Research in Neural and Statistical Computation
at the University of Colorado, Boulder

The University of Colorado at Boulder provides an outstanding interdisciplinary environment for research and graduate training in Neural and Statistical Computation in the fields of Artificial Intelligence, Cognitive Science, and Engineering. Our research spans the following topics:

While these research topics are diverse and involve different subsets of the faculty, faculty interactions lead to many synergies among the topics. A weekly research meeting, the Boulder Computational Learning Group, serves to bring together the interdisciplinary community.

Faculty

Department of Civil, Environmental, and Architectural Engineering

Michael Brandemuehl
Adaptive control for building systems; simulation and testing of energy systems; HVAC systems
Moncef Krarti
Building systems modeling with neural networks and statistical techniques
Jan Kreider
Applications of neural and statistical computation to building energy prediction, nonlinear adaptive control problems, and building system diagnosis

Department of Computer Science

Elizabeth Bradley
Artificial intelligence approaches to understanding and modeling nonlinear dynamics and chaos; nonlinear control
Greg Grudic
Theoretical analysis and practical implementation of machine learning algorithms intended for very high dimensional state spaces; reinforcement learning; nonparametric regression; nonparametric classification algorithms in large state spaces; machine-learning based robotics
Larry Hunter
Development and application of advanced computational techniques for biomedicine, particularly the application of machine learning and statistical inference techniques to high-throughput molecular assays. Also, automated processing of biomedical texts, inference of metabolic and signaling pathways, and neurobiologically and evolutionarily informed computational models of cognition.
James Martin
Statistical approaches to machine translation, spoken language help systems, and the generation of instructional texts; metaphor understanding
Michael Mozer
Computational models of human attention, perception, and cognition; engineering applications of neural networks, including the control of building energy systems and speech recognition; neural network algorithms for temporal pattern processing
Jane Mulligan
Stereo vision; Modeling and prediction from depth sequences; Telepresence; Experimental analysis of robotic tasks; autonomous navigation; robotic manipulation; integration of computational vision and manipulation.
Martha Palmer
Natural language processing and knowledge representation; computational linguistics; machine translation; annotation
Wayne Ward
Spoken language understanding, conversational speech systems, summarization, integrating stochastic and rule-based language models

Department of Electrical and Computer Engineering

Timothy Brown
Applications of neural networks to telecommunications (adaptive control in broadband networks, high-speed switching processors, equalization); neural network learning; recurrent neural network design frameworks
Howard Demuth
Applications of artificial neural networks to problems in control systems, forestry, and chemistry. Authored and maintains the neural network toolbox for MATLAB, and teaches Neural Network Design in the spring.
Kelvin Wagner
Applying organizational principles of neural networks in the brain to artificially constructed adaptive systems made from optical devices. The neurons are implemented using custom integrated circuits that incorporate photodetectors and light modulators, while the adaptive synapses are formed as dynamic holographic interconnection gratings whose strength grows in proportion to the correlated activity of the source and destination neurons. Architectures, devices, and simulations have been developed for self-aligning multilayer holographic optical learning systems for the implementation of optical back propagation and optical competitive learning, which are prototypical supervised and unsupervised learning algorithms.

Department of Linguistics

Lise Menn
Child language acquisition; neurolinguistics; aphasia

Department of Psychology

Marie Banich
cognitive neuroscience of attention, memory, and executive function; human neuropsychology
Eliana Colunga
Language development, concept acquisition, statistical learning; methodologies include developmental studies and computational modeling
Tim Curran
Human learning and memory from a cognitive neuroscience perspective, using behavioral methods derived from cognitive psychology, neuropsychological studies of the effects of brain injury, and neuroimaging methods (PET, fMRI, ERP)
Matt Jones
human learning and knowledge representation, with emphases on categorization, similarity, generalization, relational representations, and sequential decision making
Walter Kintsch
Psychological theories of comprehension, discourse processing, and higher reasoning based on statistical approaches, including parallel relaxation search and latent semantic analysis, a technique that derives estimates of relatedness from very large text corpora.
Thomas Landauer
Statistical simulation of large-body semantic knowledge acquisition from text corpora and mathematical modeling of discourse comprehension processes
Akira Miyake
Cognitive neuropsychology; cognitive modeling of normal and pathological cognition ; visuospatial thinking and imagery; working memory and executive function
Yuko Munakata
Memory, attention, and controlled processing, assessed through computational models and studies of behavioral dissociations in children and adults
Randy O'Reilly
Biologically constrained computational modeling of cognitive phenomena. Currently focusing on interactions between hippocampus, prefrontal cortex, and posterior association cortex in episodic memory phenomena, and on developing a biologically plausible yet computationally powerful model of long-term learning in the neocortex.

Graduate Study

Applications for graduate study and further information about graduate programs can be obtained from the home page of the relevant department. Those with an interest in cognitive science and cognitive neuroscience should visit the Institute of Cognitive Science home page.

Support is generally available for Ph.D. students in the form of teaching and research assistantships.

In addition to providing an exciting research environment, the Boulder area offers an exceptional quality of life. Spectacularly situated at the foot of the Rockies, Boulder provides a wide variety of extraordinary outdoor activities and an average of 330 sunny days per year. Together with Denver, Boulder also affords a broad range of cultural opportunities.

Courses

This is a sample of recent course offerings at the University of Colorado relating to neural and statistical computation. Consult department home pages for more information about course topics.


This page is maintained by Mike Mozer (E-mail: mozer@colorado.edu)