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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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Can Prosody Aid the Automatic Classification of Dialog Acts in Conversational Speech

TL;DR: This article used prosodic features (duration, pause, F0, energy, and speaking rate) extracted from the Switchboard corpus and trained decision trees based on these features to classify natural conversations.
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Can Prosody Aid the Automatic Classification of Dialog Acts in Conversational Speech

TL;DR: It is suggested that DAs are redundantly marked in natural conversation, and that a variety of automatically extractable prosodic features could aid dialog processing in speech applications.
Posted Content

A Simple, Fast Diverse Decoding Algorithm for Neural Generation.

TL;DR: A simple, fast decoding algorithm that fosters diversity in neural generation by adding an inter-sibling ranking penalty and is capable of automatically adjusting its diversity decoding rates for different inputs using reinforcement learning (RL).
Posted Content

Inducing Domain-Specific Sentiment Lexicons from Unlabeled Corpora

TL;DR: The authors combine domain-specific word embeddings with a label propagation framework to induce accurate domain specific sentiment lexicons using small sets of seed words, achieving state-of-theart performance competitive with approaches that rely on hand-curated resources.
Proceedings ArticleDOI

Inducing Domain-Specific Sentiment Lexicons from Unlabeled Corpora.

TL;DR: The approach achieves state-of-the-art performance on inducing sentiment lexicons from domain-specific corpora and that the purely corpus-based approach outperforms methods that rely on hand-curated resources (e.g., WordNet).