Litcius/Paper detail

MA-DST: Multi-Attention-Based Scalable Dialog State Tracking

Adarsh Kumar, Peter Ku, Anuj Goyal, Angeliki Metallinou, Dilek Hakkani‐Tür

2020Proceedings of the AAAI Conference on Artificial Intelligence48 citationsDOIOpen Access PDF

Abstract

Task oriented dialog agents provide a natural language interface for users to complete their goal. Dialog State Tracking (DST), which is often a core component of these systems, tracks the system's understanding of the user's goal throughout the conversation. To enable accurate multi-domain DST, the model needs to encode dependencies between past utterances and slot semantics and understand the dialog context, including long-range cross-domain references. We introduce a novel architecture for this task to encode the conversation history and slot semantics more robustly by using attention mechanisms at multiple granularities. In particular, we use cross-attention to model relationships between the context and slots at different semantic levels and self-attention to resolve cross-domain coreferences. In addition, our proposed architecture does not rely on knowing the domain ontologies beforehand and can also be used in a zero-shot setting for new domains or unseen slot values. Our model improves the joint goal accuracy by 5% (absolute) in the full-data setting and by up to 2% (absolute) in the zero-shot setting over the present state-of-the-art on the MultiWoZ 2.1 dataset.

Topics & Concepts

Dialog boxComputer scienceConversationSemantics (computer science)Context (archaeology)Domain (mathematical analysis)ENCODENatural language processingDialog systemTask (project management)Artificial intelligenceHuman–computer interactionProgramming languageWorld Wide WebLinguisticsMathematicsManagementGenePaleontologyMathematical analysisChemistryBiochemistryPhilosophyEconomicsBiologyTopic ModelingSpeech and dialogue systemsAI in Service Interactions