• 제목/요약/키워드: boosting_based classifier

검색결과 43건 처리시간 0.025초

A Multi-Level Integrator with Programming Based Boosting for Person Authentication Using Different Biometrics

  • Kundu, Sumana;Sarker, Goutam
    • Journal of Information Processing Systems
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    • 제14권5호
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    • pp.1114-1135
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    • 2018
  • A multiple classification system based on a new boosting technique has been approached utilizing different biometric traits, that is, color face, iris and eye along with fingerprints of right and left hands, handwriting, palm-print, gait (silhouettes) and wrist-vein for person authentication. The images of different biometric traits were taken from different standard databases such as FEI, UTIRIS, CASIA, IAM and CIE. This system is comprised of three different super-classifiers to individually perform person identification. The individual classifiers corresponding to each super-classifier in their turn identify different biometric features and their conclusions are integrated together in their respective super-classifiers. The decisions from individual super-classifiers are integrated together through a mega-super-classifier to perform the final conclusion using programming based boosting. The mega-super-classifier system using different super-classifiers in a compact form is more reliable than single classifier or even single super-classifier system. The system has been evaluated with accuracy, precision, recall and F-score metrics through holdout method and confusion matrix for each of the single classifiers, super-classifiers and finally the mega-super-classifier. The different performance evaluations are appreciable. Also the learning and the recognition time is fairly reasonable. Thereby making the system is efficient and effective.

머신러닝을 이용한 권한 기반 안드로이드 악성코드 탐지 (Android Malware Detection Using Permission-Based Machine Learning Approach)

  • 강성은;응웬부렁;정수환
    • 정보보호학회논문지
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    • 제28권3호
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    • pp.617-623
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    • 2018
  • 본 연구는 안드로이드 정적분석을 기반으로 추출된 AndroidManifest 권한 특징을 통해 악성코드를 탐지하고자 한다. 특징들은 AndroidManifest의 권한을 기반으로 분석에 대한 자원과 시간을 줄였다. 악성코드 탐지 모델은 1500개의 정상어플리케이션과 500개의 악성코드들을 학습한 SVM(support vector machine), NB(Naive Bayes), GBC(Gradient Boosting Classifier), Logistic Regression 모델로 구성하여 98%의 탐지율을 기록했다. 또한, 악성앱 패밀리 식별은 알고리즘 SVM과 GPC (Gaussian Process Classifier), GBC를 이용하여 multi-classifiers모델을 구현하였다. 학습된 패밀리 식별 머신러닝 모델은 악성코드패밀리를 92% 분류했다.

A Simple Speech/Non-speech Classifier Using Adaptive Boosting

  • Kwon, Oh-Wook;Lee, Te-Won
    • The Journal of the Acoustical Society of Korea
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    • 제22권3E호
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    • pp.124-132
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    • 2003
  • We propose a new method for speech/non-speech classifiers based on concepts of the adaptive boosting (AdaBoost) algorithm in order to detect speech for robust speech recognition. The method uses a combination of simple base classifiers through the AdaBoost algorithm and a set of optimized speech features combined with spectral subtraction. The key benefits of this method are the simple implementation, low computational complexity and the avoidance of the over-fitting problem. We checked the validity of the method by comparing its performance with the speech/non-speech classifier used in a standard voice activity detector. For speech recognition purpose, additional performance improvements were achieved by the adoption of new features including speech band energies and MFCC-based spectral distortion. For the same false alarm rate, the method reduced 20-50% of miss errors.

HOG 특징 및 영상분할을 이용한 부스팅분류 기반 자동차 검출 기법 (Vehicle Detection Scheme Based on a Boosting Classifier with Histogram of Oriented Gradient (HOG) Features and Image Segmentation])

