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Featured researches published by Jong-Sik Lee.


Healthcare Informatics Research | 2015

Data-Mining-Based Coronary Heart Disease Risk Prediction Model Using Fuzzy Logic and Decision Tree

Jaekwon Kim; Jong-Sik Lee; Young-Ho Lee

Objectives The importance of the prediction of coronary heart disease (CHD) has been recognized in Korea; however, few studies have been conducted in this area. Therefore, it is necessary to develop a method for the prediction and classification of CHD in Koreans. Methods A model for CHD prediction must be designed according to rule-based guidelines. In this study, a fuzzy logic and decision tree (classification and regression tree [CART])-driven CHD prediction model was developed for Koreans. Datasets derived from the Korean National Health and Nutrition Examination Survey VI (KNHANES-VI) were utilized to generate the proposed model. Results The rules were generated using a decision tree technique, and fuzzy logic was applied to overcome problems associated with uncertainty in CHD prediction. Conclusions The accuracy and receiver operating characteristic (ROC) curve values of the propose systems were 69.51% and 0.594, proving that the proposed methods were more efficient than other models.


Preparative Biochemistry & Biotechnology | 2006

Neural network-based analysis of thiol proteomics data in identifying potential selenium targets.

Jong-Sik Lee; Yong-Beom Ma; Kyoung-Soo Choi; Soo-Yeon Park; Sun‐Hee Baek; Young-Mee Park; Ke Zu; Haitao Zhang; Clement Ip; Yeul Hong Kim; Eun Mi Park

Abstract Generation of a monomethylated selenium metabolite is critical for the anticancer activity of selenium. Because of its strong nucleophilicity, the metabolite can react directly with protein thiols to cause redox modification. Here, we report a neural network‐based analysis to identify potential selenium targets. A reactive thiol specific reagent, BIAM, was used to monitor thiol proteome changes on 2D gel. We constructed a dynamic model and evaluated the relative importance of proteins mediating the cellular responses to selenium. Information from this study will provide new clues to unravel mechanisms of anticancer action of selenium. High impact selenium targets could also serve as biomarkers to gauge the efficacy of selenium chemoprevention.


Journal of the Korea Society for Simulation | 2013

Fuzzy Logic-driven Virtual Machine Resource Evaluation Method for Cloud Provisioning Service

Jaekwon Kim; Jong-Sik Lee

Cloud computing is one of the distributed computing environments and utilizes several computing resources. Cloud environment uses a virtual machine to process a requested job. To balance a workload and process a job rapidly, cloud environment uses a provisioning technique and assigns a task with a status of virtual machine. However, a scheduling method for cloud computing requires a definition of virtual machine availabilities, which have an obscure meaning. In this paper, we propose Fuzzy logic driven Virtual machine Provisioning scheduling using Resource Evaluation(FVPRE). FVPRE analyzes a state of every virtual machine and actualizes a value of resource availability. Thus FVPRE provides an efficient provisioning scheduling with a precise evaluation of resource availability. FVPRE shows a high throughput and utilization for job processing on cloud environments.


/home/dspace/dspace54/upload/original/408_분산환경계산자원.pdf | 2014

분산 환경에서 계산 자원의 효율 증대를 위한 데이터 특성 기반의 작업 분류방법

Sunghwan Moon; Jaekwon Kim; Taeyoung Kim; Jeong-Seok Choi; Kyu-Cheol Cho; Jong-Sik Lee

Various computational resources in distributed environment are to build a high-performance computing environments through virtualization technology. Recently, there is a growing need for a complicated process due to the improvement of the user-level application, which has led to demand for high-performance computing. The requested job from users is composed of data. And because of each data has own characteristics, the classifier may consider the features of data. In this paper, we propose Job Classifying method based on Data Traits for Increased Efficiency of Computational Resources in Distributed Environment (JCDT). JCDT classifies the job by data traits of the users’ request, is expected to improve the job processing time and increase the processing speed of the calculation resources.


Journal of the Korea Society for Simulation | 2011

Virtual Machine Provisioning Scheduling with Conditional Probability Inference for Transport Information Service in Cloud Environment

Jaekwon Kim; Jong-Sik Lee

There is a growing tendency toward a vehicle demand and a utilization of traffic information systems. Due to various kinds of traffic information systems and increasing of communication data, the traffic information service requires a very high IT infrastructure. A cloud computing environment is an essential approach for reducing a IT infrastructure cost. And the traffic information service needs a provisioning scheduling method for managing a resource. So we propose a provisioning scheduling with conditional probability inference (PSCPI) for the traffic information service on cloud environment. PSCPI uses a naive bayse inference technique based on a status of a virtual machine. And PSCPI allocates a job to the virtual machines on the basis of an availability of each virtual machine. Naive bayse based PSCPI provides a high throughput and an high availability of virtual machines for real-time traffic information services.


