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Generating Chinese Classical Poems with Statistical Machine Translation Models

机译:用统计机器翻译模型生成中国古典诗歌

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This paper describes a statistical approach to generation of Chinese classical poetry and proposes a novel method to automatically evaluate poems. The system accepts a set of keywords representing the writing intents from a writer and generates sentences one by one to form a completed poem. A statistical machine translation (SMT) system is applied to generate new sentences, given the sentences generated previously. For each line of sentence a specific model specially trained for that line is used, as opposed to using a single model for all sentences. To enhance the coherence of sentences on every line, a coherence model using mutual information is applied to select candidates with better consistency with previous sentences. In addition, we demonstrate the effectiveness of the BLEU metric for evaluation with a novel method of generating diverse references.
机译:本文介绍了一种统计方法来生成中国古典诗歌,并提出了一种自动评估诗歌的新方法。该系统从作家那里接受一组代表写作意图的关键字,并逐句生成句子以形成一首完整的诗。给定先前生成的句子,将统计机器翻译(SMT)系统应用于生成新句子。对于每一行句子,使用针对该行专门训练的特定模型,而不是对所有句子使用单个模型。为了增强句子在每一行的连贯性,使用互信息的连贯性模型可用于选择与先前句子具有更好一致性的候选词。此外,我们通过一种生成各种参考的新颖方法,证明了BLEU指标用于评估的有效性。

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