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Learning to Learn End-to-End Goal-Oriented Dialog From Related Dialog Tasks (2110.15724v1)
Published 10 Oct 2021 in cs.CL and cs.LG
Abstract: For each goal-oriented dialog task of interest, large amounts of data need to be collected for end-to-end learning of a neural dialog system. Collecting that data is a costly and time-consuming process. Instead, we show that we can use only a small amount of data, supplemented with data from a related dialog task. Naively learning from related data fails to improve performance as the related data can be inconsistent with the target task. We describe a meta-learning based method that selectively learns from the related dialog task data. Our approach leads to significant accuracy improvements in an example dialog task.
- Janarthanan Rajendran (26 papers)
- Jonathan K. Kummerfeld (38 papers)
- Satinder Singh (80 papers)