Acquiring a New Musical System
by
Psyche Loui
B.S. (Duke University) 2003
A dissertation submitted in partial satisfaction of the
requirements for the degree of
Doctor of Philosophy
in
Psychology
in the
Graduate Division
of the
University of California, Berkeley
Committee in charge:
Professor David L. Wessel, Chair
Professor Ervin R. Hafter
Professor Carla L. Hudson Kam
Professor Edmund Campion
Spring 2007
Abstract
A
fundamental mystery in music cognition concerns whether and how the human brain
can develop expectations and preferences for events in the auditory
environment. My thesis uses behavioral and electrophysiological methods to
investigate the learning of a novel system of musical sounds. We design a new
musical system based on the Bohlen-Pierce scale, a microtonal scale tuned
differently from the traditional Western musical scale. Chord progressions and
melodies were composed in this scale as legal exemplars of two finite-state
grammars. In a series of behavioral studies, participants were presented with
melodies in one of the two grammars, followed by several tests assessing
grammar-learning, sensitivity to frequency of occurrence, and preference for
melodies. Results demonstrate that given exposure to a small number of
melodies, listeners recognized and preferred melodies they had heard, but when
exposed to a sufficiently large set of melodies, listeners were able to learn
the underlying statistical regularities of their given grammar. These effects
were influenced by pshychoacoustic and statistical properties of the exposure,
and were replicable with transposed melodies and for scales with different
harmonies. Electrophysiological recordings (Event-Related Potentials) in
response to chords in the new musical system revealed two components of
cortical activity which are sensitive to the probability of occurrence and the
amount of exposure of sounds in the musical context. We conclude that the human
brain can rapidly acquire various structural and statistical aspects of sounds,
and that neural mechanisms subserving statistical learning may be vital to
music as well as other cognitive and perceptual functions more generally.
Dedication
To
Mom and Dad
Acknowledgements
This
dissertation would not have been possible without the guidance and support of
various individuals from within and beyond UC Berkeley. I would like to thank David Wessel, my advisor and dissertation chair, for his unfailing support, expertise, and
advice along the way. I would like to thank my advisor Erv Hafter for his
kindness and support, and for his lessons in science and life. I express
sincere gratitude to Bob Knight for his expertise in neuroscience as well as
his kind advice and trust. To Carla Hudson Kam and the Language and Learning
Lab (especially Amy Finn, Whitney Goodrich, and Tim Beyer) I am most indebted
for advice, stimulating conversations, and moral support. For helpful
discussions and technical support I thank Edmund Campion and the Center for New
Music and Audio Technologies (especially Michael Zbyzynski, John MacCallum, Aaron Einbond, Brian Vogel, and Peter Kassakian), the Auditory Perception lab
(Anne-Marie “Nannick” Bonnel, Tassos Sarampalis, Bernhard Seeber,
and Andy Schmeder) and the Knight lab (Mark Kishiyama, Christina Karns, Cathrine Dam). I am extremely grateful to Tom Wickens for his generosity with help on
statistical methods and especially with my use of his lab space. I owe a big
thank you to all my research assistants over the past few years for their great
productivity, intelligence, and good cheer: Elaine Wu, Pearl Chen, Tiffany Day, Judy Wang, Joann Chang, Young Lee, Jorge Duque, Johannes Sommer, Shaochen Wu, and
Charles Li. I also thank Chris Lucas for help on implementing finite-state
grammars, the Robertson lab (Ani Flevaris, Ayelet Landau, Joe Brooks) for
helpful discussions on ERP methods, and Bill Prinzmetal for his kindness and
support. I thank Carol Krumhansl at Cornell University for helpful advice on
the design of the artificial musical system, and Marty Woldorff at Duke University for advising my undergraduate thesis, which was a vital precursor to the
present dissertation. I thank the UC Berkeley Psychology Department, the
Academic Senate, and NINDS for financial support. Finally, I would like to
thank Wai-Po and Rebecca Loui.