other,20-3-P05-2008,ak presents preliminary experiments with <term> training data </term> labeled with emoticons , which has
other,31-2-P05-2008,ak there is a good match between the <term> training and test data </term> with respect to <term> topic </term>
other,34-3-P05-2008,ak potential of being independent of <term> domain </term> , <term> topic </term> and time . This
other,36-3-P05-2008,ak independent of <term> domain </term> , <term> topic </term> and time . This paper presents the
other,38-2-P05-2008,ak and test data </term> with respect to <term> topic </term> . This paper demonstrates that match
other,8-1-P05-2008,ak </term> seeks to identify a piece of <term> text </term> according to its author 's general
other,8-3-P05-2008,ak demonstrates that match with respect to <term> domain </term> and time is also important , and
tech,0-1-P05-2008,ak subcategorization acquisition </term> . <term> Sentiment Classification </term> seeks to identify a piece of <term>
tech,1-2-P05-2008,ak positive or negative . Traditional <term> machine learning techniques </term> have been applied to this problem
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