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      다국어 초록 (Multilingual Abstract) kakao i 다국어 번역

      Recent advancement in data gathering technique improves the capability of information collecting, thus allowing the learning process between gathered data patterns and application sub-tasks. A pattern can be associated with multiple labels, demanding multi-label learning capability, resulting in significant attention to multi-label feature selection since it can improve multi-label learning accuracy. However, existing evolutionary multi-label feature selection methods suffer from ineffective search process. In this study, we propose a evolutionary search process for the task of multi-label feature selection problem. The proposed method creates large set of offspring or new feature subsets and then retains the most promising feature subset. Experimental results demonstrate that the proposed method can identify feature subsets giving good multi-label classification accuracy much faster than conventional methods.
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      Recent advancement in data gathering technique improves the capability of information collecting, thus allowing the learning process between gathered data patterns and application sub-tasks. A pattern can be associated with multiple labels, demanding ...

      Recent advancement in data gathering technique improves the capability of information collecting, thus allowing the learning process between gathered data patterns and application sub-tasks. A pattern can be associated with multiple labels, demanding multi-label learning capability, resulting in significant attention to multi-label feature selection since it can improve multi-label learning accuracy. However, existing evolutionary multi-label feature selection methods suffer from ineffective search process. In this study, we propose a evolutionary search process for the task of multi-label feature selection problem. The proposed method creates large set of offspring or new feature subsets and then retains the most promising feature subset. Experimental results demonstrate that the proposed method can identify feature subsets giving good multi-label classification accuracy much faster than conventional methods.

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      참고문헌 (Reference)

      1 박종범, "인공지능 포커게임수행엔진 개발" 한국컴퓨터정보학회 14 (14): 41-52, 2009

      2 Demsar, J., "Statistical comparisons of classifier over multiple data sets" 7 : 1-30, 2006

      3 Read, J, "Scalable multi-output label prediction: From classifier chains to classifier trellises" 48 : 2096-2109, 2012

      4 Read, J, "Scalable and efficient multi-label classification for evolving data streams" 88 : 243-272,

      5 Jaesung Lee, "SCLS: Multi-label feature selection based on scalable criterion for large label set" Elsevier BV 66 : 342-352, 2017

      6 Adam Lipowski, "Roulette-wheel selection via stochastic acceptance" Elsevier BV 391 (391): 2193-2196, 2012

      7 Michiru Nishita, "Ror2 signaling regulates Golgi structure and transport through IFT20 for tumor invasiveness" Springer Nature 7 (7): 2017

      8 Hassan Ghasemzadeh, "Power-Aware Computing in Wearable Sensor Networks: An Optimal Feature Selection" Institute of Electrical and Electronics Engineers (IEEE) 14 (14): 800-812, 2015

      9 Baluja, S., "Population-based incremental learning. a method for integrating genetic search based function optimization and competitive learning" Carnegie-Mellon Univ Pittsburgh Pa Dept Of Computer Science 1994

      10 Dan Li, "Optimal Sensor Configuration and Feature Selection for AHU Fault Detection and Diagnosis" Institute of Electrical and Electronics Engineers (IEEE) 13 (13): 1369-1380, 2017

      1 박종범, "인공지능 포커게임수행엔진 개발" 한국컴퓨터정보학회 14 (14): 41-52, 2009

      2 Demsar, J., "Statistical comparisons of classifier over multiple data sets" 7 : 1-30, 2006

      3 Read, J, "Scalable multi-output label prediction: From classifier chains to classifier trellises" 48 : 2096-2109, 2012

      4 Read, J, "Scalable and efficient multi-label classification for evolving data streams" 88 : 243-272,

      5 Jaesung Lee, "SCLS: Multi-label feature selection based on scalable criterion for large label set" Elsevier BV 66 : 342-352, 2017

      6 Adam Lipowski, "Roulette-wheel selection via stochastic acceptance" Elsevier BV 391 (391): 2193-2196, 2012

      7 Michiru Nishita, "Ror2 signaling regulates Golgi structure and transport through IFT20 for tumor invasiveness" Springer Nature 7 (7): 2017

      8 Hassan Ghasemzadeh, "Power-Aware Computing in Wearable Sensor Networks: An Optimal Feature Selection" Institute of Electrical and Electronics Engineers (IEEE) 14 (14): 800-812, 2015

