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INFORMATION THEORETIC CLUSTERING FOR UNSUPERVISED DOMAIN-ADAPTATION
Type of publication: Conference paper
Citation: Dey_ICASSP-2_2016
Publication status: Published
Booktitle: Proceedings of 2016 IEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP 2016)
Year: 2016
Month: March
Pages: 5580-5584
Publisher: IEEE
Location: Shanghai
Crossref: Dey_Idiap-RR-09-2016:
Abstract: The aim of the domain-adaptation task for speaker verification is to exploit unlabelled target domain data by using the labelled source domain data effectively. The i-vector based Probabilistic Linear Dis- criminant Analysis (PLDA) framework approaches this task by clus- tering the target domain data and using each cluster as a unique speaker to estimate PLDA model parameters. These parameters are then combined with the PLDA parameters from the source domain. Typically, agglomerative clustering with cosine distance measure is used. In tasks such as speaker diarization that also require unsuper- vised clustering of speakers, information-theoretic clustering mea- sures have been shown to be effective. In this paper, we employ the Information Bottleneck (IB) clustering technique to find speaker clusters in the target domain data. This is achieved by optimizing the IB criterion that minimizes the information loss during the cluster- ing process. The greedy optimization of the IB criterion involves ag- glomerative clustering using the Jensen-Shannon divergence as the distance metric. Our experiments in the domain-adaptation task in- dicate that the proposed system outperforms the baseline by about 14% relative in terms of equal error rate.
Keywords:
Projects Idiap
SIIP
Authors Dey, Subhadeep
Madikeri, Srikanth
Motlicek, Petr
Added by: [UNK]
Total mark: 0
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  • Dey_ICASSP-2_2016.pdf
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