• Title/Summary/Keyword: 백 오브 워즈

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Discrimination System for Abusive Comments using Machine Learning (기계 학습을 이용한 악성 댓글 판별 시스템)

  • Shin, Hyo-jeong;Choi, So-Woon;Lee, Kyung-ho;Lee, Kong-Joo
    • Annual Conference on Human and Language Technology
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    • 2015.10a
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    • pp.178-180
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    • 2015
  • 본 논문에서는 기계 학습(Machine Learning)을 이용하여 댓글의 악성 여부를 분류하는 시스템에 대해 설명한다. 댓글은 문장의 길이가 짧고 맞춤법이 잘 되어있지 않는 특성을 가지고 있다. 따라서 댓글 분석을 위해 형태소 분석 결과와 문자단위 Bi-gram, Tri-gram을 자질로 이용한다. 전처리 된 댓글에서 각 자질 추출 방법에 따라 자질을 추출한다. 추출된 자질을 이용하여 기계학습 알고리즘의 모델을 학습하고 댓글의 악성 여부 분류에 활용한다. 본 논문에서는 댓글의 악성 여부 판별을 위한 자질 추출방법을 제안하고 실험을 통해 이에 대한 효용성을 검증하였다.

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Fast Object Classification Using Texture and Color Information for Video Surveillance Applications (비디오 감시 응용을 위한 텍스쳐와 컬러 정보를 이용한 고속 물체 인식)

  • Islam, Mohammad Khairul;Jahan, Farah;Min, Jae-Hong;Baek, Joong-Hwan
    • Journal of Advanced Navigation Technology
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    • v.15 no.1
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    • pp.140-146
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    • 2011
  • In this paper, we propose a fast object classification method based on texture and color information for video surveillance. We take the advantage of local patches by extracting SURF and color histogram from images. SURF gives intensity content information and color information strengthens distinctiveness by providing links to patch content. We achieve the advantages of fast computation of SURF as well as color cues of objects. We use Bag of Word models to generate global descriptors of a region of interest (ROI) or an image using the local features, and Na$\ddot{i}$ve Bayes model for classifying the global descriptor. In this paper, we also investigate discriminative descriptor named Scale Invariant Feature Transform (SIFT). Our experiment result for 4 classes of the objects shows 95.75% of classification rate.

Exploring Feature Selection Methods for Effective Emotion Mining (효과적 이모션마이닝을 위한 속성선택 방법에 관한 연구)

  • Eo, Kyun Sun;Lee, Kun Chang
    • Journal of Digital Convergence
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    • v.17 no.3
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    • pp.107-117
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    • 2019
  • In the era of SNS, many people relies on it to express their emotions about various kinds of products and services. Therefore, for the companies eagerly seeking to investigate how their products and services are perceived in the market, emotion mining tasks using dataset from SNSs become important much more than ever. Basically, emotion mining is a branch of sentiment analysis which is based on BOW (bag-of-words) and TF-IDF. However, there are few studies on the emotion mining which adopt feature selection (FS) methods to look for optimal set of features ensuring better results. In this sense, this study aims to propose FS methods to conduct emotion mining tasks more effectively with better outcomes. This study uses Twitter and SemEval2007 dataset for the sake of emotion mining experiments. We applied three FS methods such as CFS (Correlation based FS), IG (Information Gain), and ReliefF. Emotion mining results were obtained from applying the selected features to nine classifiers. When applying DT (decision tree) to Tweet dataset, accuracy increases with CFS, IG, and ReliefF methods. When applying LR (logistic regression) to SemEval2007 dataset, accuracy increases with ReliefF method.