info:eu-repo/semantics/article
Zero-shot Multi-Domain Dialog State Tracking Using Descriptive Rules
Fecha
2020-09Registro en:
Altszyler Lemcovich, Edgar Jaim; Brusco, Pablo; Basiou, Nikoletta; Byrnes, John; Vergyri, Dimitra; Zero-shot Multi-Domain Dialog State Tracking Using Descriptive Rules; Cornell University; ArXiv; 2020; 9-2020; 1-4
2331-8422
CONICET Digital
CONICET
Autor
Altszyler Lemcovich, Edgar Jaim
Brusco, Pablo
Basiou, Nikoletta
Byrnes, John
Vergyri, Dimitra
Resumen
In this work, we present a framework for incorporating descriptive logical rules in state-of-the-art neural networks, enabling them to learn how to handle unseen labels without the introduction of any new training data. The rules are integrated into existing networks without modifying their architecture, through an additional term in the network’s loss function that penalizes states of the network that do not obey the designed rules.As a case of study, the framework is applied to an existing neuralbased Dialog State Tracker. Our experiments demonstrate that the inclusion of logical rules allows the prediction of unseen labels, without deteriorating the predictive capacity of the original system.