Negative filter
training, data 8
(256.1 per million)
tech,0-1-P05-2008,ak
subcategorization acquisition
</term>
.
<term>
Sentiment Classification
</term>
seeks to identify a piece of
<term>
#10392A new tool for linguistic annotation of SCFs in corpus data is also introduced which can considerably alleviate the process of obtaining training and test data for subcategorization acquisition.Sentiment Classification seeks to identify a piece of text according to its author's general feeling toward their subject, be it positive or negative.
other,8-1-P05-2008,ak
</term>
seeks to identify a piece of
<term>
text
</term>
according to its author 's general
#10400Sentiment Classification seeks to identify a piece oftext according to its author's general feeling toward their subject, be it positive or negative.
tech,1-2-P05-2008,ak
positive or negative . Traditional
<term>
machine learning techniques
</term>
have been applied to this problem
#10419Traditionalmachine learning techniques have been applied to this problem with reasonable success, but they have been shown to work well only when there is a good match between the training and test data with respect to topic.
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>
#10449Traditional machine learning techniques have been applied to this problem with reasonable success, but they have been shown to work well only when there is a good match between thetraining and test data with respect to topic.
other,38-2-P05-2008,ak
and test data
</term>
with respect to
<term>
topic
</term>
. This paper demonstrates that match
#10456Traditional machine learning techniques have been applied to this problem with reasonable success, but they have been shown to work well only when there is a good match between the training and test data with respect totopic.
other,8-3-P05-2008,ak
demonstrates that match with respect to
<term>
domain
</term>
and time is also important , and
#10466This paper demonstrates that match with respect todomain and time is also important, and presents preliminary experiments with training data labeled with emoticons, which has the potential of being independent of domain, topic and time.
other,34-3-P05-2008,ak
potential of being independent of
<term>
domain
</term>
,
<term>
topic
</term>
and time . This
#10492This paper demonstrates that match with respect to domain and time is also important, and presents preliminary experiments with training data labeled with emoticons, which has the potential of being independent ofdomain, topic and time.
other,36-3-P05-2008,ak
independent of
<term>
domain
</term>
,
<term>
topic
</term>
and time . This paper presents the
#10494This paper demonstrates that match with respect to domain and time is also important, and presents preliminary experiments with training data labeled with emoticons, which has the potential of being independent of domain,topic and time.