; extraction of important features for enhancing subsequent 
analyses; exploratory analyses for identifying and understanding 
relationships between variables; etc. In this talk, I will discuss the 
manifold learning problem, applications, and algorithms. Linear 
structured manifolds can be easily discovered with standard principal 
components and factor analyses. Consequently, this talk will focus on 
discovering nonlinear manifolds, which is a much more challenging and 
nuanced problem.</p><p>Bio:&nbsp; Daniel W. Apley is an Associate Professor of Industrial Engineering &amp; 
Management Sciences at Northwestern University. His research interests 
lie at the interface of engineering modeling, statistical analysis, and 
data mining, with particular emphasis on manufacturing variation 
reduction applications in which very large amounts of data are 
available. His research has been supported by numerous industries and 
government agencies. He received the NSF CAREER award in 2001, the IIE 
Transactions Best Paper Award in 2003, and the Wilcoxon Prize for best 
practical application paper appearing in Technometrics in 2008. He 
currently serves as Editor-in-Chief for the Journal of Quality 
Technology and has served as Chair of the Quality, Statistics &amp; 
Reliability Section of INFORMS, Director of the Manufacturing and Design 
Engineering Program at Northwestern, and Associate Editor for 
Technometrics.</p><p>&nbsp;</p>]]></body>
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