| ACM TSLP - Special Issue: call for Papers:“Machine Learning for Robust and Adaptive Spoken Dialogue Systems'
 * Submission Deadline 1 July 2010 *http://tslp.acm.org/specialissues.html
 During the last decade, research in the field of Spoken DialogueSystems (SDS) has experienced increasing growth, and new applications
 include interactive search, tutoring and “troubleshooting” systems,
 games, and health agents. The design and optimization of such SDS
 requires the development of dialogue strategies which can robustly
 handle uncertainty, and which can automatically adapt to different
 types of users (novice/expert, youth/senior) and noise conditions
 (room/street). New statistical learning techniques are also emerging
 for training and optimizing speech recognition, parsing / language
 understanding, generation, and synthesis for robust and adaptive
 spoken dialogue systems.
 Automatic learning of adaptive, optimal dialogue strategies iscurrently a leading domain of research. Among machine learning
 techniques for spoken dialogue strategy optimization, reinforcement
 learning using Markov Decision Processes (MDPs) and Partially
 Observable MDPs (POMDPs) has become a particular focus.
 One concern for such approaches is the development of appropriate
 dialogue corpora for training and testing. However, the small amount
 of data generally available for learning and testing dialogue
 strategies does not contain enough information to explore the whole
 space of dialogue states (and of strategies). Therefore dialogue
 simulation is most often required to expand existing datasets and
 man-machine spoken dialogue stochastic modelling and simulation has
 become a research field in its own right. User simulations for
 different types of user are a particular new focus of interest.
 Specific topics of interest include, but are not limited to:  • Robust and adaptive dialogue strategies• User simulation techniques for robust and adaptive strategy
 learning and testing
 • Rapid adaptation methods
 • Modelling uncertainty about user goals
 • Modelling user’s goal evolution along time
 • Partially Observable MDPs in dialogue strategy optimization
 • Methods for cross-domain optimization of dialogue strategies
 • Statistical spoken language understanding in dialogue systems
 • Machine learning and context-sensitive speech recognition
 • Learning for adaptive Natural Language Generation in dialogue
 • Machine learning for adaptive speech synthesis (emphasis, prosody, etc.)
 • Corpora and annotation for machine learning approaches to SDS
 • Approaches to generalising limited corpus data to build user models
 and user simulations
 • Evaluation of adaptivity and robustness in statistical approaches
 to SDS and user simulation.
 Submission Procedure:Authors should follow the ACM TSLP manuscript preparation guidelines
 described on the journal web site http://tslp.acm.org and submit an
 electronic copy of their complete manuscript through the journal
 manuscript submission site http://mc.manuscriptcentral.com/acm/tslp.
 Authors are required to specify that their submission is intended for
 this Special Issue by including on the first page of the manuscript
 and in the field “Author’s Cover Letter” the note “Submitted for the
 Special Issue of Speech and Language Processing on Machine Learning
 for Robust and Adaptive Spoken Dialogue Systems”. Without this
 indication, your submission cannot be considered for this Special
 Issue.
 Schedule:• Submission deadline : 1 July 2010
 • Notification of acceptance: 1 October 2010
 • Final manuscript due: 15th November 2010
 Guest Editors:Oliver Lemon, Heriot-Watt University, Interaction Lab, School of
 Mathematics and Computer Science, Edinburgh, UK.
 Olivier Pietquin, Ecole Supérieure d’Électricité (Supelec), Metz, France.
 http://tslp.acm.org/cfp/acmtslp-cfp2010-02.pdf   |