Noise Robust Named Entity Understanding for Voice Assistants
Deepak Muralidharan
Joel Ruben Antony Moniz
Sida Gao
Xiao Yang
Justine T. Kao
S. Pulman
Atish Kothari
Ray Shen
Yinying Pan
Vivek Kaul
Mubarak Seyed Ibrahim
Gang Xiang
Nan Dun
Yidan Zhou
Andy O
Yuan-kang Zhang
Pooja Chitkara
Xuan Wang
Alkesh Patel
Kushal Tayal
Roger Zheng
Peter Grasch
Jason D. Williams
Lin Li

Abstract
Named Entity Recognition (NER) and Entity Linking (EL) play an essential role in voice assistant interaction, but are challenging due to the special difficulties associated with spoken user queries. In this paper, we propose a novel architecture that jointly solves the NER and EL tasks by combining them in a joint reranking module. We show that our proposed framework improves NER accuracy by up to 3.13% and EL accuracy by up to 3.6% in F1 score. The features used also lead to better accuracies in other natural language understanding tasks, such as domain classification and semantic parsing.
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