      9 Baluja, S., "Population-based incremental learning. a method for integrating genetic search based function optimization and competitive learning" Carnegie-Mellon Univ Pittsburgh Pa Dept Of Computer Science 1994

      10 Dan Li, "Optimal Sensor Configuration and Feature Selection for AHU Fault Detection and Diagnosis" Institute of Electrical and Electronics Engineers (IEEE) 13 (13): 1369-1380, 2017

      11 Wang, Tinghuai, "Multi-label propagation for coherent video segmentation and artistic stylization" 3005-3008, 2010

      12 Sousa, R., "Multi-label classification from high-speed data streams with adaptive model rules and random rules" 1-11, 2018

      13 Kumar, R, "Multi-label Learning for Activity Recognition" IEEE 152-155, 2015

      14 Persing, Isaac, "Modeling thesis clarity in student essays" 1 : 260-269, 2013

      15 Lee, J., "Memetic feature selection algorithm for multi-label classification" 80-96, 2015

      16 Cano, A, "LAIM discretization for multi-label data" 370-384, 2016

      17 Min-Ling Zhang, "Feature selection for multi-label naive Bayes classification" Elsevier BV 179 (179): 3218-3229, 2009

      18 Jaesung Lee, "Feature selection for multi-label classification using multivariate mutual information" Elsevier BV 34 (34): 349-357, 2013

      19 Ke Yan, "Feature selection and analysis on correlated gas sensor data with recursive feature elimination" Elsevier BV 212 : 353-363, 2015

      20 Piyush Gupta, "Feature Selection and Activity Recognition System Using a Single Triaxial Accelerometer" Institute of Electrical and Electronics Engineers (IEEE) 61 (61): 1780-1786, 2014

      21 Lee, J, "Effective Evolutionary Multilabel Feature Selection under a Budget Constraint" 1-14, 2018

      22 J. Lee, "Approximating mutual information for multi-label feature selection" Institution of Engineering and Technology (IET) 48 (48): 929-, 2012

      23 Aimin Zhou, "An Estimation of Distribution Algorithm With Cheap and Expensive Local Search Methods" Institute of Electrical and Electronics Engineers (IEEE) 19 (19): 807-822, 2015

      24 Alhamoud, A, "Activity recognition in multi-user environments using techniques of multi-label classification" ACM 15-23, 2016

      25 Martin Pelikan, "A survey of optimization by building and using probabilistic models" Springer Nature 21 (21): 5-20, 2002

      26 Read, J., "A pruned problem transformation method for multi-label classification" 143-150, 2008

      27 Perez, M, "A population-based incremental learning approach to microarray gene expression feature selection" 000010-000014, 2010

      28 Yin, J, "A multi-label feature selection algorithm based on multi-objective optimization" IEEE 1-7, 2015

      29 Bing Xue, "A Survey on Evolutionary Computation Approaches to Feature Selection" Institute of Electrical and Electronics Engineers (IEEE) 20 (20): 606-626, 2016

      30 Spolaor, N, "A Comparison of Multi-label Feature Selection Methods using the Problem Transformation Approach" 135-151, 2013

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      학술지 이력

      학술지 이력
      연월일 이력구분 이력상세 등재구분
      2026 평가 재인증평가 신청대상 (재인증)
      2020-01-01 등재 등재학술지 유지 (재인증) KCI등재
      2017-01-01 등재 등재학술지 유지 (계속평가) KCI등재
      2013-01-01 등재 등재학술지 유지 (등재유지) KCI등재
      2010-01-01 등재 등재학술지 유지 (등재유지) KCI등재
      2007-01-01 등재 등재학술지 선정 (등재후보2차) KCI등재
      2006-01-01 등재 등재후보 1차 PASS (등재후보1차) KCI등재후보
      2004-07-01 등재 등재후보학술지 선정 (신규평가) KCI등재후보
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      학술지 인용정보

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      기준연도 WOS-KCI 통합IF(2년) KCIF(2년) KCIF(3년)
      2016 0.44 0.44 0.44
      KCIF(4년) KCIF(5년) 중심성지수(3년) 즉시성지수
      0.43 0.38 0.58 0.15
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