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A Discriminative Entity-Aware Language Model for Virtual Assistants

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arxiv 2106.11292 v1 pith:NK5GFLVW submitted 2021-06-21 cs.CL cs.LG

A Discriminative Entity-Aware Language Model for Virtual Assistants

classification cs.CL cs.LG
keywords entitiesknowledgeassistantsdiscriminativelanguagemodelnamedreal-world
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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High-quality automatic speech recognition (ASR) is essential for virtual assistants (VAs) to work well. However, ASR often performs poorly on VA requests containing named entities. In this work, we start from the observation that many ASR errors on named entities are inconsistent with real-world knowledge. We extend previous discriminative n-gram language modeling approaches to incorporate real-world knowledge from a Knowledge Graph (KG), using features that capture entity type-entity and entity-entity relationships. We apply our model through an efficient lattice rescoring process, achieving relative sentence error rate reductions of more than 25% on some synthesized test sets covering less popular entities, with minimal degradation on a uniformly sampled VA test set.

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