This thesis investigates methods for Acoustic Modeling in Automatic Speech Recog- nition, assuming limited access to training data in the target domain. The Acoustic Models of interest are Deep Neural Network Acoustic Models (in both the Hybrid and End-to-End approaches), and the target domains in question are either different languages or different speakers. Inductive bias is transfered from a source domain during training, via Multi-Task Learning or Transfer Learning. With regards to Multi-Task Learning, Chapter (5) presents experiments which explicitly incorporate linguistic knowledge (i.e. phonetics and phonology) into an auxiliary task during neural Acoustic Model training. In Chapter (6), I investigate Multi-Task methods which do not ...
Recent breakthroughs in deep learning often rely on representation learning and knowledge transfer. ...
The current generation of neural network-based natural language processing models excels at learning...
Summarization: This work presents techniques for improved cross-language transfer of speech...
The development of a speech recognition system requires at least three resources: a large labeled sp...
Ensuring the best quality and performance of modern speech technologies, today, is possible based on...
Ensuring the best quality and performance of modern speech technologies, today, is possible based on...
Over the past decades, speech recognition has dramatically improved in a large variety of applicatio...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
In this article, we propose a simple yet effective approach to train an end-to-end speech recognitio...
This paper presents a study on multilingual deep neural net-work (DNN) based acoustic modeling and i...
This work deals with non-native children’s speech and investigates both multi-task and t...
This paper presents a novel acoustic modeling technique of large vocabulary automatic speech recogni...
This paper presents a novel acoustic modeling technique of large vocabulary automatic speech recogni...
It is well-known in machine learning that multitask learning (MTL) can help improve the generalizati...
Multilingual speech recognition has drawn significant attention as an effective way to compensate da...
Recent breakthroughs in deep learning often rely on representation learning and knowledge transfer. ...
The current generation of neural network-based natural language processing models excels at learning...
Summarization: This work presents techniques for improved cross-language transfer of speech...
The development of a speech recognition system requires at least three resources: a large labeled sp...
Ensuring the best quality and performance of modern speech technologies, today, is possible based on...
Ensuring the best quality and performance of modern speech technologies, today, is possible based on...
Over the past decades, speech recognition has dramatically improved in a large variety of applicatio...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
In this article, we propose a simple yet effective approach to train an end-to-end speech recognitio...
This paper presents a study on multilingual deep neural net-work (DNN) based acoustic modeling and i...
This work deals with non-native children’s speech and investigates both multi-task and t...
This paper presents a novel acoustic modeling technique of large vocabulary automatic speech recogni...
This paper presents a novel acoustic modeling technique of large vocabulary automatic speech recogni...
It is well-known in machine learning that multitask learning (MTL) can help improve the generalizati...
Multilingual speech recognition has drawn significant attention as an effective way to compensate da...
Recent breakthroughs in deep learning often rely on representation learning and knowledge transfer. ...
The current generation of neural network-based natural language processing models excels at learning...
Summarization: This work presents techniques for improved cross-language transfer of speech...