  • 최미순;이정환;노태문;심재창
    • 한국정보과학회논문지:컴퓨팅의 실제 및 레터
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    • 제16권10호
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    • pp.955-961
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    • 2010
  • 본 논문에서는 HOG 특정벡터와 영상분할을 이용한 부스팅 분류기반의 자동차영역 검출 알고리즘의 연구에 대해서 기술한다. 입력된 영상으로부터 차량을 검출하기위해 먼저 분할 후 합병(split-merge) 방법을 적용하여 영상을 분할한다. 그리고 가장 큰 두 영역을 검색 영역에서 제외하여 처리 속도를 향상 시킨다. 각 영역에 대해 HOG(histogram of oriented gradient) 특정을 추출한다. 분류기는 두 개의 모집단을 분류하는데 많이 사용되고 있는 AdaBoost 방법을 사용한다. 제안방법의 성능 평가를 위해 537개의 영상을 사용하여 분류기를 학습하였으며, 또한 학습에 사용하지 않은 비학습영상 500개를 사용하여 인식률을 구하였다. 실험결과 비학습영상에 대해 98.34%의 인식률을 얻었다. 결론적으로 제안된 방법이 지능형 자동차 제어 시스템에서 차량의 위치를 찾는 방법으로 활용될 수 있다.

Gender Classification of Low-Resolution Facial Image Based on Pixel Classifier Boosting

  • Ban, Kyu-Dae;Kim, Jaehong;Yoon, Hosub
    • ETRI Journal
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    • 제38권2호
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    • pp.347-355
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    • 2016
  • In face examinations, gender classification (GC) is one of several fundamental tasks. Recent literature on GC primarily utilizes datasets containing high-resolution images of faces captured in uncontrolled real-world settings. In contrast, there have been few efforts that focus on utilizing low-resolution images of faces in GC. We propose a GC method based on a pixel classifier boosting with modified census transform features. Experiments are conducted using large datasets, such as Labeled Faces in the Wild and The Images of Groups, and standard protocols of GC communities. Experimental results show that, despite using low-resolution facial images that have a 15-pixel inter-ocular distance, the proposed method records a higher classification rate compared to current state-of-the-art GC algorithms.

IoT Enabled Intelligent System for Radiation Monitoring and Warning Approach using Machine Learning

  • Muhammad Saifullah ;Imran Sarwar Bajwa;Muhammad Ibrahim;Mutyyba Asgher
    • International Journal of Computer Science & Network Security
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    • 제23권5호
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    • pp.135-147
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    • 2023
  • Internet of things has revolutionaries every field of life due to the use of artificial intelligence within Machine Learning. It is successfully being used for the study of Radiation monitoring, prediction of Ultraviolet and Electromagnetic rays. However, there is no particular system available that can monitor and detect waves. Therefore, the present study designed in which IOT enables intelligence system based on machine learning was developed for the prediction of the radiation and their effects of human beings. Moreover, a sensor based system was installed in order to detect harmful radiation present in the environment and this system has the ability to alert the humans within the range of danger zone with a buzz, so that humans can move to a safer place. Along with this automatic sensor system; a self-created dataset was also created in which sensor values were recorded. Furthermore, in order to study the outcomes of the effect of these rays researchers used Support Vector Machine, Gaussian Naïve Bayes, Decision Trees, Extra Trees, Bagging Classifier, Random Forests, Logistic Regression and Adaptive Boosting Classifier were used. To sum up the whole discussion it is stated the results give high accuracy and prove that the proposed system is reliable and accurate for the detection and monitoring of waves. Furthermore, for the prediction of outcome, Adaptive Boosting Classifier has shown the best accuracy of 81.77% as compared with other classifiers.

A Comparative Study of Phishing Websites Classification Based on Classifier Ensemble

  • Tama, Bayu Adhi;Rhee, Kyung-Hyune
    • 한국멀티미디어학회논문지
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    • 제21권5호
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    • pp.617-625
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    • 2018
  • Phishing website has become a crucial concern in cyber security applications. It is performed by fraudulently deceiving users with the aim of obtaining their sensitive information such as bank account information, credit card, username, and password. The threat has led to huge losses to online retailers, e-business platform, financial institutions, and to name but a few. One way to build anti-phishing detection mechanism is to construct classification algorithm based on machine learning techniques. The objective of this paper is to compare different classifier ensemble approaches, i.e. random forest, rotation forest, gradient boosted machine, and extreme gradient boosting against single classifiers, i.e. decision tree, classification and regression tree, and credal decision tree in the case of website phishing. Area under ROC curve (AUC) is employed as a performance metric, whilst statistical tests are used as baseline indicator of significance evaluation among classifiers. The paper contributes the existing literature on making a benchmark of classifier ensembles for web phishing detection.

