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Dan Jurafsky

Researcher at Stanford University

Publications -  348
Citations -  50756

Dan Jurafsky is an academic researcher from Stanford University. The author has contributed to research in topics: Language model & Parsing. The author has an hindex of 93, co-authored 344 publications receiving 44536 citations. Previous affiliations of Dan Jurafsky include Carnegie Mellon University & University of Colorado Boulder.

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Predictability Effects on Durations of Content and Function Words in Conversational English

TL;DR: The authors found that content words are shorter when more frequent, and shorter when repeated, while function words are not so affected, after controlling for frequency and predictability, while both content and function words were strongly affected by predictability from the word following them.
Proceedings ArticleDOI

Semantic Taxonomy Induction from Heterogenous Evidence

TL;DR: This work proposes a novel algorithm for inducing semantic taxonomies that flexibly incorporates evidence from multiple classifiers over heterogenous relationships to optimize the entire structure of the taxonomy, using knowledge of a word's coordinate terms to help in determining its hypernyms, and vice versa.
Posted Content

A Hierarchical Neural Autoencoder for Paragraphs and Documents

TL;DR: This paper proposed a hierarchical LSTM auto-encoder to preserve and reconstruct multi-sentence paragraphs, and evaluated the reconstructed paragraph using standard metrics like ROUGE and Entity Grid, showing that neural models can encode texts in a way that preserve syntactic, semantic, and discourse coherence.
Posted Content

Understanding Neural Networks through Representation Erasure

TL;DR: This paper proposes a general methodology to analyze and interpret decisions from a neural model by observing the effects on the model of erasing various parts of the representation, such as input word-vector dimensions, intermediate hidden units, or input words.
Proceedings Article

Stanford’s Multi-Pass Sieve Coreference Resolution System at the CoNLL-2011 Shared Task

TL;DR: The coreference resolution system submitted by Stanford at the CoNLL-2011 shared task was ranked first in both tracks, with a score of 57.8 in the closed track and 58.3 in the open track.