Lessons from a failure: Generating tailored smoking cessation letters
作者:
摘要
stop is a Natural Language Generation (nlg) system that generates short tailored smoking cessation letters, based on responses to a four-page smoking questionnaire. A clinical trial with 2553 smokers showed that stop was not effective; that is, recipients of a non-tailored letter were as likely to stop smoking as recipients of a tailored letter. In this paper we describe the stop system and clinical trial. Although it is rare for ai papers to present negative results, we believe that useful lessons can be learned from stop. We also believe that the ai community as a whole could benefit from considering the issue of how, when, and why negative results should be reported; certainly a major difference between ai and more established fields such as medicine is that very few ai papers report negative results.
论文关键词:Natural language processing,Natural language generation,Knowledge acquisition,User modelling,AI and Medicine,Smoking cessation,Evaluation,AI methodology,Clinical trials,Negative results
论文评审过程:Received 15 August 2001, Revised 12 July 2002, Available online 20 January 2003.
论文官网地址:https://doi.org/10.1016/S0004-3702(02)00370-3