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Dive into the research topics where Yoong Keok Lee is active.

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Featured researches published by Yoong Keok Lee.


empirical methods in natural language processing | 2002

An Empirical Evaluation of Knowledge Sources and Learning Algorithms for Word Sense Disambiguation

Yoong Keok Lee; Hwee Tou Ng

In this paper, we evaluate a variety of knowledge sources and supervised learning algorithms for word sense disambiguation on SENSEVAL-2 and SENSEVAL-1 data. Our knowledge sources include the part-of-speech of neighboring words, single words in the surrounding context, local collocations, and syntactic relations. The learning algorithms evaluated include Support Vector Machines (SVM), Naive Bayes, AdaBoost, and decision tree algorithms. We present empirical results showing the relative contribution of the component knowledge sources and the different learning algorithms. In particular, using all of these knowledge sources and SVM (i.e., a single learning algorithm) achieves accuracy higher than the best official scores on both SENSEVAL-2 and SENSEVAL-1 test data.


empirical methods in natural language processing | 2006

Inducing Temporal Graphs

Philip Bramsen; Pawan Deshpande; Yoong Keok Lee; Regina Barzilay

We consider the problem of constructing a directed acyclic graph that encodes temporal relations found in a text. The unit of our analysis is a temporal segment, a fragment of text that maintains temporal coherence. The strength of our approach lies in its ability to simultaneously optimize pairwise ordering preferences and global constraints on the graph topology. Our learning method achieves 83% F-measure in temporal segmentation and 84% accuracy in inferring temporal relations between two segments.


meeting of the association for computational linguistics | 2003

Closing the Gap: Learning-Based Information Extraction Rivaling Knowledge-Engineering Methods

Hai Leong Chieu; Hwee Tou Ng; Yoong Keok Lee

In this paper, we present a learning approach to the scenario template task of information extraction, where information filling one template could come from multiple sentences. When tested on the MUC-4 task, our learning approach achieves accuracy competitive to the best of the MUC-4 systems, which were all built with manually engineered rules. Our analysis reveals that our use of full parsing and state-of-the-art learning algorithms have contributed to the good performance. To our knowledge, this is the first research to have demonstrated that a learning approach to the full-scale information extraction task could achieve performance rivaling that of the knowledge engineering approach.


international acm sigir conference on research and development in information retrieval | 2004

Query based event extraction along a timeline

Hai Leong Chieu; Yoong Keok Lee


meeting of the association for computational linguistics | 2004

Supervised Word Sense Disambiguation with Support Vector Machines and multiple knowledge sources.

Yoong Keok Lee; Hwee Tou Ng; Tee Kiah Chia


american medical informatics association annual symposium | 2006

Finding Temporal Order in Discharge Summaries

Philip Bramsen; Pawan Deshpande; Yoong Keok Lee; Regina Barzilay


empirical methods in natural language processing | 2010

Simple Type-Level Unsupervised POS Tagging

Yoong Keok Lee; Aria Haghighi; Regina Barzilay


conference on computational natural language learning | 2011

Modeling Syntactic Context Improves Morphological Segmentation

Yoong Keok Lee; Aria Haghighi; Regina Barzilay


international joint conference on artificial intelligence | 2001

Fuzzy conceptual graphs for matching images of natural scenes

Philippe Mulhem; Wee Kheng Leow; Yoong Keok Lee


meeting of the association for computational linguistics | 2012

Unsupervised Morphology Rivals Supervised Morphology for Arabic MT

David Stallard; Jacob Devlin; Michael Kayser; Yoong Keok Lee; Regina Barzilay

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Regina Barzilay

Massachusetts Institute of Technology

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Hwee Tou Ng

National University of Singapore

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Aria Haghighi

University of California

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Pawan Deshpande

Massachusetts Institute of Technology

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Philip Bramsen

Massachusetts Institute of Technology

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Hai Leong Chieu

DSO National Laboratories

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Philippe Mulhem

National University of Singapore

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Wee Kheng Leow

National University of Singapore

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