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NTIS 바로가기Journal of the Korean Data & Information Science Society = 한국데이터정보과학회지, v.24 no.5, 2013년, pp.959 - 974
김용대 (서울대학교 통계학과) , 조광현 (농촌진흥청 국립축산과학원)
We investigate the roles of statistics and statisticians in the big data era. Definition and application areas of big data are reviewed and statistical characteristics of big data and their meanings are discussed. Various statistical methodologies applicable to big data analysis are illustrated, and...
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