tech,5-1-N03-1004,bq Motivated by the success of <term> ensemble methods </term> in <term> machine learning </term> and other areas of <term> natural language processing </term> , we developed a <term> multi-strategy and multi-source approach to question answering </term> which is based on combining the results from different <term> answering agents </term> searching for <term> answers </term> in multiple <term> corpora </term> .
tech,8-1-N03-1004,bq Motivated by the success of <term> ensemble methods </term> in <term> machine learning </term> and other areas of <term> natural language processing </term> , we developed a <term> multi-strategy and multi-source approach to question answering </term> which is based on combining the results from different <term> answering agents </term> searching for <term> answers </term> in multiple <term> corpora </term> .
tech,14-1-N03-1004,bq Motivated by the success of <term> ensemble methods </term> in <term> machine learning </term> and other areas of <term> natural language processing </term> , we developed a <term> multi-strategy and multi-source approach to question answering </term> which is based on combining the results from different <term> answering agents </term> searching for <term> answers </term> in multiple <term> corpora </term> .
tech,21-1-N03-1004,bq Motivated by the success of <term> ensemble methods </term> in <term> machine learning </term> and other areas of <term> natural language processing </term> , we developed a <term> multi-strategy and multi-source approach to question answering </term> which is based on combining the results from different <term> answering agents </term> searching for <term> answers </term> in multiple <term> corpora </term> .
tech,37-1-N03-1004,bq Motivated by the success of <term> ensemble methods </term> in <term> machine learning </term> and other areas of <term> natural language processing </term> , we developed a <term> multi-strategy and multi-source approach to question answering </term> which is based on combining the results from different <term> answering agents </term> searching for <term> answers </term> in multiple <term> corpora </term> .
other,41-1-N03-1004,bq Motivated by the success of <term> ensemble methods </term> in <term> machine learning </term> and other areas of <term> natural language processing </term> , we developed a <term> multi-strategy and multi-source approach to question answering </term> which is based on combining the results from different <term> answering agents </term> searching for <term> answers </term> in multiple <term> corpora </term> .
lr,44-1-N03-1004,bq Motivated by the success of <term> ensemble methods </term> in <term> machine learning </term> and other areas of <term> natural language processing </term> , we developed a <term> multi-strategy and multi-source approach to question answering </term> which is based on combining the results from different <term> answering agents </term> searching for <term> answers </term> in multiple <term> corpora </term> .
tech,1-2-N03-1004,bq The <term> answering agents </term> adopt fundamentally different strategies , one utilizing primarily <term> knowledge-based mechanisms </term> and the other adopting <term> statistical techniques </term> .
tech,11-2-N03-1004,bq The <term> answering agents </term> adopt fundamentally different strategies , one utilizing primarily <term> knowledge-based mechanisms </term> and the other adopting <term> statistical techniques </term> .
tech,17-2-N03-1004,bq The <term> answering agents </term> adopt fundamentally different strategies , one utilizing primarily <term> knowledge-based mechanisms </term> and the other adopting <term> statistical techniques </term> .
tech,3-3-N03-1004,bq We present our <term> multi-level answer resolution algorithm </term> that combines results from the <term> answering agents </term> at the <term> question , passage , and/or answer levels </term> .
tech,12-3-N03-1004,bq We present our <term> multi-level answer resolution algorithm </term> that combines results from the <term> answering agents </term> at the <term> question , passage , and/or answer levels </term> .
other,16-3-N03-1004,bq We present our <term> multi-level answer resolution algorithm </term> that combines results from the <term> answering agents </term> at the <term> question , passage , and/or answer levels </term> .
tech,6-4-N03-1004,bq Experiments evaluating the effectiveness of our <term> answer resolution algorithm </term> show a 35.0 % relative improvement over our <term> baseline system </term> in the number of <term> questions correctly answered </term> , and a 32.8 % improvement according to the <term> average precision metric </term> .
other,17-4-N03-1004,bq Experiments evaluating the effectiveness of our <term> answer resolution algorithm </term> show a 35.0 % relative improvement over our <term> baseline system </term> in the number of <term> questions correctly answered </term> , and a 32.8 % improvement according to the <term> average precision metric </term> .
measure(ment),23-4-N03-1004,bq Experiments evaluating the effectiveness of our <term> answer resolution algorithm </term> show a 35.0 % relative improvement over our <term> baseline system </term> in the number of <term> questions correctly answered </term> , and a 32.8 % improvement according to the <term> average precision metric </term> .
measure(ment),35-4-N03-1004,bq Experiments evaluating the effectiveness of our <term> answer resolution algorithm </term> show a 35.0 % relative improvement over our <term> baseline system </term> in the number of <term> questions correctly answered </term> , and a 32.8 % improvement according to the <term> average precision metric </term> .
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