• 제목/요약/키워드: Naive bayes

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Ensemble learning of Regional Experts (지역 전문가의 앙상블 학습)

  • Lee, Byung-Woo;Yang, Ji-Hoon;Kim, Seon-Ho
    • Journal of KIISE:Computing Practices and Letters
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    • v.15 no.2
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    • pp.135-139
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    • 2009
  • We present a new ensemble learning method that employs the set of region experts, each of which learns to handle a subset of the training data. We split the training data and generate experts for different regions in the feature space. When classifying a data, we apply a weighted voting among the experts that include the data in their region. We used ten datasets to compare the performance of our new ensemble method with that of single classifiers as well as other ensemble methods such as Bagging and Adaboost. We used SMO, Naive Bayes and C4.5 as base learning algorithms. As a result, we found that the performance of our method is comparable to that of Adaboost and Bagging when the base learner is C4.5. In the remaining cases, our method outperformed the benchmark methods.

Assessing the Relationship between MBTI User Personality and Smartphone Usage (스마트폰 사용과 MBTI 사용자 특성간의 관계 평가)

  • Rajashree, Sokasane S.;Kim, Kyungbaek
    • The Journal of Bigdata
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    • v.1 no.1
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    • pp.33-39
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    • 2016
  • Recently, predicting personality with the help of smartphone usage becomes very interesting and attention grabbing topic in the field of research. At present there are some approaches towards detecting a user's personality which uses the smartphones usage data, such as call detail records (CDRs), the usage of short message services (SMSs) and the usage of social networking services application. In this paper, we focus on the assessing the correlation between MBTI based user personality and the smartphone usage data. We used $Na{\ddot{i}}ve$ Bayes and SVM classifier for classifying user personalities by extracting some features from smartphone usage data. From analysis it is observed that, among all extracted features facebook usage log working as the best feature for classification of introverts and extraverts; and SVM classifier works well as compared to $Na{\ddot{i}}ve$ Bayes.

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Personalized Activity Recognizer and Logger in Smart Phone Environment (스마트폰 환경에서 개인화된 행위 인식기 및 로거)

  • Cho, Geumhwan;Han, Manhyung;Lee, Ho Sung;Lee, Sungyoung
    • Proceedings of the Korean Society of Computer Information Conference
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    • 2012.07a
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    • pp.65-68
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    • 2012
  • 본 논문에서는 최근 활발히 연구가 진행되고 있는 행위인식 연구 분야 중에서 스마트폰 환경에서의 개인화된 행위 인식기 및 로거를 제안한다. 최근 스마트폰의 보급이 활발해지면서 행위 인식 연구 분야에서 스마트폰을 이용하는 연구가 활발히 진행되고 있다. 그러나 스마트폰에서는 센서를 이용하여 행위정보를 수집하고, 서버에서 는 분류 및 처리하는 방식으로 실시간 인식과 개발자에 의한 트레이닝으로 인해 개인화된 트레이닝이 불가능하다는 단점이 있다. 이러한 단점을 극복하고자 Naive Bayes Classifier를 사용하여 스마트폰 환경에서 실시간으로 사용자 행위 수집이 가능하고 행위정보의 분류 및 처리가 가능한 경량화 및 개인화된 행위 인식기 및 로거의 구현을 목적으로 한다. 제안하는 방법은 행위 인식기를 통해 행위 인식이 가능할 뿐만 아니라 로거를 통해 사용자의 라이프로그, 라이프패턴 등의 연구 분야에 이용이 가능하다.

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Algorithms for Classifying the Results at the Baccalaureate Exam-Comparative Analysis of Performances

  • Marcu, Daniela;Danubianu, Mirela;Barila, Adina;Simionescu, Corina
    • International Journal of Computer Science & Network Security
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    • v.21 no.8
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    • pp.35-42
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    • 2021
  • In the current context of digitalization of education, the use of modern methods and techniques of data analysis and processing in order to improve students' school results has a very important role. In our paper, we aimed to perform a comparative study of the classification performances of AdaBoost, SVM, Naive Bayes, Neural Network and kNN algorithms to classify the results obtained at the Baccalaureate by students from a college in Suceava, during 2012-2019. To evaluate the results we used the metrics: AUC, CA, F1, Precision and Recall. The AdaBoost algorithm achieves incredible performance for classifying the results into two categories: promoted / rejected. Next in terms of performance is Naive Bayes with a score of 0.999 for the AUC metric. The Neural Network and kNN algorithms obtain scores of 0.998 and 0.996 for AUC, respectively. SVM shows poorer performance with the score 0.987 for AUC. With the help of the HeatMap and DataTable visualization tools we identified possible correlations between classification results and some characteristics of data.

