•  147
    Competitive Processes in Cross‐Situational Word Learning
    with Daniel Yurovsky and Linda B. Smith
    Cognitive Science 37 (5): 891-921. 2013.
    Cross-situational word learning, like any statistical learning problem, involves tracking the regularities in the environment. However, the information that learners pick up from these regularities is dependent on their learning mechanism. This article investigates the role of one type of mechanism in statistical word learning: competition. Competitive mechanisms would allow learners to find the signal in noisy input and would help to explain the speed with which learners succeed in statistical …Read more
  •  12
    Cross-situational statistical learning: Implicit or intentional
    with George Kachergis and Richard M. Shiffrin
    In S. Ohlsson & R. Catrambone (eds.), Proceedings of the 32nd Annual Conference of the Cognitive Science Society, Cognitive Science Society. pp. 1189--1194. 2010.
  •  86
    Characterizing Human Expertise Using Computational Metrics of Feature Diagnosticity in a Pattern Matching Task
    with Thomas Busey, Dimitar Nikolov, Brandi Emerick, and John Vanderkolk
    Cognitive Science 41 (7): 1716-1759. 2017.
    Forensic evidence often involves an evaluation of whether two impressions were made by the same source, such as whether a fingerprint from a crime scene has detail in agreement with an impression taken from a suspect. Human experts currently outperform computer-based comparison systems, but the strength of the evidence exemplified by the observed detail in agreement must be evaluated against the possibility that some other individual may have created the crime scene impression. Therefore, the st…Read more
  •  131
    The Role of Embodied Intention in Early Lexical Acquisition
    with Dana H. Ballard and Richard N. Aslin
    Cognitive Science 29 (6): 961-1005. 2005.
    We examine the influence of inferring interlocutors' referential intentions from their body movements at the early stage of lexical acquisition. By testing human participants and comparing their performances in different learning conditions, we find that those embodied intentions facilitate both word discovery and word‐meaning association. In light of empirical findings, the main part of this article presents a computational model that can identify the sound patterns of individual words from con…Read more
  •  166
    Language evolution: Body of evidence?
    with Dana H. Ballard
    Behavioral and Brain Sciences 28 (2): 148-149. 2005.
    Our computational studies of infant language learning estimate the inherent difficulty of Arbib's proposal. We show that body language provides a strikingly helpful scaffold for learning language that may be necessary but not sufficient, given the absence of sophisticated language in other species. The extraordinary language abilities of Homo sapiens must have evolved from other pressures, such as sexual selection.
  •  14
    Simultaneous cross-situational learning of category and object names
    with Tarun Gangwani and George Kachergis
    In S. Ohlsson & R. Catrambone (eds.), Proceedings of the 32nd Annual Conference of the Cognitive Science Society, Cognitive Science Society. pp. 1595--1600. 2010.
  •  13
    Mutual exclusivity in crosssituational statistical learning
    with Daniel Yurovsky
    In B. C. Love, K. McRae & V. M. Sloutsky (eds.), Proceedings of the 30th Annual Conference of the Cognitive Science Society., Cognitive Science Society. pp. 715--720. 2008.