Out of Scope (OOS) detection in Conversational AI solutions enables a chatbot to handle a conversation gracefully when it is unable to make sense of the end-user query. Accurately tagging a query as out-of-domain is particularly hard in scenarios when the chatbot is not equipped to handle a topic which has semantic overlap with an existing topic it is trained on. We propose a simple yet effective OOS detection method that outperforms standard OOS detection methods in a real-world deployment of virtual assistants. We discuss the various design and deployment considerations for a cloud platform solution to train virtual assistants and deploy them at scale. Additionally, we propose a collection of datasets that replicates real-world scenarios and show comprehensive results in various settings using both offline and online evaluation metrics.
翻译:在相互交流的AI解决方案中,从范围(OOS)中检测出来,可以使聊天室在无法理解最终用户查询时优雅地处理谈话。在聊天室不具备处理与其培训的现有主题有语义重叠的专题的能力的情况下,准确将查询标记为局外操作尤其困难。我们提出了一个简单而有效的OOS检测方法,该方法在实际部署虚拟助理时超过了标准OOS检测方法。我们讨论了云层平台解决方案的各种设计和部署考虑,以培训虚拟助理并大规模部署。此外,我们建议收集数据集,复制真实世界情景,并使用离线和在线评价指标在各种环境中展示全面结果。