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引用次数: 0
摘要
如今,个人在日常生活中可能会被大量文件淹没。捕捉必要的细节往往是一项挑战。因此,对文件进行摘要以快速获取主要信息就显得相当重要。目前有一些自动方法可以完成这项任务,但其质量往往得不到适当的评估。最先进的衡量标准依赖于人工生成的摘要作为评估参考。如果没有参照物,评估工作将面临挑战。因此,在没有人工生成的参考摘要的情况下,我们研究了另一种方法来评估机器生成的摘要。为此,我们将重点放在原始文本或文档上,以检索可直接评估自动生成摘要的指标。这种方法尤其适用于难以找到参考摘要或成本较高的情况。在本文中,我们提出了一种名为 "无参考摘要得分"(Summary Score without Reference-SUSWIR)的新指标,它基于文本摘要界已知的四个因素:该指标基于文本摘要界已知的四个因素:语义相似性、冗余性、相关性和避免偏差分析,克服了普通指标的缺点。因此,我们的目标是填补当前机器生成文本摘要评估环境中的空白。我们从理论上介绍了这种新的度量方法,并在各自领域的五个数据集上进行了测试。利用 SUSWIR 进行的实验取得了显著的成果。
Who Needs External References?—Text Summarization Evaluation Using Original Documents
Nowadays, individuals can be overwhelmed by a huge number of documents being present in daily life. Capturing the necessary details is often a challenge. Therefore, it is rather important to summarize documents to obtain the main information quickly. There currently exist automatic approaches to this task, but their quality is often not properly assessed. State-of-the-art metrics rely on human-generated summaries as a reference for the evaluation. If no reference is given, the assessment will be challenging. Therefore, in the absence of human-generated reference summaries, we investigated an alternative approach to how machine-generated summaries can be evaluated. For this, we focus on the original text or document to retrieve a metric that allows a direct evaluation of automatically generated summaries. This approach is particularly helpful in cases where it is difficult or costly to find reference summaries. In this paper, we present a novel metric called Summary Score without Reference—SUSWIR—which is based on four factors already known in the text summarization community: Semantic Similarity, Redundancy, Relevance, and Bias Avoidance Analysis, overcoming drawbacks of common metrics. Therefore, we aim to close a gap in the current evaluation environment for machine-generated text summaries. The novel metric is introduced theoretically and tested on five datasets from their respective domains. The conducted experiments yielded noteworthy outcomes, employing the utilization of SUSWIR.