Ankan Saha, Vikas Sindhwani
WSDM 2012
The goal of sentiment prediction is to automatically identify whether a given piece of text expresses positive or negative opinion towards a topic of interest. One can pose sentiment prediction as a standard text categorization problem, but gathering labeled data turns out to be a bottleneck. Fortunately, background knowledge is often available in the form of prior information about the sentiment polarity of words in a lexicon. Moreover, in many applications abundant unlabeled data is also available. In this paper, we propose a novel semi-supervised sentiment prediction algorithm that utilizes lexical prior knowledge in conjunction with unlabeled examples. Our method is based on joint sentiment analysis of documents and words based on a bipartite graph representation of the data. We present an empirical study on a diverse collection of sentiment prediction problems which confirms that our semi-supervised lexical models significantly outperform purely supervised and competing semi-supervised techniques. © 2008 IEEE.
Ankan Saha, Vikas Sindhwani
WSDM 2012
Po-Sen Huang, Haim Avron, et al.
ICASSP 2014
Tao Li, Vikas Sindhwani, et al.
SDM 2010
Wojciech Gryc, Prem Melville, et al.
DEST 2010