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Learning Conversational Systems that Interleave Task and Non-Task Content

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arxiv 1703.00099 v1 pith:SAWY3N4T submitted 2017-03-01 cs.CL cs.AIcs.HC

Learning Conversational Systems that Interleave Task and Non-Task Content

classification cs.CL cs.AIcs.HC
keywords contenttasksystemnon-tasksystemsusersconversationdialog
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Task-oriented dialog systems have been applied in various tasks, such as automated personal assistants, customer service providers and tutors. These systems work well when users have clear and explicit intentions that are well-aligned to the systems' capabilities. However, they fail if users intentions are not explicit. To address this shortcoming, we propose a framework to interleave non-task content (i.e. everyday social conversation) into task conversations. When the task content fails, the system can still keep the user engaged with the non-task content. We trained a policy using reinforcement learning algorithms to promote long-turn conversation coherence and consistency, so that the system can have smooth transitions between task and non-task content. To test the effectiveness of the proposed framework, we developed a movie promotion dialog system. Experiments with human users indicate that a system that interleaves social and task content achieves a better task success rate and is also rated as more engaging compared to a pure task-oriented system.

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