This position paper proposes a conceptual framework for the design of Natural Language Generation (NLG) systems that follow efficient and effective production strategies in order to achieve complex communicative goals. In this general framework, efficiency is characterised as the parsimonious regulation of production and comprehension costs while effectiveness is measured with respect to task-oriented and contextually grounded communicative goals. We provide concrete suggestions for the estimation of goals, costs, and utility via modern statistical methods, demonstrating applications of our framework to the classic pragmatic task of visually grounded referential games and to abstractive text summarisation, two popular generation tasks with real-world applications. In sum, we advocate for the development of NLG systems that learn to make pragmatic production decisions from experience, by reasoning about goals, costs, and utility in a human-like way.
翻译:本立场文件提出了设计自然语言生成系统的概念框架,该系统遵循高效率和高效益的生产战略,以实现复杂的交流目标。在这个总体框架内,效率被定性为对生产和理解成本的低俗监管,而效率则是根据面向任务和基于背景的交流目标来衡量的。我们为通过现代统计方法估计目标、成本和实用性提供了具体建议,展示了我们框架在视觉辅助游戏和抽象文本汇总这一典型务实任务中的应用情况,这是两种与现实世界应用相关的大众生成任务。 总之,我们倡导发展国家语言生成系统,通过以人性方式对目标、成本和实用性进行推理,从经验中学习作出务实的生产决策。