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Semantically Conditioned Dialog Response Generation via Hierarchical Disentangled Self-Attention

机译:通过分层解除戒开自我关注的语义条件的对话响应

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Semantically controlled neural response generation on limited-domain has achieved great performance. However, moving towards multi-domain large-scale scenarios are shown to be difficult because the possible combinations of semantic inputs grow exponentially with the number of domains. To alleviate such scalability issue, we exploit the structure of dialog acts to build a multi-layer hierarchical graph, where each act is represented as a root-to-leaf route on the graph. Then, we incorporate such graph structure prior as an inductive bias to build a hierarchical disentangled self-attention network, where we disentangle attention heads to model designated nodes on the dialog act graph. By activating different (disentangled) heads at each layer, com-binatorially many dialog act semantics can be modeled to control the neural response generation. On the large-scale Multi-Domain-WOZ dataset, our model can yield a significant improvement over the baselines on various automatic and human evaluation metrics.
机译:有限域的语义控制的神经反应产生了很大的性能。然而,朝多域大规模方案迁移难以困难,因为语义输入的可能组合随着域的数量呈指数级增长。为了缓解这种可扩展性问题,我们利用对话框的结构来构建多层层次结构,其中每个动作都表示为图中的根到叶路由。然后,我们将这些图形结构纳入归纳偏差,以构建分层解除不印章的自我关注网络,在那里我们解开了注意力头以在对话框动作图上模拟指定节点。通过在每层的各层激活不同(Disentangled)的头,可以建模COM-DINatoriby的对话框语义来控制神经响应生成。在大规模的多域WOZ数据集上,我们的模型可以在各种自动和人类评估指标上产生显着改善。

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