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A Survey on Neural Network-Based Word Embedding
PhD Qualifying Examination Title: "A Survey on Neural Network-Based Word Embedding" by Miss Lanqing XUE Abstract: The objective of word embedding is to associate each word with a dense, low-dimensional, and real-valued vector. Word embedding is one of the most successful applications of unsupervised learning method. It has been applied to multiple tasks in Natural Language Processing (NLP), such as part-of-speech tagging (POS), named entity recognition (NER), semantic-role labeling (SRL), chunking and parsing in dialogue systems, question and answering (QA), machine translation and sentiment analysis. It is also commonly used in Computer Vision (CV) for tasks such as image captioning. With the advances of neural network algorithms in recent decades, neural network-based word embeddings are becoming more syntactically and semantically meaningful than traditional word representations, and these good embeddings improve model performances over all tasks. Thus, word embedding plays an increasingly significant role both in NLP and CV. This survey gives an overview of the developments of neural network-based word embedding, proposes a categorization of all major algotithms based on the types of word co-occurrences they use, highlights challenges in current researches and points out possible future directions. Date: Thursday, 5 July 2018 Time: 10:00am - 12:00noon Venue: Room 5560 Lifts 27/28 Committee Members: Prof. Nevin Zhang (Supervisor) Dr. Brian Mak (Chairperson) Dr. Yangqiu Song Dr. Raymond Wong **** ALL are Welcome ****