Overview of the TREC 2001 Question Answering Track 论文

2000引用 329
Topic ModelingNatural Language Processing TechniquesBiomedical Text Mining and Ontologies

摘要

The TREC question answering track is an effort to bring the benefits of large-scale evaluation to bear on the question answering problem. The track has run twice so far, where the goal both times was to retrieve small snippets of text that contain the actual answer to a question rather than the document lists traditionally returned by text retrieval systems. The best performing system in TREC-9, the Falcon system from Southern Methodist University, was able to answer about 65% of the questions (compared to approximately 42% of the questions for the next best systems) by combining abductire reasoning with various natural language processing techniques. The 65% score is slightly less than the best scores for TREC-8 in absolute terms, but it represents a very significant improvement in question answering systems. The TREC-9 task was considerably harder than the TREC-8 task because the TREC-9 track used actual users' questions rather than questions constructed specifically for the track.