论文标题
自动相关的工作一代:元研究
Automatic Related Work Generation: A Meta Study
论文作者
论文摘要
学术研究是一种探索活动,可以解决以前从未解决的问题。从这种性质上讲,每项学术研究工作都必须进行文献综述,以区分先前作品尚未解决的新颖性。在自然语言处理中,该文献综述通常在“相关工作”部分进行。鉴于研究论文的其余部分和引用的论文列表,自动相关工作的任务旨在自动生成“相关工作”部分。尽管这项任务是在10年前提出的,但直到最近它是科学多文章摘要问题的变体时,它才受到关注。但是,即使在今天,自动相关工作和引文文本生成的问题尚未标准化。在这项调查中,我们进行了元研究,以从问题提出,数据集收集,方法论方法,绩效评估以及未来的前景的角度比较有关相关工作一代的现有文献,以使读者了解最先进的研究的进展以及如何进行未来的研究。我们还调查了相关的研究领域,我们建议未来的工作要考虑整合。
Academic research is an exploration activity to solve problems that have never been resolved before. By this nature, each academic research work is required to perform a literature review to distinguish its novelties that have not been addressed by prior works. In natural language processing, this literature review is usually conducted under the "Related Work" section. The task of automatic related work generation aims to automatically generate the "Related Work" section given the rest of the research paper and a list of cited papers. Although this task was proposed over 10 years ago, it received little attention until very recently, when it was cast as a variant of the scientific multi-document summarization problem. However, even today, the problems of automatic related work and citation text generation are not yet standardized. In this survey, we conduct a meta-study to compare the existing literature on related work generation from the perspectives of problem formulation, dataset collection, methodological approach, performance evaluation, and future prospects to provide the reader insight into the progress of the state-of-the-art studies, as well as and how future studies can be conducted. We also survey relevant fields of study that we suggest future work to consider integrating.