Jiri Navratil, Jan Kleindienst, et al.
ICASSP 2000
This paper presents a hybrid dialog state tracker enhanced by trainable Spoken Language Understanding (SLU) for slotfilling dialog systems. Our architecture is inspired by previously proposed neuralnetwork- based belief-tracking systems. In addition we extended some parts of our modular architecture with differentiable rules to allow end-to-end training. We hypothesize that these rules allow our tracker to generalize better than pure machinelearning based systems. For evaluation we used the Dialog State Tracking Challenge (DSTC) 2 dataset - a popular belief tracking testbed with dialogs from restaurant information system. To our knowledge, our hybrid tracker sets a new stateof- the-art result in three out of four categories within the DSTC2.
Jiri Navratil, Jan Kleindienst, et al.
ICASSP 2000
Gabriel Stanovsky, Daniel Gruhl, et al.
EACL 2017
Charles Jochim, Léa A. Deleris
EACL 2017
Francesco Barbieri, Miguel Ballesteros, et al.
EACL 2017