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Generating Classical Chinese Poems via Conditional Variational Autoencoder and Adversarial Training

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Figure

Figure 1: The overall framework of our poem gener-ation model. Solid arrows present the generation pro-the adversarial learning for thematic consistency
Figure 2: The CVAE for poem generation. ⊕ denotesthe vector concatenation operation. Only the part withsolid lines and the red dotted arrow is applied in predic-tion, while the entire CVAE is used in training processexcept the red dotted arrow part.
Figure 3: The Discriminator.
Table 1:Corpus statistics of PTD and PSD. Vocab #and Token # refer to vocabulary size and total numberof tokens, respectively, in terms of character.
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