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A Framework For Developing Conversational User Interfaces

A Framework For Developing Conversational User Interfaces. James Glass, Eugene Weinstein , Scott Cyphers, Joseph Polifroni MIT Computer Science and Artificial Intelligence Laboratory Cambridge, MA USA. Grace Chung Corporation for National Research Initiatives Reston, VA USA. Mikio Nakano

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A Framework For Developing Conversational User Interfaces

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  1. A Framework For Developing Conversational User Interfaces James Glass, Eugene Weinstein, Scott Cyphers, Joseph Polifroni MIT Computer Science and Artificial Intelligence Laboratory Cambridge, MA USA Grace Chung Corporation for National Research Initiatives Reston, VA USA Mikio Nakano NTT Corporation Atsugi, Japan

  2. Speech Recognition Synthesis Text Text Understanding Generation Meaning Conversational User Interfaces Speech Human Computer Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  3. Initiative Computer Human • Computer maintains tight control • Human is highly restricted • Human takes complete control • Computer is totally passive C: Please say the departure city. H: I want to visit my grandmother. Types of Conversational Interfaces • Conversational systems differ in the degree with which human or computer controls the conversation (initiative) Directed Dialogue Mixed Initiative Dialogue Free Form Dialogue Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  4. Conversational Interfaces • Can understand verbal input • Speech recognition • Language understanding (in context) Language Generation • Can engage in dialogue with a user during the interaction Dialogue Management Speech Synthesis • Canverbalize response • Language generation • Speech synthesis Audio Back End Speech Recognition Context Resolution Language Understanding Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  5. The Problem With Conversational Interfaces • Advanced conversational systems are out there • Both user and computer can take initiative • Goal: conversational skill of system should approach that of human operator • But… • These systems are built by experts • Huge learning curve for novices, and • Tremendous iterative effort required even from experts • For this reason • Most advanced conversational systems remain in research labs • e.g. Jupiter weather info system (+1-888-573-TALK) : Zue et al, IEEE Trans. SAP, 8(1), 2000 • However, we have seen limited commercial deployment • e.g. AT&T’s “How May I Help You”, Gorin et al, Speech Communication, 23, 1997 Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  6. Dialogue Management Generation Recognition Context Resolution Understanding Synthesis Simplifying Conversational System Creation • Goal: make it easier for both expert and novice developers to create conversational interfaces • But still use advanced human language technologies • Strategy: simplify configuration process • Automatically configure technology components bases on examples • Allow specification through web interface or unified configuration file SpeechBuilder Configuration Engine Web Interface Configuration File Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  7. Configuring a Conversational Interface: Knowledge Representation • First, define example sentences for in-domain actions • Then, define the important concepts present in the actions (attributes): • Concept values make up recognizer vocabulary! • Examples of attributes automatically matched to attribute classes Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  8. Starting with a Database Table • Provide database table to configure speech interface: • Only some columns are used to access entries (e.g., Name) • Values of those columns become values for domain concepts • Default action sentences are automatically generated • But, every table cell can potentially be an answer to a question • All Names of columns become one concept – “property” Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  9. Dialogue Management Language Generation • Generic Dialogue Manager (Polifroni & Chung, ICSLP 2002) Hotels Generic Dialogue Manager Air Travel Dialogue Management Speech Synthesis Sports Weather Audio Back End • Plan system responses • Regularize common concepts • Summarize database results Speech Recognition Context Resolution Language Understanding Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  10. Query Interpreted in Context Context Resolution Input Query “Show me restaurants in Cambridge.” Resolve Deixis “What does this one serve?” Resolve Pronouns “What is their phone number?” Inherit Predicates “Are there any on Main Street?” Incorporate Fragments “What about Massachusetts Ave?” Fill in Default Values “Give me directions from MIT.” Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  11. Human Language Technology Details • Approach: Use same technologies as deployed in our mainstream, more complex systems • Speech Recognizer (Glass, Computer, Speech, and Language, 2003) • Trained on 100+ hours of mostly telephone speech • Word pronunciations supplied by large dictionary, generated by rule, or provided by developer • Natural Language Understanding: (Seneff, Computational Linguistics, 1992) • Hierarchical sentence grammar used to parse sentence hypothesis • Back off to concept spotting when no full parse is made • Language Generation: (Baptist&Seneff, ICSLP 2000) • Used in: SQL (DB Query) generation, paraphrasing & URL-encoding meaning representation, responses Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  12. Web-based Interface Defining Actions and Concepts (Attributes) Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  13. Web-based Interface: Viewing Sentences Examining how sentences are reduced to an action and a set of attribute-value pairs Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  14. Domain independent system prompts Domain specific system prompts Web-based Interface: Response Generation Customizing system responses Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  15. Web-based Interface: Editing Pronunciations Modifying system generated pronunciations for the vocabulary Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  16. Web-based Interface: Context Resolution Context Resolution configured through Masking and Inheritance of concepts Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  17. Voice Configuration File: An Alternative to the Web Interface <actions> <request_name> = i would like a restaurant | can you (show|give) me a Chinese restaurant in Arlington; </actions> <attributes> <cuisine> = Chinese|Taiwanese; <city> = Washington | Boston | Arlington; </attributes> <discourse> name masks(city cuisine neighborhood); </discourse> <constraints> <request_name> (city|neighborhood) {prompt_for_city}; </constraints> • Entire domain can be specified in single configuration file • Allows for automated generation of conversational systems Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  18. Deployment • SpeechBuilder functional for the past three years • Some example domains: • Office appliance control • Laboratory directory (auto-attendant) • Restaurant query system • Has been used by MIT researchers (experts) as well as novice developers at our sponsor companies • Used in technology transfer workshop for pervasive computing project (Oxygen) • SpeechBuilder has been used as an educational tool • Computational linguistics class at Georgetown University • Summer class at Johns Hopkins University • Youngest SpeechBuilder developer: 9 years old Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  19. Japanese SpeechBuilder • Created in collaboration with NTT • Challenge: Segmentation (no spaces between words) Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  20. Example Domain • A hotel application using the generic dialogue manager • Compiled via SpeechBuilder using constraints shown previously • Other generic functionality is automatically included • Illustrated technical issues: • Soliciting necessary information from user • Interpreting fragments correctly in context • Canonicalizing relative dates • Ordering and summarizing results of query to content provider • Resolving superlatives/updating discourse context • Interpreting pronouns in context • Returning and speaking specific properties • Repeating previous replies Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  21. Another Example Domain: Object Manipulation System • Stock SpeechBuilder domain for spoken dialogue • Custom back-end connected to stereo camera and person tracking algorithm (Demirdjian, WOMOT 2003) Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  22. Ongoing and Future Work • Incorporate speech synthesis • Allow use of concatenative speech synthesizer (Yi et al, ICSLP 2000) in SpeechBuilder • Allow use of multiple modalities • Provide functionality to incorporate multimodal input into systems • Improve dialogue management tools and modules • Improve ability of SpeechBuilder systems to use more sophisticated dialogue strategies • Provide additional generic semantic concepts for use in domains • Allow system refinement by unsupervised learning • Use confidence scores to improve domain language model (Nakano&Hazen, Eurospeech 2003) • Allow system modification in real-time • Need ability to re-train recognizer during runtime (Schalkwyk et al, Eurospeech 2003) Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  23. Thank You! For more information: • http://www.sls.csail.mit.edu/ • Email us! ecoder@mit.edu • Jupiter weather Information system: • +1-617-258-0300 (outside USA) • 1-888-573-TALK (USA toll-free) • Mercury flight information system: • +1-617-258-6040 (outside USA) • 1-877-MIT-TALK (USA toll-free) • Pegasus flight status system: • +1-617-258-0301 (outside USA) • 1-877-LCS-TALK (USA toll-free) Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  24. THE END Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  25. Utility for rapid prototyping of speech-based interfaces • Used to create demonstrations for NTT CS Labs open house • Prototypes were developed with a few days of effort • Three papers submitted for publishing Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  26. Human Language Technologies • Only some columns are used to access entries (e.g., Name) • Values of those columns become values for domain concepts • Default action sentences are automatically generated • But, every table cell can potentially be an answer to a question • Names of non-access columns become a concept Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  27. To Configure Response Generation… • For each concept present in the domain, define how queries about that concept should be answered <telephone> = “The telephone for :name is :phone” • Define some prompts for generic events, e.g. welcome and goodbye <welcome> = “Welcome to the auto-attendant” <no_data> = “Sorry, there was no data matching your request.” Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  28. Human Language Technologies Recognition Text Understanding “Back-end” Technologies Meaning DB Action Conversational User Interfaces: Input Side Speech “Find me a flight to Boston on Tuesday” action=flights to_city=Boston day=Tuesday Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  29. Human Language Technologies Conversational User Interfaces: Output Side Speech Synthesis Delta flight, number fifty five from La Guardia to Boston… Text Generation flight_num=55 airline=Delta origin=LGA dest=BOS Meaning DB Action Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  30. Recognition Text Understanding Meaning Conversational User Interfaces: The Whole Picture Or Is It? Speech Speech Synthesis Text Generation Meaning Action Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  31. action=flights origin=BOS dest=LGA day=Tuesday Last time, the user asked for a flight from LGA action=flights to_city=Boston day=Tuesday “Which city would you like to fly from?” action=flights to_city=Boston day=Tuesday The Missing Pieces: Context and Dialogue • Context Resolution: + = • Dialogue Management: + = Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  32. Recognition Text Conversational User Interfaces: The Whole Picture Speech Speech Synthesis Text Understanding Generation Meaning Meaning Context Resolution, Dialogue Management Action Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  33. The Problem With Conversational Interfaces… • Complex conversational systems are out there • Both user and computer can take initiative • Goal: conversational skill of system should approach that of human operator • But… • These systems are built by experts • Huge learning curve for novices, and • Tremendous iterative effort required even from experts • For this reason • Most advanced conversational systems remain in research labs • e.g. Jupiter weather info system (+1-888-573-TALK) : Zue et al, IEEE Trans. SAP, 8(1), 2000 • However, we have seen limited commercial deployment • e.g. AT&T’s “How May I Help You”, Gorin et al, Speech Communication, 23, 1997 Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  34. Configuring Response Generation… • For each concept present in the domain, define how queries about that concept should be answered • Configure some generic prompts for summarizing long results • Define some prompts for generic events, e.g. welcome Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  35. Configuring Context Resolution • Context Resolution (discourse) configured through Masking and Inhertiance of concepts • Inheritance configures how actions remember concepts, e.g.: • User: “What is the phone number for Jim Glass” • System: “Jim Glass’ phone number is 3-1640 • User: “What about his email address?” • System: “Jim Glass’ email address is glass@mit.edu” • Name concept is inherited • Masking configures how certain concepts block other concepts, even in the presence of inheritance, e.g. • User: “Do you have any restaurants in Boston?” • System: “In Boston, I have the following…” • User: “What about in Times Square?” • System: “In Times Square, New York, I have…” • City concept is masked by Neighborhood concept Name is inherited City is masked Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  36. Voice Configuration File <actions> <request_name> = i would like a restaurant | can you (show|give) me a Chinese restaurant in Arlington; </actions> <attributes> <cuisine> = Chinese|Taiwanese; <city> = Washington | Boston | Arlington; </attributes> <discourse> name masks(city cuisine neighborhood); </discourse> <constraints> <request_name> (city|neighborhood) {prompt_for_city}; </constraints> • Developers can also use Voice Configuration (VCFG) file format to configure SpechBuilder domains: Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  37. Dialogue Management • Generic Dialogue Manager (Polifroni & Chung, ICSLP 2002) Hotels Generic Dialogue Manager Language Generation Air Travel Speech Synthesis Sports Dialogue Management Weather • Plan system responses • Regularize common concepts • Summarize database results Database Audio Context Resolution Speech Recognition Language Understanding Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  38. Deployment • SpeechBuilder functional for the past three years • Some example domains: • Office appliance control • Laboratory directory (auto-attendant) • Restaurant query system • Has been used by MIT researchers (experts) as well as novice developers at our partner companies • SpeechBuilder has been used by students in • Computational linguistics class at Georgetown University • Summer class at Johns Hopkins University • Technology transfer workshop for pervasive computing project (Oxygen) • In collaboration with NTT, we have developed a Japanese version of SpeechBuilder. Japanese domains: • Bus timetable system • Weather information system Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

  39. Configuring a Speech Interface with SpeechBuilder: Knowledge Representation • First define some concepts present in the domain (attributes): • Concept values make up recognizer vocabulary! • Then, define examples of things to do with the concepts (actions) • Examples of attributes automatically matched to attribute classes Eugene Weinstein — MIT Computer Science and Artificial Intelligence Laboratory

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