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The impact of summarisation on textual entailment - a case study on global warming arguments

机译:摘要对文本蕴含的影响-以全球变暖论证为例

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The challenging task of recognizing textual entailment aims to check whether the meaning of a smaller text - the hypothesis h - can be inferred from another text T. Current methods interleave natural language processing, machine learning, search and lexical resources. All these instruments pose computational challenges that make textual entailment unfeasible for large texts. Hence, we investigate how textual entailment is affected by text summarization. By summarising the text T we expect a decrease of accuracy, but an increase of computation speed. We aim to assess the expected decrease in accuracy caused by summarisation against time benefits due to smaller text given to entailment machinery. Our results show that the time needed for computing entailment is decreased four times, while the accuracy decreases with two percentages.
机译:识别文本蕴含的挑战性任务旨在检查是否可以从另一个文本T推断出较小文本(假设h)的含义。当前的方法交错了自然语言处理,机器学习,搜索和词汇资源。所有这些工具都带来了计算上的挑战,这使得大文本无法包含文本。因此,我们研究了文本摘要如何影响文本蕴含。通过总结文本T,我们期望准确性下降,但计算速度会提高。我们的目的是评估由于摘要导致的时间收益,因为准确性降低了预期的准确性,而预期的准确性会由于时间的延长而减少。我们的结果表明,计算蕴含度所需的时间减少了四倍,而准确性降低了百分之二。

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