IEEE Event: Intelligent Personal Assistants And Signal Processing Challenges11/12/2014 - 11/12/2014

Intelligent personal assistants and signal processing challenges



   Dr. Asli Celikyilmaz
   Senior Scientist, Natural Language Understanding, Microsoft
  AMD Commons Theater, 991 Stewart Dr., Sunnyvale, CA (map or Google Maps)
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   6:30pm: Networking/Light Dinner (sponsored by Crystal Instruments)
   7:00pm: Announcements
   7:05pm: Presentation
   8:15pm: Adjourn
Following the rapid proliferation of mobile devices, especially smart phones, multimodal virtual personal assistant (VPA) applications such as Apple Siri, Microsoft Cortana and google Now started to emerge. With the advances in speech recognition, language understanding, and machine learning coupled with client-side capabilities coming with larger screens that enable multi-touch displays and server-side capabilities based on cloud computing, these applications have begun to move beyond conventional simple command/control based speech applications. One of the core technologies in a VPA system is understanding what the users are saying, called as spoken language understanding (SLU). In the last decade, a variety of practical goal-oriented spoken dialog systems have been built for limited domains, employing "targeted" SLU capabilities. Given an utterance, SLU in dialog systems extracts predefined semantic information from the output of an automatic speech recognizer (ASR). This semantic information usually contains the intent of the user and associated arguments (slots), matching the back-end capabilities. The dialog manager (DM) then determines the next machine action given the SLU output. In this talk I highlight some of the technical challenges and research efforts for multimodal virtual personal assistant applications, especially focusing on spoken language understanding and dialog aspects, pointing out issues and opportunities in this area.
Asli Celikyilmaz is a Senior NLP Scientist at the Language & Intent group at Microsoft Silicon Valley. Asli's research interests are natural language processing, spoken language understanding, and machine learning (specifically structured prediction, unsupervised learning of parameters and features). Prior to Microsoft, Asli was a postdoc researcher at the Computer Science Department of University of California, Berkeley between 2008-2010 working on machine learning methods on automatic text summarization and question answering. Asli has co-authored 50+ papers on AI, Natural language processing including Question answering, summarization and spoken language understanding.