{"id":649497,"date":"2020-04-10T10:41:12","date_gmt":"2020-04-10T17:41:12","guid":{"rendered":"https:\/\/www.microsoft.com\/en-us\/research\/?post_type=msr-research-item&#038;p=649497"},"modified":"2020-11-22T10:12:40","modified_gmt":"2020-11-22T18:12:40","slug":"l-vector-neural-label-embedding-for-domain-adaptation","status":"publish","type":"msr-research-item","link":"https:\/\/www.microsoft.com\/en-us\/research\/publication\/l-vector-neural-label-embedding-for-domain-adaptation\/","title":{"rendered":"L-Vector: Neural Label Embedding for Domain Adaptation"},"content":{"rendered":"<p>We propose a novel neural label embedding (NLE) scheme for the domain adaptation of a deep neural network (DNN) acoustic model with unpaired data samples from source and target domains.  With NLE method, we distill the knowledge from a powerful source-domain DNN into a dictionary of label embeddings, or l-vectors, one for each senone class. Each l-vector is a representation of the senone-specific output distributions of the source-domain DNN and is learned to minimize the average L_2, Kullback-Leibler (KL) or symmetric KL distance to the output vectors with the same label through simple averaging or standard back-propagation. During adaptation, the l-vectors serve as the soft targets to train the target-domain model with cross-entropy loss. Without parallel data constraint as in the teacher-student learning, NLE is specially suited for the situation where the paired target-domain data cannot be simulated from the source-domain data. We adapt a 6400 hours multi-conditional US English acoustic model to each of the 9 accented English (80 to 830 hours) and kids&#8217; speech (80 hours). NLE achieves up to 14.1% relative word error rate reduction over direct re-training with one-hot labels. <\/p>\n","protected":false},"excerpt":{"rendered":"<p>We propose a novel neural label embedding (NLE) scheme for the domain adaptation of a deep neural network (DNN) acoustic model with unpaired data samples from source and target domains. With NLE method, we distill the knowledge from a powerful source-domain DNN into a dictionary of label embeddings, or l-vectors, one for each senone class. 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