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Deciphering monetary policy with text mining : applying automated polarity classification approach

이영준 2019년
논문상세정보
' Deciphering monetary policy with text mining : applying automated polarity classification approach' 의 주제별 논문영향력
논문영향력 선정 방법
논문영향력 요약
주제
  • centralbanking
  • monetary policy
  • sentiment analysis
  • text-mining
  • 감성분석
  • 중앙은행
  • 텍스트 마이닝
  • 통화정책
동일주제 총논문수 논문피인용 총횟수 주제별 논문영향력의 평균
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' Deciphering monetary policy with text mining : applying automated polarity classification approach' 의 참고문헌

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