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Large-Scale Experiments on Data-Driven Design of Commercial Spoken Dialog Systems

机译:商业口语对话系统数据驱动设计的大规模实验

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The design of commercial spoken dialog systems is most commonly based on hand-crafting call flows. Voice interaction designers write prompts, predict caller responses, set speech recognition parameters, implement interaction strategies, all based on "best design practices". Recently, we presented the mathematical framework "Contender" (similar to reinforcement learning) that allows for replacing manual decisions made during system design by data-driven soft decisions made at system run time optimizing the cumulative reward of an application. The current paper reports on the results of 26 Contenders implemented in commercial applications processing a total of about 15 million calls.
机译:商业口语对话系统的设计通常基于手工呼叫流程。语音交互设计师基于“最佳设计实践”编写提示,预测呼叫者响应,设置语音识别参数,实施交互策略。最近,我们介绍了数学框架“竞争者”(类似于强化学习),该框架可通过在系统运行时进行数据驱动的软决策来替代系统设计过程中做出的手动决策,从而优化应用程序的累积报酬。本论文报告了在商业应用中实施的26个竞争者的结果,总共处理了约1500万个呼叫。

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