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Published byDiana Cobb Modified over 6 years ago
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Question Answering via Question-to-Question Mapping
Tait Larson Johnson Gong Josh Daniel
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Overview QA systems on the web currently are popular
Common QA systems extract facts from the web, match natural language questions to facts Our approach Take pre-answered questions, and match questions to questions Hopefully useful because of the vast amount of pre-answered questions available on the web Google answers Yahoo answers Lawguru.com FAQs Do this via several NLP techniques, primarily focused around query expansion using Wordnet and language model
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Query Expansion POS tagging – preprocess
Search through domain of semantically similar sentences Goal: Generate phrases that will identify semantically equivalent questions in our corpus Semantic expansion Language Model for pruning Prune incorrect word sense Trained on question repository “Can I get into Stanford?” -> “Butt I get into Stanford?” Phrase Extraction
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Information Retrieval
Different from traditional IR Bigrams Index Query No stop words No stemming Why? These choice emphasize semantic structure of question
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Results Us vs Yahoo Metric - Mean Reciprocal Rank
Test questions from “unresolved” Yahoo questions Metric - Mean Reciprocal Rank We only index questions, Yahoo indexes answers also
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Example Results A sharp pain in the center of the chest breastbone area? Keep getting a throbbing pain in the middle of my rib cage . any idea what it could be? Do Bush baked beans give you gas Do baked beans make you fart???? yes/no? Why i sweat and how can i stop this problem How can I stop sweating? I sweat more when it’s cold…
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