ASCLMar 31, 2022

Partial Coupling of Optimal Transport for Spoken Language Identification

arXiv:2203.17036v1
Originality Incremental advance
AI Analysis

This work addresses domain adaptation for spoken language identification, an incremental improvement over previous methods by handling partial label spaces.

The paper tackled the problem of negative domain transfer in cross-domain spoken language identification when the test label space is a subset of the training set, by proposing a joint distribution alignment model based on partial optimal transport, which significantly improved performance.

In order to reduce domain discrepancy to improve the performance of cross-domain spoken language identification (SLID) system, as an unsupervised domain adaptation (UDA) method, we have proposed a joint distribution alignment (JDA) model based on optimal transport (OT). A discrepancy measurement based on OT was adopted for JDA between training and test data sets. In our previous study, it was supposed that the training and test sets share the same label space. However, in real applications, the label space of the test set is only a subset of that of the training set. Fully matching training and test domains for distribution alignment may introduce negative domain transfer. In this paper, we propose an JDA model based on partial optimal transport (POT), i.e., only partial couplings of OT are allowed during JDA. Moreover, since the label of test data is unknown, in the POT, a soft weighting on the coupling based on transport cost is adaptively set during domain alignment. Experiments were carried out on a cross-domain SLID task to evaluate the proposed UDA. Results showed that our proposed UDA significantly improved the performance due to the consideration of the partial couplings in OT.

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