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Multi domain Dialog State Tracking using Recurrent Neural Networks

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Figure

Table 1: datasets used in our experiments
Table 3: Impact of slot specialisation on performance across the six domains (ensembles of 12 models)
Figure 1: Joint goal accuracy on Michigan Restaurants (left) and the Laptops domain (right) as a functionof the number of in-domain training dialogs available to the training procedure (ensembles of four models)

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