We motivate and propose a suite of simple but effective improvements for concept-to-text generation called SAPPHIRE: Set Augmentation and Post-hoc PHrase Infilling and REcombination. We demonstrate their effectiveness on generative commonsense reasoning, a.k.a. the CommonGen task, through experiments using both BART and T5 models. Through extensive automatic and human evaluation, we show that SAPPHIRE noticeably improves model performance. An in-depth qualitative analysis illustrates that SAPPHIRE effectively addresses many issues of the baseline model generations, including lack of commonsense, insufficient specificity, and poor fluency.
翻译:我们激励和提出一套简单而有效的改进概念到文字的生成办法,称为SAPPHIRE:设置增强和后热PHrase填充和再组合。我们通过使用BART和T5模型的实验,在基因常识推理(a.k.a.CommonGen)任务上展示其有效性。我们通过广泛的自动和人力评价,表明SAPPHIRE明显改善了模型性能。深入的定性分析表明SAPPHIRE有效地解决了基线模型世代的许多问题,包括缺乏常识、特性不足和流利性差。