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LDA-Based Scoring of Sequences Generated by RNN for Automatic Tanka Composition

机译:基于RDA的RNN生成的自动短歌合成的序列评分

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This paper proposes a method of scoring sequences generated by recurrent neural network (RNN) for automatic Tanka composition. Our method gives sequences a score based on topic assignments provided by latent Dirichlet allocation (LDA). When many word tokens in a sequence are assigned to the same topic, we give the sequence a high score. While a scoring of sequences can also be achieved by using RNN output probabilities, the sequences having large probabilities are likely to share much the same subsequences and thus are doomed to be deprived of diversity. The experimental results, where we scored Japanese Tanka poems generated by RNN, show that the top-ranked sequences selected by our method were likely to contain a wider variety of subsequences than those selected by RNN output probabilities.
机译:本文提出了一种基于评分的,由循环神经网络(RNN)生成的自动Tanka合成序列的方法。我们的方法根据潜在狄利克雷分配(LDA)提供的主题分配给序列评分。当序列中的许多单词标记被分配给同一主题时,我们给序列一个高分。尽管也可以通过使用RNN输出概率来对序列进行评分,但是具有大概率的序列可能会共享几乎相同的子序列,因此注定会被剥夺多样性。实验结果对RNN产生的日本短歌诗进行了评分,结果表明,通过我们的方法选择的排名最高的序列可能包含比通过RNN输出概率选择的序列更广泛的子序列。

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