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THE USE OF RECURRENT NEURAL NETWORKS FOR AUTOMATIC SPEECH RECOGNITION: A SURVEY
PhD Qualifying Examination Title: "THE USE OF RECURRENT NEURAL NETWORKS FOR AUTOMATIC SPEECH RECOGNITION: A SURVEY" by Mr. Hengguan HUANG Abstract: Over the past few years, there has been a resurgence of interest in using recurrent neural networks for automatic speech recognition. The use of recurrent neural networks is a very natural way of acoustic modeling because speech is essentially a dynamic process. Some modern recurrent network models, such as LSTM and GRU, have demonstrated promising results on this task. However, they suffer from some important drawbacks, including limited length of history, scalability of multidimensional features and uncertainty handling. Many variants of recurrent neural networks have been developed in an attempt to address these drawbacks. We classify these variants into three categories based on three key drawbacks we have identified. Each technique is described and its application to acoustic modeling in automatic speech recognition, if any, is discussed. In the last part, we further conclude current variants of recurrent neural networks and its advantages and disadvantages and discuss possible research directions. Date: Thursday, 3 August 2017 Time: 11:00am - 1:00pm Venue: Room 2611 Lifts 31/32 Committee Members: Dr. Brian Mak (Supervisor) Dr. Raymond Wong (Chairperson) Prof. Fangzhen Lin Dr. Xiaojuan Ma **** ALL are Welcome ****