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Volumn , Issue , 2011, Pages 475-484

Effective sentiment stream analysis with self-augmenting training and demand-driven projection

Author keywords

Sentiment analysis; Sentiment drift; Streams; Twitter

Indexed keywords

DATA MINING; NATURAL LANGUAGE PROCESSING SYSTEMS; SENTIMENT ANALYSIS; SOCIAL NETWORKING (ONLINE);

EID: 80052131982     PISSN: None     EISSN: None     Source Type: Conference Proceeding    
DOI: 10.1145/2009916.2009981     Document Type: Conference Paper
Times cited : (38)

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* 이 정보는 Elsevier사의 SCOPUS DB에서 KISTI가 분석하여 추출한 것입니다.