English

Contextual Language Model Adaptation for Conversational Agents

Computation and Language 2018-12-12 v4

Abstract

Statistical language models (LM) play a key role in Automatic Speech Recognition (ASR) systems used by conversational agents. These ASR systems should provide a high accuracy under a variety of speaking styles, domains, vocabulary and argots. In this paper, we present a DNN-based method to adapt the LM to each user-agent interaction based on generalized contextual information, by predicting an optimal, context-dependent set of LM interpolation weights. We show that this framework for contextual adaptation provides accuracy improvements under different possible mixture LM partitions that are relevant for both (1) Goal-oriented conversational agents where it's natural to partition the data by the requested application and for (2) Non-goal oriented conversational agents where the data can be partitioned using topic labels that come from predictions of a topic classifier. We obtain a relative WER improvement of 3% with a 1-pass decoding strategy and 6% in a 2-pass decoding framework, over an unadapted model. We also show up to a 15% relative improvement in recognizing named entities which is of significant value for conversational ASR systems.

Keywords

Cite

@article{arxiv.1806.10215,
  title  = {Contextual Language Model Adaptation for Conversational Agents},
  author = {Anirudh Raju and Behnam Hedayatnia and Linda Liu and Ankur Gandhe and Chandra Khatri and Angeliki Metallinou and Anu Venkatesh and Ariya Rastrow},
  journal= {arXiv preprint arXiv:1806.10215},
  year   = {2018}
}

Comments

Interspeech 2018 (accepted)

R2 v1 2026-06-23T02:42:50.720Z