• Title/Summary/Keyword: ANN 기법

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An Intelligent Intrusion Detection Model Based on Support Vector Machines and the Classification Threshold Optimization for Considering the Asymmetric Error Cost (비대칭 오류비용을 고려한 분류기준값 최적화와 SVM에 기반한 지능형 침입탐지모형)

  • Lee, Hyeon-Uk;Ahn, Hyun-Chul
    • Journal of Intelligence and Information Systems
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    • v.17 no.4
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    • pp.157-173
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    • 2011
  • As the Internet use explodes recently, the malicious attacks and hacking for a system connected to network occur frequently. This means the fatal damage can be caused by these intrusions in the government agency, public office, and company operating various systems. For such reasons, there are growing interests and demand about the intrusion detection systems (IDS)-the security systems for detecting, identifying and responding to unauthorized or abnormal activities appropriately. The intrusion detection models that have been applied in conventional IDS are generally designed by modeling the experts' implicit knowledge on the network intrusions or the hackers' abnormal behaviors. These kinds of intrusion detection models perform well under the normal situations. However, they show poor performance when they meet a new or unknown pattern of the network attacks. For this reason, several recent studies try to adopt various artificial intelligence techniques, which can proactively respond to the unknown threats. Especially, artificial neural networks (ANNs) have popularly been applied in the prior studies because of its superior prediction accuracy. However, ANNs have some intrinsic limitations such as the risk of overfitting, the requirement of the large sample size, and the lack of understanding the prediction process (i.e. black box theory). As a result, the most recent studies on IDS have started to adopt support vector machine (SVM), the classification technique that is more stable and powerful compared to ANNs. SVM is known as a relatively high predictive power and generalization capability. Under this background, this study proposes a novel intelligent intrusion detection model that uses SVM as the classification model in order to improve the predictive ability of IDS. Also, our model is designed to consider the asymmetric error cost by optimizing the classification threshold. Generally, there are two common forms of errors in intrusion detection. The first error type is the False-Positive Error (FPE). In the case of FPE, the wrong judgment on it may result in the unnecessary fixation. The second error type is the False-Negative Error (FNE) that mainly misjudges the malware of the program as normal. Compared to FPE, FNE is more fatal. Thus, when considering total cost of misclassification in IDS, it is more reasonable to assign heavier weights on FNE rather than FPE. Therefore, we designed our proposed intrusion detection model to optimize the classification threshold in order to minimize the total misclassification cost. In this case, conventional SVM cannot be applied because it is designed to generate discrete output (i.e. a class). To resolve this problem, we used the revised SVM technique proposed by Platt(2000), which is able to generate the probability estimate. To validate the practical applicability of our model, we applied it to the real-world dataset for network intrusion detection. The experimental dataset was collected from the IDS sensor of an official institution in Korea from January to June 2010. We collected 15,000 log data in total, and selected 1,000 samples from them by using random sampling method. In addition, the SVM model was compared with the logistic regression (LOGIT), decision trees (DT), and ANN to confirm the superiority of the proposed model. LOGIT and DT was experimented using PASW Statistics v18.0, and ANN was experimented using Neuroshell 4.0. For SVM, LIBSVM v2.90-a freeware for training SVM classifier-was used. Empirical results showed that our proposed model based on SVM outperformed all the other comparative models in detecting network intrusions from the accuracy perspective. They also showed that our model reduced the total misclassification cost compared to the ANN-based intrusion detection model. As a result, it is expected that the intrusion detection model proposed in this paper would not only enhance the performance of IDS, but also lead to better management of FNE.

Enhanced Wavelet Transform-based CELP Coder with Band Selection and Selective VQ (대역 선택 구조와 선택적 벡터 양자화를 이용한 개선된 웨이브릿 변화형 CELP 보호화기)

  • Chang, Dong-Il;Cho, Young-Kwon;Ann, Sou-Guil
    • The Journal of the Acoustical Society of Korea
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    • v.14 no.1E
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    • pp.46-55
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    • 1995
  • In this paper, we present a new wavelet transform-based CELP coder, called band selection wavelet transform CELP (BS-WTCELP) operated at 4.8 kbps. The proposed algorithm uses a band selection scheme of frequency bands of wavelet transform and selective vector quantization (VQ). The band selection and selective VQ structure is implemented by using a classified VQ structure. The proposed algorithm has about 0.5-1.0 dB improvement in segmental SNR compared with the conventional CELP that uses the random codebook search, while is has significantly reduced computational and storage complexity. Many experimental results have shown that the proposed algorithm is more suitable for most real-applications than the conventional CELP and wavelet transform CELP.

