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Dive into the research topics where Chang-Hoo Jeong is active.

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Featured researches published by Chang-Hoo Jeong.


The Kips Transactions:partd | 2011

Terminology Recognition System based on Machine Learning for Scientific Document Analysis

Yun-Soo Choi; Sa-Kwang Song; Hong-Woo Chun; Chang-Hoo Jeong; Sung-Pil Choi

Terminology recognition system which is a preceding research for text mining, information extraction, information retrieval, semantic web, and question-answering has been intensively studied in limited range of domains, especially in bio-medical domain. We propose a domain independent terminology recognition system based on machine learning method using dictionary, syntactic features, and Web search results, since the previous works revealed limitation on applying their approaches to general domain because their resources were domain specific. We achieved F-score 80.8 and 6.5% improvement after comparing the proposed approach with the related approach, C-value, which has been widely used and is based on local domain frequencies. In the second experiment with various combinations of unithood features, the method combined with NGD(Normalized Google Distance) showed the best performance of 81.8 on F-score. We applied three machine learning methods such as Logistic regression, C4.5, and SVMs, and got the best score from the decision tree method, C4.5.


Journal of The Korean Society for Information Management | 2011

A Study on the Integration of Recognition Technology for Scientific Core Entities

Yun-Soo Choi; Chang-Hoo Jeong; Hyun-Yang Cho

Large-scaled information extraction plays an important role in advanced information retrieval as well as question answering and summarization. Information extraction can be defined as a process of converting unstructured documents into formalized, tabular information, which consists of named-entity recognition, terminology extraction, coreference resolution and relation extraction. Since all the elementary technologies have been studied independently so far, it is not trivial to integrate all the necessary processes of information extraction due to the diversity of their input/output formation approaches and operating environments. As a result, it is difficult to handle scientific documents to extract both named-entities and technical terms at once. In order to extract these entities automatically from scientific documents at once, we developed a framework for scientific core entity extraction which embraces all the pivotal language processors, named-entity recognizer and terminology extractor.


Journal of The Korean Society for Library and Information Science | 2011

A Study on the Identification and Classification of Relation Between Biotechnology Terms Using Semantic Parse Tree Kernel

Sung-Pil Choi; Chang-Hoo Jeong; Hong-Woo Chun; Hyun-Yang Cho

In this paper, we propose a novel kernel called a semantic parse tree kernel that extends the parse tree kernel previously studied to extract protein-protein interactions(PPIs) and shown prominent results. Among the drawbacks of the existing parse tree kernel is that it could degenerate the overall performance of PPI extraction because the kernel function may produce lower kernel values of two sentences than the actual analogy between them due to the simple comparison mechanisms handling only the superficial aspects of the constituting words. The new kernel can compute the lexical semantic similarity as well as the syntactic analogy between two parse trees of target sentences. In order to calculate the lexical semantic similarity, it incorporates context-based word sense disambiguation producing synsets in WordNet as its outputs, which, in turn, can be transformed into more general ones. In experiments, we introduced two new parameters: tree kernel decay factors, and degrees of abstracting lexical concepts which can accelerate the optimization of PPI extraction performance in addition to the conventional SVM`s regularization factor. Through these multi-strategic experiments, we confirmed the pivotal role of the newly applied parameters. Additionally, the experimental results showed that semantic parse tree kernel is superior to the conventional kernels especially in the PPI classification tasks.


The Journal of the Korea Contents Association | 2010

Development of a Framework for Semi-automatic Building Test Collection Specialized in Evaluating Relation Extraction between Technical Terminologies

Chang-Hoo Jeong; Sung-Pil Choi; Min-Ho Lee; Yun-Soo Choi

Due to the increase of the attention on relation extraction systems, the construction of test collections for assessing their performance has emerged as an important task. In this paper, we propose semi-automatic framework capable of constructing test collections for relation extraction on a large scale. Based on this framework, we develop a test collection which can assess the performance of various approaches to extracting relations between technical terminologies in scientific literatures. This framework can minimize the cost of constructing this kind of collections and reduce the intrinsic fluctuations which may come from the diversity in characteristics of collection developers. Furthermore, we can construct balanced and objective collections by means of controlling the selection process of seed documents and terminologies using the proposed framework.


