• Title/Summary/Keyword: Fuzzy Support Vector Machine

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Pattern Classification using Fuzzy Suppot Vector machine (퍼지 써포트 벡터 머신을 이용한 패턴 분류)

  • Lee, Sun-Young;Kim, Sung-Soo
    • Proceedings of the KIEE Conference
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    • 2004.07d
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    • pp.2540-2542
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    • 2004
  • 일반적으로 support vector machine (SVM)은 입력 데이터를 두개의 다른 클래스로 구별하는 결정면을 학습을 통하여 구한다. 특히 비분류 문제, 비선형 분류 문제들과 같은 두-클래스 문제를 해결하기 위해 데이터를 고차원의 특정 공간에서 다룬다. 많은 응용분야에서, 각 입력 데이터들은 이 두개의 클래스 중의 하나로 완전히 정의되지 않을 수도 있다. 이러한 문제를 해결하기 위해 우리는 본 논문에서 FSVM(fuzzy support vector machine)을 적용한다. 각 입력 데이터에 퍼지 멤버십(fuzzy membership)을 적용하여 결정면의 학습과정에 입력 데이터들이 다른 기여 (contribution)를 할 수 있게 한다. 본 논문에서는 기준 데이터 집합에 대해 제안된 방법을 실험하고, FSVM이 기존의 SVM보다 더 나음을 보인다.

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Support Vector Machine based Cluster Merging (Support Vector Machines 기반의 클러스터 결합 기법)

  • Choi, Byung-In;Rhee, Frank Chung-Hoon
    • Journal of the Korean Institute of Intelligent Systems
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    • v.14 no.3
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    • pp.369-374
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    • 2004
  • A cluster merging algorithm that merges convex clusters resulted by the Fuzzy Convex Clustering(FCC) method into non-convex clusters was proposed. This was achieved by proposing a fast and reliable distance measure between two convex clusters using Support Vector Machines(SVM) to improve accuracy and speed over other existing conventional methods. In doing so, it was possible to reduce cluster number without losing its representation of the data. In this paper, results for several data sets are given to show the validity of our distance measure and algorithm.

Support Vector Machine based on Stratified Sampling

  • Jun, Sung-Hae
    • International Journal of Fuzzy Logic and Intelligent Systems
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    • v.9 no.2
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    • pp.141-146
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    • 2009
  • Support vector machine is a classification algorithm based on statistical learning theory. It has shown many results with good performances in the data mining fields. But there are some problems in the algorithm. One of the problems is its heavy computing cost. So we have been difficult to use the support vector machine in the dynamic and online systems. To overcome this problem we propose to use stratified sampling of statistical sampling theory. The usage of stratified sampling supports to reduce the size of training data. In our paper, though the size of data is small, the performance accuracy is maintained. We verify our improved performance by experimental results using data sets from UCI machine learning repository.

Switching Regression Analysis via Fuzzy LS-SVM

  • Hwang, Chang-Ha
    • Journal of the Korean Data and Information Science Society
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    • v.17 no.2
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    • pp.609-617
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    • 2006
  • A new fuzzy c-regression algorithm for switching regression analysis is presented, which combines fuzzy c-means clustering and least squares support vector machine. This algorithm can detect outliers in switching regression models while yielding the simultaneous estimates of the associated parameters together with a fuzzy c-partitions of data. It can be employed for the model-free nonlinear regression which does not assume the underlying form of the regression function. We illustrate the new approach with some numerical examples that show how it can be used to fit switching regression models to almost all types of mixed data.

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Audio Segmentation and Classification Using Support Vector Machine and Fuzzy C-Means Clustering Techniques (서포트 벡터 머신과 퍼지 클러스터링 기법을 이용한 오디오 분할 및 분류)

  • Nguyen, Ngoc;Kang, Myeong-Su;Kim, Cheol-Hong;Kim, Jong-Myon
    • The KIPS Transactions:PartB
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    • v.19B no.1
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    • pp.19-26
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    • 2012
  • The rapid increase of information imposes new demands of content management. The purpose of automatic audio segmentation and classification is to meet the rising need for efficient content management. With this reason, this paper proposes a high-accuracy algorithm that segments audio signals and classifies them into different classes such as speech, music, silence, and environment sounds. The proposed algorithm utilizes support vector machine (SVM) to detect audio-cuts, which are boundaries between different kinds of sounds using the parameter sequence. We then extract feature vectors that are composed of statistical data and they are used as an input of fuzzy c-means (FCM) classifier to partition audio-segments into different classes. To evaluate segmentation and classification performance of the proposed SVM-FCM based algorithm, we consider precision and recall rates for segmentation and classification accuracy for classification. Furthermore, we compare the proposed algorithm with other methods including binary and FCM classifiers in terms of segmentation performance. Experimental results show that the proposed algorithm outperforms other methods in both precision and recall rates.

