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Combining Coherence Models and Machine Translation Evaluation Metrics for Summarization Evaluation

机译:结合一致性模型和机器翻译评估指标进行汇总评估

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摘要

An ideal summarization system should produce summaries that have high content coverage and linguistic quality. Many state-of-the-art summarization systems focus on content coverage by extracting content-dense sentences from source articles. A current research focus is to process these sentences so that they read fluently as a whole. The current AESOP task encourages research on evaluating summaries on content, readability, and overall responsiveness. In this work, we adapt a machine translation metric to measure content coverage, apply an enhanced discourse coherence model to evaluate summary readability, and combine both in a trained regression model to evaluate overall responsiveness. The results show significantly improved performance over AESOP 2011 submitted metrics.
机译:理想的摘要系统应产生内容覆盖率高且语言质量高的摘要。许多最新的摘要系统通过从源文章中提取内容密集的句子来关注内容覆盖。当前的研究重点是处理这些句子,以使它们整体上流畅阅读。当前的AESOP任务鼓励开展有关评估内容,可读性和整体响应能力的摘要的研究。在这项工作中,我们采用了机器翻译指标来衡量内容覆盖率,应用增强的话语连贯性模型来评估摘要的可读性,并在训练有素的回归模型中将两者结合起来以评估整体响应能力。结果表明,与AESOP 2011提交的指标相比,性能有了显着提高。

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