Comparative Evaluation of Machine Learning Models for Predicting Soccer Injury Types

  • Davronbek Malikov;Jaeho Kim;Jung Kyu Park
    • Journal of the Korean Society of Industry Convergence
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    • v.27 no.2_1
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    • pp.257-268
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    • 2024
  • Soccer is type of sport that carries a high risk of injury. Injury is not only cause in the unlucky soccer carrier and also team performance as well as financial effects can be worse since soccer is a team-based game. The duration of recovery from a soccer injury typically relies on its type and severity. Therefore, we conduct this research in order to predict the probability of players injury type using machine learning technologies in this paper. Furthermore, we compare different machine learning models to find the best fit model. This paper utilizes various supervised classification machine learning models, including Decision Tree, Random Forest, K-Nearest Neighbors (KNN), and Naive Bayes. Moreover, based on our finding the KNN and Decision models achieved the highest accuracy rates at 70%, surpassing other models. The Random Forest model followed closely with an accuracy score of 62%. Among the evaluated models, the Naive Bayes model demonstrated the lowest accuracy at 56%. We gathered information about 54 professional soccer players who are playing in the top five European leagues based on their career history. We gathered information about 54 professional soccer players who are playing in the top five European leagues based on their career history.

A Method for Spam Message Filtering Based on Lifelong Machine Learning (Lifelong Machine Learning 기반 스팸 메시지 필터링 방법)

  • Ahn, Yeon-Sun;Jeong, Ok-Ran
    • Journal of IKEEE
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    • v.23 no.4
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    • pp.1393-1399
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    • 2019
  • With the rapid growth of the Internet, millions of indiscriminate advertising SMS are sent every day because of the convenience of sending and receiving data. Although we still use methods to block spam words manually, we have been actively researching how to filter spam in a various ways as machine learning emerged. However, spam words and patterns are constantly changing to avoid being filtered, so existing machine learning mechanisms cannot detect or adapt to new words and patterns. Recently, the concept of Lifelong Learning emerged to overcome these limitations, using existing knowledge to keep learning new knowledge continuously. In this paper, we propose a method of spam filtering system using ensemble techniques of naive bayesian which is most commonly used in document classification and LLML(Lifelong Machine Learning). We validate the performance of lifelong learning by applying the model ELLA and the Naive Bayes most commonly used in existing spam filters.

Prediction of Citizens' Emotions on Home Mortgage Rates Using Machine Learning Algorithms (기계학습 알고리즘을 이용한 주택 모기지 금리에 대한 시민들의 감정예측)

  • Kim, Yun-Ki
    • Journal of Cadastre & Land InformatiX
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    • v.49 no.1
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    • pp.65-84
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    • 2019
  • This study attempted to predict citizens' emotions regarding mortgage rates using machine learning algorithms. To accomplish the research purpose, I reviewed the related literature and then set up two research questions. To find the answers to the research questions, I classified emotions according to Akman's classification and then predicted citizens' emotions on mortgage rates using six machine learning algorithms. The results showed that AdaBoost was the best classifier in all evaluation categories. However, the performance level of Naive Bayes was found to be lower than those of other classifiers. Also, this study conducted a ROC analysis to identify which classifier predicts each emotion category well. The results demonstrated that AdaBoost was the best predictor of the residents' emotions on home mortgage rates in all emotion categories. However, in the sadness class, the performance levels of the six algorithms used in this study were much lower than those in the other emotion categories.

International Patent Classificaton Using Latent Semantic Indexing (잠재 의미 색인 기법을 이용한 국제 특허 분류)

