Monday
March 13th
4:00 - 4:50pm
KEC 1001

Xiaoli Fern
Assistant Professor
School of EECS
Oregon State University


Data Mining for Ecosystem Informatics


Ecosystem Informatics is an interdisciplinary field that examines the
prospects for advancing computer science and information technology
research by focusing on the complex and often unique challenges found in
ecosystem domains. In the first part of this talk, I will present an
overview of this emerging field and the critical challenges that data
mining faces in this field.

In the second part, I will present my research on unsupervised pattern
discovery for two environmental science problems. For the first problem,
clustering remote sensing land cover data, I will present an ensemble
based clustering technique, which provides a flexible and reliable
solution to the high dimensionality problem we face. For the second
problem, correlation pattern analysis of vegetation-precipitation data,
I will introduce a novel approach to learning mixtures of local linear
correlation models that is capable of finding nonlinear correlation
patterns, and patterns that are only locally valid in the data.


Biography:

Dr. Xiaoli Fern is an Assistant Professor of Computer Science at Oregon
State University. She received her Ph.D (2005) in Computer Engineering
from Purdue University and her M.S.(2000) and B.S.(1997) degrees from
Shanghai Jiao Tong University. Her research interests are in machine
learning and data mining, specifically in the area of unsupervised
learning, including clustering, correlation analysis, dimension
reduction, outlier detection and frequent pattern mining, etc. She is
particularly interested in working with ecological and environmental
data.


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