The broad aim of this research program is to develop a deeper understanding of the representations, mechanisms, and computations that underlie people's ability to comprehend and produce language. Specifically, this research will focus on expectancy generation in sentence comprehension, with particular attention given to structural ambiguity resolution and thematic role assignment. We focus on expectancy generation because there is empirical evidence that it plays a key role in language processing, and because studying a comprehender's expectations as s/he hears or reads a sentence provides a valuable diagnostic for addressing three central questions in sentence processing: what information is available to the comprehender; when do different sources of information become available; and how do classes of information interact. Theoretically, our perspective reflects an emphasis on early information use, nonlinear interactions among knowledge sources, and the importance of both event-based semantic knowledge and statistical patterns of language usage, all of which are characteristics of constraint-based approaches and connectionist models. Our research methodology involves a combination of computer simulations, corpus analyses, and human experiments, including extensive norming procedures and on-line methodologies. Five specific areas will be studied: (1) the role of verb meaning in the generation of expectations regarding upcoming subcategorization frames; (2) the effect of verb-specific semantic distributions of arguments on subcategorization preferences; (3) developing a precise definition of plausibility by comparing six operational definitions in terms of their efficacy for predicting subjects' behavior; (4) the role of event structure and grammatical cues in generating expectations about thematic role assignment; and (5) the consequences of viewing expectations in terms of dynamics in semantic space, rather than as lists of possible lexical items.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project (R01)
Project #
5R01MH060517-02
Application #
6539010
Study Section
Special Emphasis Panel (ZRG1-BBBP-3 (01))
Program Officer
Kurtzman, Howard S
Project Start
2001-09-01
Project End
2006-06-30
Budget Start
2002-07-01
Budget End
2003-06-30
Support Year
2
Fiscal Year
2002
Total Cost
$190,800
Indirect Cost
Name
University of California San Diego
Department
Other Health Professions
Type
Schools of Arts and Sciences
DUNS #
077758407
City
La Jolla
State
CA
Country
United States
Zip Code
92093
Borovsky, Arielle; Kutas, Marta; Elman, Jeffrey L (2013) Getting it right: word learning across the hemispheres. Neuropsychologia 51:825-37
Borovsky, Arielle; Elman, Jeffrey L; Kutas, Marta (2012) Once is Enough: N400 Indexes Semantic Integration of Novel Word Meanings from a Single Exposure in Context. Lang Learn Dev 8:278-302
Bicknell, Klinton; Elman, Jeffrey L; Hare, Mary et al. (2010) Effects of event knowledge in processing verbal arguments. J Mem Lang 63:489-505
Borovsky, Arielle; Kutas, Marta; Elman, Jeff (2010) Learning to use words: event-related potentials index single-shot contextual word learning. Cognition 116:289-96
Elman, Jeffrey L (2009) On the meaning of words and dinosaur bones: Lexical knowledge without a lexicon. Cogn Sci 33:547-582
Lewis, John D; Elman, Jeffrey L (2008) Growth-related neural reorganization and the autism phenotype: a test of the hypothesis that altered brain growth leads to altered connectivity. Dev Sci 11:135-55
Tanenhaus, Michael K; Hare, Mary (2007) Phonological typicality and sentence processing. Trends Cogn Sci 11:93-5
McNorgan, Chris; Kotack, Rachel A; Meehan, Deborah C et al. (2007) Feature-feature causal relations and statistical co-occurrences in object concepts. Mem Cognit 35:418-31
Cree, George S; McNorgan, Chris; McRae, Ken (2006) Distinctive features hold a privileged status in the computation of word meaning: Implications for theories of semantic memory. J Exp Psychol Learn Mem Cogn 32:643-58
Roland, Douglas; Elman, Jeffrey L; Ferreira, Victor S (2006) Why is that? Structural prediction and ambiguity resolution in a very large corpus of English sentences. Cognition 98:245-72

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