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Enabling Domain Experts to Convey Questions to a Machine: A Modified, Template-Based Approach

Enabling Domain Experts to Convey Questions to a Machine: A Modified, Template-Based Approach. Peter Clark (Boeing Phantom Works) Ken Barker, Bruce Porter (Univ Texas at Austin) Vinay Chaudhri, Sunil Mishra, Jerome Thomere (SRI International). How can End-Users Pose Questions?.

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Enabling Domain Experts to Convey Questions to a Machine: A Modified, Template-Based Approach

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  1. Enabling Domain Experts to Convey Questions to a Machine:A Modified, Template-Based Approach Peter Clark (Boeing Phantom Works) Ken Barker, Bruce Porter (Univ Texas at Austin) Vinay Chaudhri, Sunil Mishra, Jerome Thomere (SRI International)

  2. How can End-Users Pose Questions? Start-to-Finish Knowledge Capture: • User needs to express: • domain knowledge • questionsposed to that domain knowledge • Posing questions: • can be straightforward, e.g., single-task systems: • “What disease does this patient have?” • or, can itself be a major “knowledge capture” challenge • This talk: • How to pose questions (not how to answer them!)

  3. Some Example Questions… • When during RNA translation is the movement of a tRNA molecule from the A- to the P-site of a ribosome thought to occur? • What are the functions of RNA? • What happens to the DNA during RNA transcription? • In a cell, what factors affect the rate of protein production? • A mutation in DNA generates a UGA stop codon in the middle of the RNA coding for a particular protein. What nucleotide change has probably occurred ?

  4. Some Previous Approaches • Just allow one question to be asked • “What disease does this patient have?” • But: inappropriate for multifunctional systems • Ask in Natural Language • e.g., for databases • “How many employees work for Joe?” • But: lacks sufficient constraint • Use Question Templates • e.g., HPKB • “What risks/rewards would <country> face/expect in taking hostage citizens of <country>?” • But: domain-specific

  5. A Modified, Template-Based Approach Claims: • Complex questions can be factored into • the question scenario (“Imagine that…”) • query to that scenario (“Thus, what is…”) • The scenario contains most of the complexity • The “raw query” itself is usually simple • The query can be mapped into one of a small number of domain-general templates • grouped around different modeling paradigms

  6. A Modified, Template-Based Approach  basis for a modified, template-based approach: Full Question = Scenario + Query Capture using graphical tools (Shaken) Capture with a finite set of domain-general templates

  7. “A DNA virus invades the cell of a multicellular organism” Full Question = Scenario + Query • Create using a graphical “representation builder” • Select objects from an ontology • Connect them together using small library of relations • Graph converted to ground logic assertions

  8. Full Question = Scenario + Query • Huge variety of possible queries • But can be grouped according to reasoning paradigms the KB supports  Catalog of 29 Domain-General Question Types • based on analysis of 339 cell biology questions • have a fill-in-the-blank template • “blanks” are (often complex) objects from the scenario

  9. Paradigms and Some Templates… • Lookup & Simple Deductive Reasoning q2 “What is/are the function of RNA?” q4 “Is a ribosome a cytoplasmic organelle?” q6 “How many membranes are in the parts relationship to the ribosome?” • Discrete Event Simulation q12 “What happens to the DNA during RNA transcription?” • Qualitative Reasoning q25 “In cell protein synthesis, what factors affect the rate of protein production?” q26 “In RNA transcription, what factors might cause the transcription rate to increase?” • Analogical/Comparitive Reasoning q29 “What is the difference between procaryotic mRNA and eucaryotic mRNA?”

  10. Question Reformulation • Small set of question types  users often must re-cast original question in terms of those types • For example… 7.1.5-270: “Where in a eucaryotic cell does RNA transcription take place?”  “What is/are the site of RNA transcription?” 7.1.4.118: “When is the sigma factor of bacterial RNA polymerase released with respect to RNA transcription?” • “During RNA transcription, when does the RNA polymerase | release | the sigma factor?”

  11. Posing questions

  12. Posing questions (cont)

  13. Receiving Answers

  14. Receiving Answers (cont)

  15. Evaluation and Lessons Learned • Large-scale trials in 2001 • 4 biology students used system for 4 weeks • Their goals: • Encode 11-page subsection on cell biology • Test their representations using a set of 70 questions • Qns expressed in English • High-school level of difficulty • Qns set independently, no knowledge of our templates • 18 of the 29 templates implemented at time of trials

  16. Results • It works… • All 4 users able to pose most (~80%) of the qns • Answer score (average) = 2.23 (2 = “mostly correct”) • Exposes what the system is able to do • …but three major challenges…

  17.  Heavy use of a few generic templates: Challenges • Users had difficulty reformulating their questions to match a template, e.g. • (Original) “Where in a eucaryotic cell does RNA transcription take place?” •  (Desired) “What is/are the site of RNA transcription?” •  (User) “What is RNA transcription?”

  18. Challenges • Reformulation is not just a rewording task • Rather, requires user to view problem in terms of one of the KB’s modeling paradigms • Easier for us than for the users

  19. Challenges • Users need to be fluent with the graph tool and KB ontology for specifying scenarios • Not an problem in this case

  20. Challenges • Sometimes, the template approach breaks down • Some questions requireidentifying the scenarios: • “What kinds of final products result from mRNA?” • Similarly, identifying the right viewpoint/level of detail: • e.g., DNA as a line vs. sequence vs. two strands • Some topics not covered by templates • Uncertainty, causal event structure • Diagnosis, abduction • Some questions go beyond concepts in the KB • “What are the building blocks of proteins?” • Can’t specify “impossible objects” • “Is <object> possible?”

  21. Summary • Conveying questions can itself be a major “knowledge capture” challenge • A modified, template-based approach: • Factor full questions into scenarios + templates • Templates are domain-general, and based on modeling paradigms available • Balances flexibility vs. interpretability • Results: • A catalog of templates • Approach works! but with significant caveats.

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