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Employing Argumentation Knowledge Graphs for Neural Argument Generation

机译:采用神经论证生成的论证知识图表

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Generating high-quality arguments, while being challenging, may benefit a wide range of downstream applications, such as writing assistants and argument search engines. Motivated by the effectiveness of utilizing knowledge graphs for supporting general text generation tasks, this paper investigates the usage of argumentation-related knowledge graphs to control the generation of arguments. In particular, we construct and populate three knowledge graphs, employing several compositions of them to encode various knowledge into texts of debate portals and relevant paragraphs from Wikipedia. Then, the texts with the encoded knowledge are used to fine-tune a pre-trained text generation model, GPT-2. We evaluate the newly created arguments manually and automatically, based on several dimensions important in argumentative contexts, including ar-gumentativeness and plausibility. The results demonstrate the positive impact of encoding the graphs' knowledge into debate portal texts for generating arguments with superior quality than those generated without knowledge.
机译:生成高质量的论点,同时具有挑战性,可能有利于广泛的下游应用程序,例如写作助理和论证搜索引擎。通过利用知识图表来支持一般文本生成任务的有效性,研究了与论证相关知识图表的使用来控制参数的产生。特别是,我们构建和填充三个知识图表,采用其中的若干组成,将各种知识编码为辩论门户网站和维基百科的相关段落。然后,使用编码知识的文本用于微调预先训练的文本生成模型GPT-2。我们根据论证背景中的几个维度,在包括AR-绝对和合理性的几个方面,评估新创建的参数。结果表明,将图形知识编码为辩论门户文本的积极影响,以产生具有优异质量的参数而不是在没有知识的情况下产生的争论。

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