• Title/Summary/Keyword: feature optimization

검색결과 371건 처리시간 0.023초

HYPO-CONVERGENCE OF SEQUENCES OF FUZZY SETS AND MAXIMIZATION

  • Tortop, Sukru;Dundar, ErdInC
    • 호남수학학술지
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    • 제44권3호
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    • pp.461-472
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    • 2022
  • In optimization theory, hypo-convergence is considered as an effective tool by providing the convergence of supremum values under some conditions. This feature makes it different from other types of convergence. Therefore, we have defined the hypo-convergence of a sequence of fuzzy sets due to the increasing interest in fuzzy set theory in recent years. After giving a theoretical framework, we deal with the optimization process by using a sequential characterization of hypo-convergence of sequence of fuzzy sets. Since the maximization process in optimization theory is beyond the presence of hypo-convergence, we give some conditions to satisfy the convergence of supremum values. Furthermore, we show how sequence of fuzzy sets and fuzzy numbers differ in the convergence of the supremum values.

특징 선택에서 선택적 평가를 사용하는 개미 군집 최적화의 수렴 특성 (Convergence Characteristics of Ant Colony Optimization with Selective Evaluation in Feature Selection)

  • 이진선;오일석
    • 한국콘텐츠학회논문지
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    • 제11권10호
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    • pp.41-48
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    • 2011
  • 최근 특징 선택에서 개미군집 최적화를 위한 선택적 평가 기법이 제안되었다. 이 기법은 불필요하거나 가능성이 적은 후보 해를 실제 평가 과정에서 제외함으로써 계산량을 줄인다. 실험을 통해 이 기법의 우수성을 보였으나, 하나의 데이터만을 사용하였으므로 통계적으로 충분한 신뢰성을 보여주지 못한다. 이 논문의 목적은 선택적 평가 기법의 수렴 특성을 분석하고 결론의 신뢰성을 높이는 것이다. 실험을 위해 UCI 데이터베이스에서 필기, 의료, 음성에 관련된 세가지 데이터를 선택하였다. 이들의 특징 집합 크기는 256부터 617까지 분포한다. 통계적으로 안정된 데이터를 얻기 위해, 이들 각각에 대해 프로그램을 독립적으로 12번 실행하였다. 긴 시간에 걸친 수렴을 관찰하기 위해, 각각의 프로그램 실행은 72시간 동안 이루어졌다. 실험 데이터의 분석을 바탕으로, 선택적 평가 기법의 우수성에 대한 이유와 이 기법의 적용 범위에 대해 기술한다.

A Novel Network Anomaly Detection Method based on Data Balancing and Recursive Feature Addition

  • Liu, Xinqian;Ren, Jiadong;He, Haitao;Wang, Qian;Sun, Shengting
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제14권7호
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    • pp.3093-3115
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    • 2020
  • Network anomaly detection system plays an essential role in detecting network anomaly and ensuring network security. Anomaly detection system based machine learning has become an increasingly popular solution. However, due to the unbalance and high-dimension characteristics of network traffic, the existing methods unable to achieve the excellent performance of high accuracy and low false alarm rate. To address this problem, a new network anomaly detection method based on data balancing and recursive feature addition is proposed. Firstly, data balancing algorithm based on improved KNN outlier detection is designed to select part respective data on each category. Combination optimization about parameters of improved KNN outlier detection is implemented by genetic algorithm. Next, recursive feature addition algorithm based on correlation analysis is proposed to select effective features, in which a cross contingency test is utilized to analyze correlation and obtain a features subset with a strong correlation. Then, random forests model is as the classification model to detection anomaly. Finally, the proposed algorithm is evaluated on benchmark datasets KDD Cup 1999 and UNSW_NB15. The result illustrates the proposed strategies enhance accuracy and recall, and decrease the false alarm rate. Compared with other algorithms, this algorithm still achieves significant effects, especially recall in the small category.