  • Jin, Hoon-Tae
    • Proceedings of the Korea Information Processing Society Conference
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    • 2013.11a
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    • pp.1294-1297
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    • 2013
  • 본 논문은 기계학습을 통하여 특허문서를 국제 특허 분류(IPC) 기준에 따라 자동으로 분류하는 시스템에 관한 연구로 잠재 의미 색인 기법을 이용하여 분류의 성능을 높일 수 있는 방법을 제안하기 위한 연구이다. 종래 특허문서에 관한 IPC 자동 분류에 관한 연구가 단어 매칭 방식의 색인 기법에 의존해서 이루어진바가 있으나, 현대 기술용어의 발생 속도와 다양성 등을 고려할 때 특허문서들 간의 관련성을 분석하는데 있어서는 단어 자체의 빈도 보다는 용어의 개념에 의한 접근이 보다 효과적일 것이라 판단하여 잠재 의미 색인(LSI) 기법에 의한 분류에 관한 연구를 하게 된 것이다. 실험은 단어 매칭 방식의 색인 기법의 대표적인 자질선택 방법인 정보획득량(IG)과 카이제곱 통계량(CHI)을 이용했을 때의 성능과 잠재 의미 색인 방법을 이용했을 때의 성능을 SVM, kNN 및 Naive Bayes 분류기를 사용하여 분석하고, 그중 가장 성능이 우수하게 나오는 SVM을 사용하여 잠재 의미 색인에서 명사가 해당 용어의 개념적 의미 구조를 구축하는데 기여하는 정도가 어느 정도인지 평가함과 아울러, LSI 기법 이용시 최적의 성능을 나타내는 특이값의 범위를 실험을 통해 비교 분석 하였다. 분석결과 LSI 기법이 단어 매칭 기법(IG, CHI)에 비해 우수한 성능을 보였으며, SVM, Naive Bayes 분류기는 단어 매칭 기법에서는 비슷한 수준을 보였으나, LSI 기법에서는 SVM의 성능이 월등이 우수한 것으로 나왔다. 또한, SVM은 LSI 기법에서 약 3%의 성능 향상을 보였지만 Naive Bayes는 오히려 20%의 성능 저하를 보였다. LSI 기법에서 명사가 잠재적 의미 구조에 미치는 영향은 모든 단어들을 내용어로 한 경우 보다 약 10% 더 향상된 결과를 보여주었고, 특이값의 범위에 따른 성능 분석에 있어서는 30% 수준에 Rank 되는 범위에서 가장 높은 성능의 결과가 나왔다.

Study on Anomaly Detection Method of Improper Foods using Import Food Big data (수입식품 빅데이터를 이용한 부적합식품 탐지 시스템에 관한 연구)

  • Cho, Sanggoo;Choi, Gyunghyun
    • The Journal of Bigdata
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    • v.3 no.2
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    • pp.19-33
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    • 2018
  • Owing to the increase of FTA, food trade, and versatile preferences of consumers, food import has increased at tremendous rate every year. While the inspection check of imported food accounts for about 20% of the total food import, the budget and manpower necessary for the government's import inspection control is reaching its limit. The sudden import food accidents can cause enormous social and economic losses. Therefore, predictive system to forecast the compliance of food import with its preemptive measures will greatly improve the efficiency and effectiveness of import safety control management. There has already been a huge data accumulated from the past. The processed foods account for 75% of the total food import in the import food sector. The analysis of big data and the application of analytical techniques are also used to extract meaningful information from a large amount of data. Unfortunately, not many studies have been done regarding analyzing the import food and its implication with understanding the big data of food import. In this context, this study applied a variety of classification algorithms in the field of machine learning and suggested a data preprocessing method through the generation of new derivative variables to improve the accuracy of the model. In addition, the present study compared the performance of the predictive classification algorithms with the general base classifier. The Gaussian Naïve Bayes prediction model among various base classifiers showed the best performance to detect and predict the nonconformity of imported food. In the future, it is expected that the application of the abnormality detection model using the Gaussian Naïve Bayes. The predictive model will reduce the burdens of the inspection of import food and increase the non-conformity rate, which will have a great effect on the efficiency of the food import safety control and the speed of import customs clearance.

Traffic Classification Using Machine Learning Algorithms in Practical Network Monitoring Environments (실제 네트워크 모니터링 환경에서의 ML 알고리즘을 이용한 트래픽 분류)

  • Jung, Kwang-Bon;Choi, Mi-Jung;Kim, Myung-Sup;Won, Young-J.;Hong, James W.
    • The Journal of Korean Institute of Communications and Information Sciences
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    • v.33 no.8B
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    • pp.707-718
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    • 2008
  • The methodology of classifying traffics is changing from payload based or port based to machine learning based in order to overcome the dynamic changes of application's characteristics. However, current state of traffic classification using machine learning (ML) algorithms is ongoing under the offline environment. Specifically, most of the current works provide results of traffic classification using cross validation as a test method. Also, they show classification results based on traffic flows. However, these traffic classification results are not useful for practical environments of the network traffic monitoring. This paper compares the classification results using cross validation with those of using split validation as the test method. Also, this paper compares the classification results based on flow to those based on bytes. We classify network traffics by using various feature sets and machine learning algorithms such as J48, REPTree, RBFNetwork, Multilayer perceptron, BayesNet, and NaiveBayes. In this paper, we find the best feature sets and the best ML algorithm for classifying traffics using the split validation.