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Overview

Lori Levin is a researcher affiliated with Carnegie Mellon University in the United States, contributing primarily to the field of Computer Science. Their work spans several subfields, with a strong focus on Artificial Intelligence, Language and Linguistics, Computer Vision and Pattern Recognition, General Health Professions, and Human-Computer Interaction.

The main topics covered by Lori Levin include:

  • Natural Language Processing Techniques
  • Topic Modeling
  • Text Readability and Simplification
  • Interpreting and Communication in Healthcare
  • Spanish Linguistics and Language Studies
  • Multimodal Machine Learning Applications
  • Syntax, Semantics, Linguistic Variation

Their research has been published predominantly in venues such as arXiv (Cornell University) and Fordham University Press eBooks.

Notable recent papers authored or co-authored by Lori Levin include:

  • "Neural Polysynthetic Language Modelling" (2020), published in arXiv (Cornell University)
  • "Construction Grammar Provides Unique Insight into Neural Language Models" (2023), published in arXiv (Cornell University)
  • "Language Technologies for Humanitarian Aid" (2022), published by Fordham University Press eBooks
  • "UCxn: Typologically Informed Annotation of Constructions Atop Universal Dependencies" (2024), published in arXiv (Cornell University)
  • "Constructions Are So Difficult That Even Large Language Models Get Them Right for the Wrong Reasons" (2024), published in arXiv (Cornell University)

Lori Levin has frequently collaborated with several co-authors, including Taiqi He, Leonie Weissweiler, David R. Mortensen, Hinrich Schütze, and Lindia Tjuatja.

Best Publications

  • URIEL and lang2vec: Representing languages as typological, geographical, and phylogenetic vectors

    Patrick Littell;David R. Mortensen;Ke Lin;Katherine Kairis

  • Janus-III: speech-to-speech translation in multiple languages

    A. Lavie;A. Waibel;L. Levin;M. Finke

  • Committed Belief Annotation and Tagging

    Mona Diab;Lori Levin;Teruko Mitamura;Owen Rambow

  • An interlingua based on domain actions for machine translation of task-oriented dialogues

    Lori S. Levin;Donna Gates;Alon Lavie;Alex Waibel

  • PanPhon: A Resource for Mapping IPA Segments to Articulatory Feature Vectors

    David R. Mortensen;Patrick Littell;Akash Bharadwaj;Kartik Goyal

  • The NESPOLE! speech-to-speech translation system

    F. Metze;J. McDonough;H. Soltau;A. Waibel

  • Discourse Processing of Dialogues with Multiple Threads

    Carolyn Penstein Rose;Barbara Di Eugenio;Lori S. Levin;Carol Van Ess-Dykema

  • The Janus-III Translation System: Speech-to-Speech Translation in Multiple Domains

    Lori Levin;Alon Lavie;Monika Woszczyna;Donna Gates

  • Speechalator: two-way speech-to-speech translation on a consumer PDA

    Alex Waibel;Ahmed Badran;Alan W. Black;Robert E. Frederking

  • Speechalator: two-way speech-to-speech translation in your hand

    Alex Waibel;Ahmed Badran;Alan W. Black;Robert Frederking

  • Experiments with a Hindi-to-English transfer-based MT system under a miserly data scenario

    Alon Lavie;Stephan Vogel;Lori Levin;Erik Peterson

  • A Modality Lexicon and its use in Automatic Tagging

    Kathrin Baker;Michael Bloodgood;Bonnie J. Dorr;Nathaniel Wesley Filardo

  • The BECauSE Corpus 2.0: Annotating Causality and Overlapping Relations

    Jesse Dunietz;Lori S. Levin;Jaime G. Carbonell

  • Unsupervised POS Induction with Word Embeddings

    Chu-Cheng Lin;Waleed Ammar;Chris Dyer;Lori S. Levin

  • Modality and negation in simt use of modality and negation in semantically-informed syntactic mt

    Kathryn Baker;Michael Bloodgood;Bonnie J. Dorr;Chris Callison-Burch

  • MT for Minority Languages UsingElicitation-Based Learning of SyntacticTransfer Rules

    Katharina Probst;Lori Levin;Erik Peterson;Alon Lavie

  • Domain Specific Speech Acts for Spoken Language Translation

    Lori S. Levin;Chad Langley;Alon Lavie;Donna Gates

  • Polyglot Neural Language Models: A Case Study in Cross-Lingual Phonetic Representation Learning

    Yulia Tsvetkov;Sunayana Sitaram;Manaal Faruqui;Guillaume Lample

  • Syntax-Driven and Ontology-Driven Lexical Semantics

    Sergei Nirenburg;Lori S. Levin

  • ALICE-chan: A Case Study in ICALL Theory and Practice

    Lori S. Levin;David A. Evans

Frequent Co-Authors

Alon Lavie
Alon Lavie Carnegie Mellon University
Jaime G. Carbonell
Jaime G. Carbonell Carnegie Mellon University
Alex Waibel
Alex Waibel Carnegie Mellon University
Chris Dyer
Chris Dyer Google (United States)
Bonnie J. Dorr
Bonnie J. Dorr University of Florida
Teruko Mitamura
Teruko Mitamura Carnegie Mellon University
Eduard Hovy
Eduard Hovy Carnegie Mellon University
Alan W. Black
Alan W. Black Carnegie Mellon University
Tanja Schultz
Tanja Schultz University of Bremen
Owen Rambow
Owen Rambow Stony Brook University

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