Slot-gated modeling for joint slot filling and intent prediction
Journal
NAACL HLT 2018 - 2018 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies - Proceedings of the Conference
Journal Volume
2
Pages
753-757
Date Issued
2018
Author(s)
Abstract
Attention-based recurrent neural network models for joint intent detection and slot filling have achieved the state-of-the-art performance, while they have independent attention weights. Considering that slot and intent have the strong relationship, this paper proposes a slot gate that focuses on learning the relationship between intent and slot attention vectors in order to obtain better semantic frame results by the global optimization. The experiments show that our proposed model significantly improves sentence-level semantic frame accuracy with 4.2% and 1.9% relative improvement compared to the attentional model on benchmark ATIS and Snips datasets respectively. ? 2018 Association for Computational Linguistics.
Subjects
Computational linguistics; Global optimization; Semantics; Intent detection; Recurrent neural network model; Semantic frames; Sentence level; State-of-the-art performance; Recurrent neural networks
Type
conference paper