Improvement of Support Vector Clustering using Evolutionary Programming and Bootstrap

  • Jun, Sung-Hae
    • International Journal of Fuzzy Logic and Intelligent Systems
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    • v.8 no.3
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    • pp.196-201
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    • 2008
  • Statistical learning theory has three analytical tools which are support vector machine, support vector regression, and support vector clustering for classification, regression, and clustering respectively. In general, their performances are good because they are constructed by convex optimization. But, there are some problems in the methods. One of the problems is the subjective determination of the parameters for kernel function and regularization by the arts of researchers. Also, the results of the learning machines are depended on the selected parameters. In this paper, we propose an efficient method for objective determination of the parameters of support vector clustering which is the clustering method of statistical learning theory. Using evolutionary algorithm and bootstrap method, we select the parameters of kernel function and regularization constant objectively. To verify improved performances of proposed research, we compare our method with established learning algorithms using the data sets form ucr machine learning repository and synthetic data.

Fuzzy Support Vector Machine for Pattern Classification of Time Series Data of KOSPI200 Index (시계열 자료 코스피200의 패턴분류를 위한 퍼지 서포트 벡타 기계)

  • Lee, S.Y.;Sohn, S.Y.;Kim, C.E.;Lee, Y.B.
    • Journal of the Korean Institute of Intelligent Systems
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    • v.14 no.1
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    • pp.52-56
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    • 2004
  • The Information of classification and estimate about KOSPI200 index`s up and down in the stock market becomes an important standard of decision-making in designing portofolio in futures and option market. Because the coming trend of time series patterns, an economic indicator, is very subordinate to the most recent economic pattern, it is necessary to study the recent patterns most preferentially. This paper compares classification and estimated performance of SVM(Support Vector Machine) and Fuzzy SVM model that are getting into the spotlight in time series analyses, neural net models and various fields. Specially, it proves that Fuzzy SVM is superior by presenting the most suitable dimension to fuzzy membership function that has time series attribute in accordance with learning Data Base.

Age of Face Classification based on Gabor Feature and Fuzzy Support Vector Machines (Gabor 특징과 FSVM 기반의 연령별 얼굴 분류)

  • Lee, Hyun-Jik;Kim, Yoon-Ho;Lee, Joo-Shin
    • Journal of Advanced Navigation Technology
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    • v.16 no.1
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    • pp.151-157
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    • 2012
  • Recently, owing to the technology advances in computer science and image processing, age of face classification have become prevalent topics. It is difficult to estimate age of facial shape with statistical figures because facial shape of the person should change due to not only biological gene but also personal habits. In this paper, we proposed a robust age of face classification method by using Gabor feature and fuzzy support vector machine(SVM). Gabor wavelet function is used for extracting facial feature vector and in order to solve the intrinsic age ambiguity problem, a fuzzy support vector machine(FSVM) is introduced. By utilizing the FSVM age membership functions is defined. Some experiments have conducted to testify the proposed approach and experimental results showed that the proposed method can achieve better age of face classification precision.

Optimized Bankruptcy Prediction through Combining SVM with Fuzzy Theory (퍼지이론과 SVM 결합을 통한 기업부도예측 최적화)

  • Choi, So-Yun;Ahn, Hyun-Chul
    • Journal of Digital Convergence
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    • v.13 no.3
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    • pp.155-165
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    • 2015
  • Bankruptcy prediction has been one of the important research topics in finance since 1960s. In Korea, it has gotten attention from researchers since IMF crisis in 1998. This study aims at proposing a novel model for better bankruptcy prediction by converging three techniques - support vector machine(SVM), fuzzy theory, and genetic algorithm(GA). Our convergence model is basically based on SVM, a classification algorithm enables to predict accurately and to avoid overfitting. It also incorporates fuzzy theory to extend the dimensions of the input variables, and GA to optimize the controlling parameters and feature subset selection. To validate the usefulness of the proposed model, we applied it to H Bank's non-external auditing companies' data. We also experimented six comparative models to validate the superiority of the proposed model. As a result, our model was found to show the best prediction accuracy among the models. Our study is expected to contribute to the relevant literature and practitioners on bankruptcy prediction.

A New Lane Departure Warning System using a Support Vector Machine Classifier and a Fuzzy System

  • Kim, Sam-Yong;Oh, Se-Young
    • 제어로봇시스템학회:학술대회논문집
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    • 2002.10a
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    • pp.110.3-110
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    • 2002
  • $\textbullet$ Lane detection by TFALDA $\textbullet$ SVM for large scale data and multiclass classification problem $\textbullet$ TLC Classification $\textbullet$ Lateral offset estimation by IPT $\textbullet$ Lane departure warning by a fuzzy system $\textbullet$ Experimental results by HiLS $\textbullet$ Conclusion

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