• Title/Summary/Keyword: active bagging

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Named Entity Recognition Using Distant Supervision and Active Bagging (원거리 감독과 능동 배깅을 이용한 개체명 인식)

  • Lee, Seong-hee;Song, Yeong-kil;Kim, Hark-soo
    • Journal of KIISE
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    • v.43 no.2
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    • pp.269-274
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    • 2016
  • Named entity recognition is a process which extracts named entities in sentences and determines categories of the named entities. Previous studies on named entity recognition have primarily been used for supervised learning. For supervised learning, a large training corpus manually annotated with named entity categories is needed, and it is a time-consuming and labor-intensive job to manually construct a large training corpus. We propose a semi-supervised learning method to minimize the cost needed for training corpus construction and to rapidly enhance the performance of named entity recognition. The proposed method uses distance supervision for the construction of the initial training corpus. It can then effectively remove noise sentences in the initial training corpus through the use of an active bagging method, an ensemble method of bagging and active learning. In the experiments, the proposed method improved the F1-score of named entity recognition from 67.36% to 76.42% after active bagging for 15 times.

Ensemble Learning for Underwater Target Classification (수중 표적 식별을 위한 앙상블 학습)

  • Seok, Jongwon
    • Journal of Korea Multimedia Society
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    • v.18 no.11
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    • pp.1261-1267
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    • 2015
  • The problem of underwater target detection and classification has been attracted a substantial amount of attention and studied from many researchers for both military and non-military purposes. The difficulty is complicate due to various environmental conditions. In this paper, we study classifier ensemble methods for active sonar target classification to improve the classification performance. In general, classifier ensemble method is useful for classifiers whose variances relatively large such as decision trees and neural networks. Bagging, Random selection samples, Random subspace and Rotation forest are selected as classifier ensemble methods. Using the four ensemble methods based on 31 neural network classifiers, the classification tests were carried out and performances were compared.