A Comparative Study of Phishing Websites Classification Based on Classifier Ensembles

  • Tama, Bayu Adhi;Rhee, Kyung-Hyune
    • Journal of Multimedia Information System
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    • 제5권2호
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    • pp.99-104
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    • 2018
  • Phishing website has become a crucial concern in cyber security applications. It is performed by fraudulently deceiving users with the aim of obtaining their sensitive information such as bank account information, credit card, username, and password. The threat has led to huge losses to online retailers, e-business platform, financial institutions, and to name but a few. One way to build anti-phishing detection mechanism is to construct classification algorithm based on machine learning techniques. The objective of this paper is to compare different classifier ensemble approaches, i.e. random forest, rotation forest, gradient boosted machine, and extreme gradient boosting against single classifiers, i.e. decision tree, classification and regression tree, and credal decision tree in the case of website phishing. Area under ROC curve (AUC) is employed as a performance metric, whilst statistical tests are used as baseline indicator of significance evaluation among classifiers. The paper contributes the existing literature on making a benchmark of classifier ensembles for web phishing detection.

Word2vec과 앙상블 분류기를 사용한 효율적 한국어 감성 분류 방안 (Effective Korean sentiment classification method using word2vec and ensemble classifier)

  • 박성수;이건창
    • 디지털콘텐츠학회 논문지
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    • 제19권1호
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    • pp.133-140
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    • 2018
  • 감성 분석에서 정확한 감성 분류는 중요한 연구 주제이다. 본 연구는 최근 많은 연구가 이루어지는 word2vec과 앙상블 방법을 이용하여 효과적으로 한국어 리뷰를 감성 분류하는 방법을 제시한다. 연구는 20 만 개의 한국 영화 리뷰 텍스트에 대해, 품사 기반 BOW 자질과 word2vec를 사용한 자질을 생성하고, 두 개의 자질 표현을 결합한 통합 자질을 생성했다. 감성 분류를 위해 Logistic Regression, Decision Tree, Naive Bayes, Support Vector Machine의 단일 분류기와 Adaptive Boost, Bagging, Gradient Boosting, Random Forest의 앙상블 분류기를 사용하였다. 연구 결과로 형용사와 부사를 포함한 BOW자질과 word2vec자질로 구성된 통합 자질 표현이 가장 높은 감성 분류 정확도를 보였다. 실증결과, 단일 분류기인 SVM이 가장 높은 성능을 나타내었지만, 앙상블 분류기는 단일 분류기와 비슷하거나 약간 낮은 성능을 보였다.

쾌삭 303계 스테인리스강 소형 압연 선재 제조 공정의 생산품질 예측 모형 (Quality Prediction Model for Manufacturing Process of Free-Machining 303-series Stainless Steel Small Rolling Wire Rods)

  • 서석준;김흥섭
    • 산업경영시스템학회지
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    • 제44권4호
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    • pp.12-22
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    • 2021
  • This article suggests the machine learning model, i.e., classifier, for predicting the production quality of free-machining 303-series stainless steel(STS303) small rolling wire rods according to the operating condition of the manufacturing process. For the development of the classifier, manufacturing data for 37 operating variables were collected from the manufacturing execution system(MES) of Company S, and the 12 types of derived variables were generated based on literature review and interviews with field experts. This research was performed with data preprocessing, exploratory data analysis, feature selection, machine learning modeling, and the evaluation of alternative models. In the preprocessing stage, missing values and outliers are removed, and oversampling using SMOTE(Synthetic oversampling technique) to resolve data imbalance. Features are selected by variable importance of LASSO(Least absolute shrinkage and selection operator) regression, extreme gradient boosting(XGBoost), and random forest models. Finally, logistic regression, support vector machine(SVM), random forest, and XGBoost are developed as a classifier to predict the adequate or defective products with new operating conditions. The optimal hyper-parameters for each model are investigated by the grid search and random search methods based on k-fold cross-validation. As a result of the experiment, XGBoost showed relatively high predictive performance compared to other models with an accuracy of 0.9929, specificity of 0.9372, F1-score of 0.9963, and logarithmic loss of 0.0209. The classifier developed in this study is expected to improve productivity by enabling effective management of the manufacturing process for the STS303 small rolling wire rods.