Scientists and science journalists, among others, often need to make sense of a large number of papers and how they compare with each other in scope, focus, findings, or any other important factors. However, with a large corpus of papers, it's cognitively demanding to pairwise compare and contrast them all with each other. Fully automating this review process would be infeasible, because it often requires domain-specific knowledge, as well as understanding what the context and motivations for the review are. While there are existing tools to help with the process of organizing and annotating papers for literature reviews, at the core they still rely on people to serially read through papers and manually make sense of relevant information. We present AVTALER, which combines peoples' unique skills, contextual awareness, and knowledge, together with the strength of automation. Given a set of comparable text excerpts from a paper corpus, it supports users in sensemaking and contrasting paper attributes by interactively aligning text excerpts in a table so that comparable details are presented in a shared column. AVTALER is based on a core alignment algorithm that makes use of modern NLP tools. Furthermore, AVTALER is a mixed-initiative system: users can interactively give the system constraints which are integrated into the alignment construction process.
翻译:除其他外,科学家和科学记者往往需要了解大量论文,以及它们如何在范围、重点、结论或任何其他重要因素方面相互比较;然而,如果有大量的论文,则在认知上需要相互比较和对比。使这一审查进程完全自动化是行不通的,因为这往往需要特定领域的知识,以及了解审查的背景和动机。虽然现有工具有助于为文献审查组织和说明文件的过程,但在核心方面,它们仍然依靠人们通过文件连续阅读,手动地理解相关信息。我们介绍了AVTALER,它结合了人们的独特技能、背景意识和知识,以及自动化的力量。鉴于从一个纸质资料库中得出的一套可比较的文本节选,它支持用户通过交互式地对表格中的文本节选进行感和对比,从而在共同的专栏中提供可比的细节。AVTALER基于核心的校准算法,它使现代NLP系统用户的集成一个一体化的系统。</s>