English

Nearly Zero-Shot Learning for Semantic Decoding in Spoken Dialogue Systems

Computation and Language 2018-06-22 v2 Artificial Intelligence

Abstract

This paper presents two ways of dealing with scarce data in semantic decoding using N-Best speech recognition hypotheses. First, we learn features by using a deep learning architecture in which the weights for the unknown and known categories are jointly optimised. Second, an unsupervised method is used for further tuning the weights. Sharing weights injects prior knowledge to unknown categories. The unsupervised tuning (i.e. the risk minimisation) improves the F-Measure when recognising nearly zero-shot data on the DSTC3 corpus. This unsupervised method can be applied subject to two assumptions: the rank of the class marginal is assumed to be known and the class-conditional scores of the classifier are assumed to follow a Gaussian distribution.

Keywords

Cite

@article{arxiv.1806.05484,
  title  = {Nearly Zero-Shot Learning for Semantic Decoding in Spoken Dialogue Systems},
  author = {Lina M. Rojas-Barahona and Stefan Ultes and Pawel Budzianowski and Iñigo Casanueva and Milica Gasic and Bo-Hsiang Tseng and Steve Young},
  journal= {arXiv preprint arXiv:1806.05484},
  year   = {2018}
}
R2 v1 2026-06-23T02:29:56.642Z