Feature Selection Using Submodular Approach for Financial Big Data

  • Attigeri, Girija;Manohara Pai, M.M.;Pai, Radhika M.
    • Journal of Information Processing Systems
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    • 제15권6호
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    • pp.1306-1325
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    • 2019
  • As the world is moving towards digitization, data is generated from various sources at a faster rate. It is getting humungous and is termed as big data. The financial sector is one domain which needs to leverage the big data being generated to identify financial risks, fraudulent activities, and so on. The design of predictive models for such financial big data is imperative for maintaining the health of the country's economics. Financial data has many features such as transaction history, repayment data, purchase data, investment data, and so on. The main problem in predictive algorithm is finding the right subset of representative features from which the predictive model can be constructed for a particular task. This paper proposes a correlation-based method using submodular optimization for selecting the optimum number of features and thereby, reducing the dimensions of the data for faster and better prediction. The important proposition is that the optimal feature subset should contain features having high correlation with the class label, but should not correlate with each other in the subset. Experiments are conducted to understand the effect of the various subsets on different classification algorithms for loan data. The IBM Bluemix BigData platform is used for experimentation along with the Spark notebook. The results indicate that the proposed approach achieves considerable accuracy with optimal subsets in significantly less execution time. The algorithm is also compared with the existing feature selection and extraction algorithms.

상호작용을 고려한 최적의 제품휘처형상 도출 방법 (A Method for Deriving an Optimal Product Feature Configuration Considering Feature Interaction)

  • 이관우
    • 한국인터넷방송통신학회논문지
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    • 제14권2호
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    • pp.115-120
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    • 2014
  • 많은 소프트웨어 프로덕트 라인 공학 방법들은 휘처모델을 사용하여 제품들 간의 공통성과 가변성을 휘처 단위로 구조화시키고, 특정 제품 개발을 위해 필요한 휘처 집합인 제품휘처형상을 도출한다. 제품 생산 시에 선택될 휘처는 주로 제품의 요구되는 품질 속성에 의해서 결정된다. 지금까지 발표된 대부분의 방법들은 휘처와 품질속성 간의 선형적 상관관계를 통해 최적의 품질 속성을 만족시킬 수 있는 제품휘처형상을 도출하였다. 하지만, 휘처 간의 상호작용을 고려한다면 휘처와 품질 속성 간의 관계는 비선형식으로 정의될 수 있다. 본 논문에서는 휘처 간의 상호작용을 고려하여 요구되는 품질 속성을 최적으로 만족시킬 수 있는 제품휘처형상 도출 방법을 제안한다. 제안된 방법을 평가하기 위해 네 가지 프로덕트 라인 사례에 대해 실험한다.

솔레노이드 액추에이터의 비선형 동적응답에 대한 구조최적설계 (Structural Optimization for Nonlinear Dynamic Response of Solenoid Actuator)

  • 백석흠;김현수;장득열;이승범;권영석;노의동;이창훈
    • 한국자동차공학회논문집
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    • 제21권1호
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    • pp.113-120
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    • 2013
  • This paper proposes a design optimization approach for core of solenoid actuators by combining optimization techniques with the finite element method (FEM). A solenoid is an important element part which hydraulically controls a transmission system, etc. The demanded feature of the solenoid is that it performs an electromagnetic force output being constant regardless of the stroke and being proportional to coil current. The plunger compresses a spring with a minimum force of 12 N over an 1.7 mm travel. The orthogonal array, analysis of variance (ANOVA) techniques and response surface optimization, are employed to determine the main effects and their optimal design variables. The methodology is demonstrated as a optimization tool for the core design of a solenoid actuator.

Optimal design of a wind turbine supporting system accounting for soil-structure interaction

  • Ali I. Karakas;Ayse T. Daloglua
    • Structural Engineering and Mechanics
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    • 제88권3호
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    • pp.273-285
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    • 2023
  • This study examines how the interaction between soil and a wind turbine's supporting system affects the optimal design. The supporting system resting on an elastic soil foundation consists of a steel conical tower and a concrete circular raft foundation, and it is subjected to wind loads. The material cost of the supporting system is aimed to be minimized employing various metaheuristic optimization algorithms including teaching-learning based optimization (TLBO). To include the influence of the soil in the optimization process, modified Vlasov and Gazetas elastic soil models are integrated into the optimization algorithms using the application programing interface (API) feature of the structural analysis program providing two-way data flow. As far as the optimal designs are considered, the best minimum cost design is achieved for the TLBO algorithm, and the modified Vlasov model makes the design economical compared with the simple Gazetas and infinitely rigid soil models. Especially, the optimum design dimensions of the raft foundation extremely reduce when the Vlasov realistic soil reactions are included in the optimum analysis. Additionally, as the designated design wind speed is decreased, the beneficial impact of soil interaction on the optimum material cost diminishes.