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Adolescent Suicides in Korea: Predictors and Interventions

  • Choi, Jin-Young;Davis, Mary Ann
    • The Journal of Korean Society for School & Community Health Education
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    • v.10 no.1
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    • pp.61-86
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    • 2009
  • 본 연구는 영문으로 발표된 문헌고찰을 통해 한국의 청소년 자살행동의 예측요인을 종합적으로 이해하고 이과 관련된 정책과 중재프로그램의 동향을 파악하는데 그 목적을 두었다. 이 연구의 목적은 나아가 한국 청소년 자살을 감소시키고 억제하는데 필요한 효과적인 중재방안의 개발에 근거자료로 활용될 수 있다. 본 연구는 주제어 검색을 통해 4대 사회과학 검색엔진을 활용하여 문헌검색을 하였고 Citation Pearl Growing 기법을 적용하여 영문으로 발표된 학술지 게재 논문을 선별하였는데 추가적으로 국회도서관 전자 데이터베이스를 이용하여 최근 청소년 자살에 관한 대표적인 2개의 보고서를 찾아 고찰하였다. 본 문헌고찰은 청소년 자살예방 중재 프로그램 뿐만 아니라 청소년 자살행동에 영향을 주는 요인을 거시적, 미시적 차원으로 논하였다. 청소년 자살행동에 기여하는 거시적 또는 사회적 요인은 국가 경제수준, 대학입시에 대한 학업성취도 스트레스, 그리고 매체 및 인터넷 문화였다. 개인적 또는 미시적 위험요인은 6개의 영역으로 나누어 설명되었다. 일반적 특성, 가족 특성, 학교 환경, 약물 사용, 정신적 장애, 성적 정체성이었다 이 6개 영역의 위험요인들이 서로 조합되면서 청소년에게 자살 의도나 시도가 일어나도록 하는 경향이 높았으며 이중 청소년 자살 예방에 우선적인 3대 요소는 자아정체성 확립, 정신건강 중재서비스의 제공, 거시적 예방 정책의 구조화로 분석되었다. 종합적으로 학교는 정규학교교육과정과 학생 검사를 통해서 일반적인 정신건강교육을 실시하고 위험학생을 선별 하는데 핵심적인 장이다. 따라서 학교를 경유한 위험학생 선별사업과 이에 따른 교육 및 중재 프로그램의 지원이 활성화되는 것이 필요하다.

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Design and Performance Measurement of a Genetic Algorithm-based Group Classification Method : The Case of Bond Rating (유전 알고리듬 기반 집단분류기법의 개발과 성과평가 : 채권등급 평가를 중심으로)

  • Min, Jae-H.;Jeong, Chul-Woo
    • Journal of the Korean Operations Research and Management Science Society
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    • v.32 no.1
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    • pp.61-75
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    • 2007
  • The purpose of this paper is to develop a new group classification method based on genetic algorithm and to com-pare its prediction performance with those of existing methods in the area of bond rating. To serve this purpose, we conduct various experiments with pilot and general models. Specifically, we first conduct experiments employing two pilot models : the one searching for the cluster center of each group and the other one searching for both the cluster center and the attribute weights in order to maximize classification accuracy. The results from the pilot experiments show that the performance of the latter in terms of classification accuracy ratio is higher than that of the former which provides the rationale of searching for both the cluster center of each group and the attribute weights to improve classification accuracy. With this lesson in mind, we design two generalized models employing genetic algorithm : the one is to maximize the classification accuracy and the other one is to minimize the total misclassification cost. We compare the performance of these two models with those of existing statistical and artificial intelligent models such as MDA, ANN, and Decision Tree, and conclude that the genetic algorithm-based group classification method that we propose in this paper significantly outperforms the other methods in respect of classification accuracy ratio as well as misclassification cost.

Comparative Application of Various Machine Learning Techniques for Lithology Predictions (다양한 기계학습 기법의 암상예측 적용성 비교 분석)

  • Jeong, Jina;Park, Eungyu
    • Journal of Soil and Groundwater Environment
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    • v.21 no.3
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    • pp.21-34
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    • 2016
  • In the present study, we applied various machine learning techniques comparatively for prediction of subsurface structures based on multiple secondary information (i.e., well-logging data). The machine learning techniques employed in this study are Naive Bayes classification (NB), artificial neural network (ANN), support vector machine (SVM) and logistic regression classification (LR). As an alternative model, conventional hidden Markov model (HMM) and modified hidden Markov model (mHMM) are used where additional information of transition probability between primary properties is incorporated in the predictions. In the comparisons, 16 boreholes consisted with four different materials are synthesized, which show directional non-stationarity in upward and downward directions. Futhermore, two types of the secondary information that is statistically related to each material are generated. From the comparative analysis with various case studies, the accuracies of the techniques become degenerated with inclusion of additive errors and small amount of the training data. For HMM predictions, the conventional HMM shows the similar accuracies with the models that does not relies on transition probability. However, the mHMM consistently shows the highest prediction accuracy among the test cases, which can be attributed to the consideration of geological nature in the training of the model.