Journal of the Korea Society for Simulation | 2012

Dynamic Available-Resource Reallocation based Job Scheduling Model in Grid Computing

Jaekwon Kim; Jong-Sik Lee

A grid computing consists of the physical resources for processing one of the large-scale jobs. However, due to the recent trends of rapid growing data, the grid computing needs a parallel processing method to process the job. In general, each physical resource divides a requested large-scale task. And a processing time of the task varies with an efficiency and a distance of each resource. Even if some resource completes a job, the resource is standing by until every divided job is finished. When every resource finishes a processing, each resource starts a next job. Therefore, this paper proposes a dynamic resource reallocation scheduling model (DDRSM). DDRSM finds a waiting resource and reallocates an unfinished job with an efficiency and a distance of the resource. DDRSM is an efficient method for processing multiple large-scale jobs.


International Journal of Modeling, Simulation, and Scientific Computing | 2016

Data collection model in hybrid network for participatory sensing

Jeong-Seok Choi; Taeyoung Kim; Jaekwon Kim; Sunghwan Moon; Youngshin Han; Jong-Sik Lee

Advances in mobile technology make most people have their own mobile devices which contain various sensors such as a smartphone. People produce their own personal data or collect surrounding environment data with their mobile devices at every moment. Recently, a broad spectrum of studies on Participatory Sensing, the concept of extracting new knowledge from a mass of data sent by participants, are conducted. Data collection method is one of the base technologies for Participatory Sensing, so networking and data filtering techniques for collecting a large number of data are the most interested research area. In this paper, we propose a data collection model in hybrid network for participatory sensing. The proposed model classifies data into two types and decides networking form and data filtering method based on the data type to decrease loads on data center and improve transmission speed.


Archive | 2015

Fuzzy Logic-Driven Resource Evaluation Method for Automated Negotiation with Resource Allocation in Distributed Environment

Jaekwon Kim; Taeyoung Kim; Sunghwan Moon; Jong-Sik Lee

Distributed environment has been utilizing to handle a massive data. And a major concern of a distributed system is a management method for resource allocation and task. In order to improve a performance, the scheduling may consider a resource evaluation. However, a resources state shows an uncertainty to evaluate the subject. In this paper, we propose of fuzzy logic-drive resource evaluation to solve this uncertainty for automated negotiation with resource allocation. The FLRE evaluates and manages the resource with fuzzy logic. The proposed method shows the high throughput and performance.


Journal of the Korea Society for Simulation | 2015

Fuzzy logic-based Priority Live Migration Model for Efficiency

Minoh Park; Jaekwon Kim; Jeong-Seok Choi; Jong-Sik Lee

ABSTRACTIf the cloud computing environment is not sufficiently provide the required resources due to the number of virtual server to process the request, may cause a problem that the load applied to the specific server. Migration administrator receive the resources of each physical server for improving the efficiency of the virtual server that exists in the physical servers, and determines the migration destination based on the simulation results. But, there is more overhead predicting the future resource consumption of all the physical server to decide the migration destination through the simulation process in large and complex cloud computing environments. To solve this problem, we propose an improved prediction method with the simulation-based approach. The proposed method is a fuzzy-logic based priority model for VM migration. We design a proposed model with the DEVS formalism. And we also measure and compare a performance and migration count with existing simulation-based migration method. FPLM shows high utilization.


Archive | 2014

Fuzzy-Based Resource Reallocation Scheduling Model in Cloud Computing

Jaekwon Kim; Taeyoung Kim; Minoh Park; Youngshin Han; Jong-Sik Lee

A cloud computing system consists of physical resources for processing large-scale tasks. With a recent trend of rapidly growing data, a cloud computing system needs a processing method to process a large-scale task in a physical resource. Generally, a physical resource divides a requested large-scale task to several tasks. And a processing time of each divided task varies with two factors which are processing efficiency of each resource and distance between resources. Although a resource completes a task, the resource is standing by until all divided tasks are completed. When all resources complete a large-scale task, each resource can start to process a next task. In this paper, we propose a Fuzzy-based Resource Reallocation Scheduling Model (FRRSM). Using fuzzy rule, FRRSM reallocates an uncompleted task to with a resource in considering efficiency and distance factors of the resource. FRRSM is an efficient method for processing a large-scale task or multiple large-scale tasks.

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Eun Mi Park

Incheon National University

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