특징점 기반 확률 맵을 이용한 단일 카메라의 위치 추정방법 (Localization of a Monocular Camera using a Feature-based Probabilistic Map)

  • 김형진;이동화;오택준;명현
    • 제어로봇시스템학회논문지
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    • 제21권4호
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    • pp.367-371
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    • 2015
  • In this paper, a novel localization method for a monocular camera is proposed by using a feature-based probabilistic map. The localization of a camera is generally estimated from 3D-to-2D correspondences between a 3D map and an image plane through the PnP algorithm. In the computer vision communities, an accurate 3D map is generated by optimization using a large number of image dataset for camera pose estimation. In robotics communities, a camera pose is estimated by probabilistic approaches with lack of feature. Thus, it needs an extra system because the camera system cannot estimate a full state of the robot pose. Therefore, we propose an accurate localization method for a monocular camera using a probabilistic approach in the case of an insufficient image dataset without any extra system. In our system, features from a probabilistic map are projected into an image plane using linear approximation. By minimizing Mahalanobis distance between the projected features from the probabilistic map and extracted features from a query image, the accurate pose of the monocular camera is estimated from an initial pose obtained by the PnP algorithm. The proposed algorithm is demonstrated through simulations in a 3D space.

Feature Selection for Abnormal Driving Behavior Recognition Based on Variance Distribution of Power Spectral Density

  • Nassuna, Hellen;Kim, Jaehoon;Eyobu, Odongo Steven;Lee, Dongik
    • 대한임베디드공학회논문지
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    • 제15권3호
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    • pp.119-127
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    • 2020
  • The detection and recognition of abnormal driving becomes crucial for achieving safety in Intelligent Transportation Systems (ITS). This paper presents a feature extraction method based on spectral data to train a neural network model for driving behavior recognition. The proposed method uses a two stage signal processing approach to derive time-saving and efficient feature vectors. For the first stage, the feature vector set is obtained by calculating variances from each frequency bin containing the power spectrum data. The feature set is further reduced in the second stage where an intersection method is used to select more significant features that are finally applied for training a neural network model. A stream of live signals are fed to the trained model which recognizes the abnormal driving behaviors. The driving behaviors considered in this study are weaving, sudden braking and normal driving. The effectiveness of the proposed method is demonstrated by comparing with existing methods, which are Particle Swarm Optimization (PSO) and Convolution Neural Network (CNN). The experiments show that the proposed approach achieves satisfactory results with less computational complexity.

특징점 정합 필터 결합 SIFT를 이용한 상대 위치 추정 (Integrated SIFT Algorithm with Feature Point Matching Filter for Relative Position Estimation)

  • 곽민규;성상경;윤석창;원대희;이영재
    • 한국항공우주학회지
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    • 제37권8호
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    • pp.759-766
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    • 2009
  • 본 논문은 INS/vSLAM 통합 항법 시스템의 성능 향상을 위한 기초 연구로써, 비전 센서의 영상처리 성능을 향상을 위한 알고리즘 개발에 목표를 두고 있다. 비전센서의 영상처리알고리즘으로 SIFT 알고리즘을 사용하였으며, SIFT 알고리즘의 특징점 정합 성능을 개선하기 위해 특징점 정합 필터를 적용하였다. 본 논문에서 제안한 알고리즘을 이용하여 기존의 SIFT 알고리즘을 파라미터 조절한 경우보다 향상된 결과를 얻을 수 있었다. 차후 실시간 통합 항법 시스템에 적용하기 위해서 알고리즘의 속도를 향상시키는 작업이 필요하다.