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Predictable and Adaptive Goal-oriented Dialog Policy Generation

机译:可预测和适应性的目标导向的对话策略生成

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Most existing commercial goal-oriented chatbots are diagram-based; i.e., they follow a rigid dialog flow to fill the slot values needed to achieve a user's goal. Diagram-based chatbots are predictable, thus their adoption in commercial settings; however, their lack of flexibility may cause many users to leave the conversation before achieving their goal. On the other hand, state-of-the-art research chatbots use Reinforcement Learning (RL) to generate flexible dialog policies. However, such chatbots can be unpredictable, may violate the intended business constraints, and require large training datasets to produce a mature policy. We propose a framework that achieves a middle ground between the diagram-based and RL-based chatbots: we constrain the space of possible chatbot responses using a novel structure, the chatbot dependency graph, and use RL to dynamically select the best valid responses. Dependency graphs are directed graphs that conveniently express a chatbot's logic by defining the dependencies among slots: all valid dialog flows are encapsulated in one dependency graph. Our experiments in several domains show that our framework quickly adapts to user characteristics and achieves up to 23.77% improved success rate compared to a state-of-the-art RL model.
机译:大多数现有的商业目标导向的聊天聊天是基于图表;即,它们遵循刚性对话框流以填充实现用户目标所需的插槽值。基于图的聊天禁止可预测,因此它们在商业环境中采用;然而,他们缺乏灵活性可能导致许多用户在实现目标之前离开谈话。另一方面,最先进的研究Chatbots使用强化学习(RL)来生成灵活的对话策略。但是,此类聊天禁止可能是不可预测的,可能违反预期的业务约束,并需要大型训练数据集以产生成熟的策略。我们提出了一个框架,实现了基于图表和基于RL的Chatbots之间的中间地面:我们使用新颖结构,聊天依赖性图来限制可能的聊天响应的空间,并使用RL动态选择最佳有效响应。依赖关系图是通过定义插槽之间的依赖性来方便地表达Chatbot的逻辑的指示图:所有有效的对话框流都在一个依赖图中封装。我们在若干域中的实验表明,与最先进的RL模型相比,我们的框架迅速适应用户特征,并实现了成功率提高了23.77%。

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