The Journal of the Korea Contents Association | 2009

Development of a Grid-based Framework for High-Performance Scientific Knowledge Discovery

Chang-Hoo Jeong; Sung-Pil Choi; Hwa-Mook Yoon; Yun-Soo Choi

In this paper, we propose the SINDI-Grid which is a high-performance framework for scientific and technological knowledge discovery using the grid computing. By using the advantages of the grid computing providing data repository of large-volume and high-speed computing power, the SINDI-Grid framework provides a variety of grid services for distributed data analysis and scientific knowledge processing. And the SINDI-Workflow tool exploits these services so that performs the design and execution for scientific and technological knowledge discovery applications which integrate various information processing algorithms.


computational intelligence for modelling, control and automation | 2005

Improving Rule Generation Precision for Domain Knowledge based Wrappers

Chang-Hoo Jeong; Sung-Jin Jhun; Myung-Eun Lim; Sung Hyon Myaeng

Wrappers play an important role in extracting specified information from various sources. Wrapper rules by which information is extracted are often created from the domain-specific knowledge. Domain-specific knowledge helps recognizing the meaning the text representing various entities and values and detecting their formats. However, such domain knowledge becomes powerless when value-representing data are not labeled with appropriate textual descriptions or there is nothing but a hyper link when certain text labels or values are expected. In order to alleviate these problems, we propose a probabilistic method for recognizing the entity type, i.e. generating wrapper rules, when there is no label associated with value-representing text. In addition, we have devised a method for using the information reachable by following hyperlinks when textual data are not immediately available on the target Web page. Our experimental work shows that the proposed methods help increasing precision of the resulting wrapper, particularly extracting the title information, the most important entity on a Web page. The proposed methods can be useful in making a more efficient and correct information extraction system for various sources of information without user intervention


Journal of KIISE:Software and Applications | 2009

Relation Extraction based on Extended Composite Kernel using Flat Lexical Features

Sung-Pil Chai; Chang-Hoo Jeong; Yun-Soo Chai; Sung-Hyon Myaeng


International Journal on Advances in Information Sciences and Service Sciences | 2013

Information Extraction for Technology Trend Analysis

Hong-Woo Chun; Chang-Hoo Jeong; Sungho Shin; Dongmin Seo; Mi-Nyeong Hwang; HyoJun Jang; WooChul Park; JinWoo Park; Seungwoo Lee; Sung-Pil Choi; Woondong Yeo; Hanmin Jung


Journal of KIISE:Computing Practices and Letters | 2012

Procedural Knowledge Extraction on Medical Documents

Sa-Kwang Song; Yun-Soo Choi; Sung-Pil Choi; Heung-Seon Oh; Sung-Hyon Myaeng; Hong-Woo Chun; Chang-Hoo Jeong


Journal of Internet Computing and Services | 2011

Relation Extraction based on Composite Kernel combining Pattern Similarity of Predicate-Argument Structure

Chang-Hoo Jeong; Sung-Pil Choi; Yun-Soo Choi; Sa-Kwang Song; Hong-Woo Chun

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Sung-Pil Choi

Korea Institute of Science and Technology Information

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Yun-Soo Choi

Korea Institute of Science and Technology Information

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Hong-Woo Chun

Korea Institute of Science and Technology Information

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Sa-Kwang Song

Korea Institute of Science and Technology Information

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Hanmin Jung

Korea Institute of Science and Technology Information

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Hwa-Mook Yoon

Korea Institute of Science and Technology Information

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Jung-Ho Um

Korea Institute of Science and Technology Information

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Seungwoo Lee

Korea Institute of Science and Technology Information

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