Recent advances in summarization provide models that can generate summaries of higher quality. Such models now exist for a number of summarization tasks, including query-based summarization, dialogue summarization, and multi-document summarization. While such models and tasks are rapidly growing in the research field, it has also become challenging for non-experts to keep track of them. To make summarization methods more accessible to a wider audience, we develop SummerTime by rethinking the summarization task from the perspective of an NLP non-expert. SummerTime is a complete toolkit for text summarization, including various models, datasets and evaluation metrics, for a full spectrum of summarization-related tasks. SummerTime integrates with libraries designed for NLP researchers, and enables users with easy-to-use APIs. With SummerTime, users can locate pipeline solutions and search for the best model with their own data, and visualize the differences, all with a few lines of code. We also provide explanations for models and evaluation metrics to help users understand the model behaviors and select models that best suit their needs. Our library, along with a notebook demo, is available at https://github.com/Yale-LILY/SummerTime.
翻译:近期的总结进展提供了能够产生更高质量摘要的模型。这些模型现已存在,用于一系列总结任务,包括基于查询的总结、对话的总结和多文件的总结。这些模型和任务在研究领域正在迅速增长,但对于非专家来说,也变得具有挑战性,使其难以跟踪。为了使更广大的受众更容易获得总结方法,我们开发SummerTime,从非专家的角度重新思考总结任务。SummerTime是一个完整的文本总结工具包,包括各种模型、数据集和评价指标,用于与总结有关的任务的全方位。夏季与为NLP研究人员设计的图书馆融合,使用户能够使用易于使用的API。随着SummerTime的出现,用户可以找到管道解决方案,用他们自己的数据搜索最佳模型,并用几行代码来想象差异。我们还为模型和评估指标提供了解释,以帮助用户理解模型行为和选择最符合其需要的模型。我们的图书馆与LEM/LIM。我们的图书馆,以及一个可使用LI/MLA的笔记本。