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Learning Personas from Dialogue with Attentive Memory Networks
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In: Association for Computational Linguistics (2021)
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DeepStance at SemEval-2016 Task 6: Detecting Stance in Tweets Using Character and Word-Level CNNs
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In: Vosoughi (2016)
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Enhanced Twitter Sentiment Classification Using Contextual Information
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In: Vosoughi (2015)
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Digital Stylometry: Linking Profiles Across Social Networks
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In: Vosoughi (2015)
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Grounding language models in spatiotemporal context
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In: Vosoughi (2014)
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An automatic child-directed speech detector for the study of child language development
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In: Soroush Vosoughi (2012)
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Extracting aspects of determiner meaning from dialogue in a virtual world environment
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In: MIT web domain (2011)
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Toward understanding natural language directions
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In: MIT web domain (2010)
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Contributions of Prosodic and Distributional Features of Caregivers' Speech in Early Word Learning
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In: Soroush Vosoughi (2010)
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Abstract:
How do characteristics of caregiver speech contribute to a child's early word learning? We explore the relationship between a single child's vocabulary growth and the distributional and prosodic characteristics of the speech he hears using data collected for the Human Speechome Project, an ecologically valid corpus collected from the home of a family with a young child. We measured F0, intensity, phoneme duration, usage frequency, recurrence, and MLU for caregivers' production of each word that the child learned during the period of recording. When all variables are considered, we obtain a model of word acquisition as a function of caregiver input speech. Coefficient estimates in the model help to illuminate which factors are relevant to learning classes of words. In addition, words that deviate from the model's prediction are of interest as they may suggest important social, contextual and other cues relevant to word learning.
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URL: http://hdl.handle.net/1721.1/71118
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Effects of Caregiver Prosody on Child Language Acquisition
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In: Soroush Vosoughi (2010)
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Automatic Estimation of Transcription Accuracy and Difficulty
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In: Soroush Vosoughi (2010)
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New horizons in the study of child language acquisition
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In: MIT web domain (2009)
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Fast transcription of unstructured audio recordings
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In: MIT web domain (2009)
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Grounding spatial prepositions for video search
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In: MIT web domain (2009)
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Exploring word learning in a high-density longitudinal corpus
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In: MIT web domain (2009)
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Semantic context effects on color categorization
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In: MIT web domain (2009)
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Object schemas for grounding language in a responsive robot
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In: Soroush Vosoughi (2008)
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