Many existing conversation models that are based on the encoder-decoder framework have focused on ways to make the encoder more complicated to enrich the context vectors so as to increase the diversity and informativeness of generated responses. However, these approaches face two problems. First, the decoder is too simple to effectively utilize the previously generated information and tends to generate duplicated and self-contradicting responses. Second, the complex encoder tends to generate diverse but incoherent responses because the complex context vectors may deviate from the original semantics of context. In this work, we proposed a conversation model named "THINK" (Teamwork generation Hover around Impressive Noticeable Keywords) to make the decoder more complicated and avoid generating duplicated and self-contradicting responses. The model simplifies the context vectors and increases the coherence of generated responses in a reasonable way. For this model, we propose Teamwork generation framework and Semantics Extractor. Compared with other baselines, both automatic and human evaluation showed the advantages of our model.
翻译:以编码器- 编码器框架为基础的许多现有对话模式侧重于如何使编码器更加复杂,以丰富上下文矢量,从而增加生成的响应的多样性和丰富性。然而,这些方法面临两个问题。首先,编码器过于简单,无法有效利用先前生成的信息,而且往往产生重复和自相矛盾的响应。第二,复杂的编码器往往产生多种多样但不一致的响应,因为复杂的上下文矢量可能偏离了原始的背景语义。在这项工作中,我们提出了一个称为“THINK”(Teamwork Derver Hover 环绕可见可见关键词)的对话模型,以使解码器更为复杂,避免产生重复和自相矛盾的响应。该模型简化了上下文矢量,并以合理的方式提高了生成的响应的一致性。关于这一模型,我们建议团队生成框架和语义提取器。与其他基线相比,我们自动和人类评估都展示了模型的优点。