A Study on Prediction of Attendance in Korean Baseball League Using Artificial Neural Network (인경신경망을 이용한 한국프로야구 관중 수요 예측에 관한 연구)

  • Park, Jinuk;Park, Sanghyun
    • KIPS Transactions on Software and Data Engineering
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    • v.6 no.12
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    • pp.565-572
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    • 2017
  • Traditional method for time series analysis, autoregressive integrated moving average (ARIMA) allows to mine significant patterns from the past observations using autocorrelation and to forecast future sequences. However, Korean baseball games do not have regular intervals to analyze relationship among the past attendance observations. To address this issue, we propose artificial neural network (ANN) based attendance prediction model using various measures including performance, team characteristics and social influences. We optimized ANNs using grid search to construct optimal model for regression problem. The evaluation shows that the optimal and ensemble model outperform the baseline model, linear regression model.

A Study on the Life Prediction Method using Artificial Neural Network under Creep-Fatigue Interaction (인공 신경망을 이용한 크리프-피로 상호작용시 수명예측기법에 관한 연구)

  • 권영일;김범준;임병수
    • Transactions of the Korean Society of Automotive Engineers
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    • v.9 no.6
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    • pp.135-142
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    • 2001
  • The effect of tensile hold time on the creep-fatigue interaction in AISI 316 stainless steel was investigated. To study the fatigue characteristics of the material, strain controlled low cycle fatigue(LCF) tests were carried out under the continuous triangular waveshape with three different total strain ranges of 1.0%, 1.5% and 2.0%. To study the creep-fatigue interaction, 5min., 10min., and 30min. of tensile hold times were applied to the continuous triangular waveshape with the same three total strain ranges. The creep-fatigue life was found to be the longest when the 5min. tensile hold time was applied and was the shortest when the 30min. tensile hold time was applied. The cause fur the shortest creep-fatigue life under the 30min. tensile hold time is believed to be the effect of the increased creep damage per cycle as the hold time increases. The creep-fatigue life prediction using artificial neural network(ANN) showed closer prediction values to the experimental values than by the modified Coffin-Manson method.

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SVM based Stock Price Forecasting Using Financial Statements (SVM 기반의 재무 정보를 이용한 주가 예측)

  • Heo, Junyoung;Yang, Jin Yong
    • KIISE Transactions on Computing Practices
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    • v.21 no.3
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    • pp.167-172
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    • 2015
  • Machine learning is a technique for training computers to be used in classification or forecasting. Among the various types, support vector machine (SVM) is a fast and reliable machine learning mechanism. In this paper, we evaluate the stock price predictability of SVM based on financial statements, through a fundamental analysis predicting the stock price from the corporate intrinsic values. Corporate financial statements were used as the input for SVM. Based on the results, the rise or drop of the stock was predicted. The SVM results were compared with the forecasts of experts, as well as other machine learning methods such as ANN, decision tree and AdaBoost. SVM showed good predictive power while requiring less execution time than the other machine learning schemes.

A Study on Application of Neural Network using Genetic Algorithm in Container Traffic Prediction (컨테이너물동량 예측에 있어 유전알고리즘을 이용한 인공신경망 적용에 관한 연구)

  • Shin, Chang-Hoon;Park, Soo-Nam;Jeong, Dong-Hun;Jeong, Su-Hyun
    • Proceedings of the Korean Institute of Navigation and Port Research Conference
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    • 2009.10a
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    • pp.187-188
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    • 2009
  • On this study, the artificial neural network, one of the nonlinear forecasting methods, is compared with ARIMA model through performing a forecast of container traffic. The existing studies have been used the rule of thumb in topology design for network which had a great effect on forecasting performance of the artificial neural network. However, this study applied the genetic algorithm, known as the effectively optimal algorithm in the huge and complex sample space, as the alternative.

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An Efficient Pattern Partitioning Method in Multi-dimensional Feature Space (다차원 특징 공간에서의 효울적 패턴 분할 기법)

  • Kim, Jin-Il
    • The Transactions of the Korea Information Processing Society
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    • v.5 no.3
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    • pp.833-841
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    • 1998
  • The ann of this study is 10 propose all eff'tcient mclhod for partition of multi-dimensIOnal feature space into pattern subspace for automated generation of fuzzy rule. The suggested mclhod predicates on sequential subdivision of the fuzzy subspacc. and the size of construc1cd pattern space is variable. Under this procedure, n-dimensional pattern space, after considering the distributional characteristic patterns, is partitioned into two different pattern subspaces. From the two subspaces, the pattern space for further subdivision is chosen; then, this subdivision procedure recursively repeats itself until the stopping condition is fulfilled. The result of this study is applied to 2, 4, 7 band of satellite Landsat TM and satisfac10ry result is acquired.

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