World's Best Scientists 2026 revealed!

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Computer Science

D-Index
50
Citations
9574
World Ranking
5636
National Ranking
2568

Overview

Alexander I. Rudnicky is a researcher affiliated with Carnegie Mellon University in the United States. Their work is primarily situated in the field of Computer Science, with a significant focus on Artificial Intelligence. Other areas of expertise include Signal Processing, Computer Vision and Pattern Recognition, as well as Social Psychology and Experimental and Cognitive Psychology.

The scientist's research contributions cover various topics, demonstrating a diverse range of interests and expertise. These topics include:

  • Topic Modeling
  • Speech and dialogue systems
  • Natural Language Processing Techniques
  • Speech Recognition and Synthesis
  • Music and Audio Processing
  • Speech and Audio Processing
  • Multimodal Machine Learning Applications

Alexander I. Rudnicky has published extensively, with 66 publications in total. Their frequent venues of publication reflect the interdisciplinary nature of their work and include:

  • arXiv (Cornell University) - 19 publications
  • Computer Speech & Language
  • ICASSP 2022 - 2022 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)
  • Proceedings of the AAAI Conference on Artificial Intelligence
  • IEEE/ACM Transactions on Audio Speech and Language Processing

Some recent publications highlight the range of their research interests:

  • "Spoken language interaction with robots: Recommendations for future research," 2021, published in Computer Speech & Language
  • "Fine-Grained Style Control In Transformer-Based Text-To-Speech Synthesis," 2022, presented at ICASSP 2022 - 2022 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)
  • "A Vector Quantized Approach for Text to Speech Synthesis on Real-World Spontaneous Speech," 2023, in Proceedings of the AAAI Conference on Artificial Intelligence
  • "Automatic Evaluation and Moderation of Open-domain Dialogue Systems," 2021, published on arXiv (Cornell University)
  • "Exploring Wav2vec 2.0 fine-tuning for improved speech emotion recognition," 2021, also on arXiv (Cornell University)

Collaborative work is an important aspect of Alexander I. Rudnicky's research. The scientist has frequently co-authored with several colleagues, including:

  • Ta-Chung Chi, with 10 joint publications
  • Liwei Chen, with 9 joint publications
  • Ting-Han Fan, with 7 joint publications
  • Shinji Watanabe, with 5 joint publications
  • Peter J. Ramadge, with 4 joint publications

Best Publications

  • Pocketsphinx: A Free, Real-Time Continuous Speech Recognition System for Hand-Held Devices

    D. Huggins-Daines;M. Kumar;A. Chan;A.W. Black

  • The Second Conversational Intelligence Challenge (ConvAI2)

    Emily Dinan;Varvara Logacheva;Valentin Malykh;Alexander H. Miller

  • Expanding the scope of the ATIS task: the ATIS-3 corpus

    Deborah A. Dahl;Madeleine Bates;Michael Brown;William Fisher

  • The RavenClaw dialog management framework: Architecture and systems

    Dan Bohus;Alexander I. Rudnicky

  • Using the Amazon Mechanical Turk for transcription of spoken language

    Matthew Marge;Satanjeev Banerjee;Alexander I. Rudnicky

  • Creating natural dialogs in the carnegie mellon communicator system.

    Alexander I. Rudnicky;Eric H. Thayer;Paul C. Constantinides;Chris Tchou

  • Auditory segregation: stream or streams?

    Albert S. Bregman;Alexander I. Rudnicky

  • RavenClaw: Dialog Management Using Hierarchical Task Decomposition and an Expectation Agenda

    Dan Bohus;Alexander I. Rudnicky

  • A large scale clustering scheme for kernel K-Means

    Rong Zhang;A.I. Rudnicky

  • Stochastic language generation for spoken dialogue systems

    Alice H. Oh;Alexander I. Rudnicky

  • Multi-site data collection and evaluation in spoken language understanding

    L. Hirschman;M. Bates;D. Dahl;W. Fisher

  • Sorry, I Didn’t Catch That!

    Dan Bohus;Alexander I. Rudnicky

  • Sound and spelling in spoken word recognition.

    Jola Jakimik;Ronald A Cole;Alexander I Rudnicky

  • A schema based approach to dialog control.

    Paul C. Constantinides;Scott Hansma;Chris Tchou;Alexander I. Rudnicky

  • Olympus: an open-source framework for conversational spoken language interface research

    Dan Bohus;Antoine Raux;Thomas Harris;Maxine Eskenazi

  • AN AGENDA-BASED DIALOG MANAGEMENT ARCHITECTURE FOR SPOKEN LANGUAGE SYSTEMS

    A. Rudnicky

  • Word Level Confidence Annotation using Combinations of Features

    Rong Zhang;Alexander I. Rudnicky

  • Sorry, I Didn’t Catch That! An Investigation of Non-understanding Errors and Recovery Strategies

    Dan Bohus;Alexander I Rudnicky

  • DARPA communicator dialog travel planning systems: the june 2000 data collection.

    Marilyn A. Walker;John S. Aberdeen;Julie E. Boland;Elizabeth Owen Bratt

  • Strategy and Policy Learning for Non-Task-Oriented Conversational Systems

    Zhou Yu;Ziyu Xu;Alan W. Black;Alexander I. Rudnicky

Frequent Co-Authors

Yun-Nung Chen
Yun-Nung Chen National Taiwan University
Alan W. Black
Alan W. Black Carnegie Mellon University
Alexander G. Hauptmann
Alexander G. Hauptmann Carnegie Mellon University
Zhou Yu
Zhou Yu Hangzhou Dianzi University
William Yang Wang
William Yang Wang University of California, Santa Barbara
Roni Rosenfeld
Roni Rosenfeld Carnegie Mellon University
Manuela Veloso
Manuela Veloso Carnegie Mellon University
Alexandros Potamianos
Alexandros Potamianos National Technical University of Athens
Maxine Eskenazi
Maxine Eskenazi Carnegie Mellon University
Nadine Martin
Nadine Martin Temple University

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