The vast majority of existing approaches to opinion
feature extraction rely on mining patterns only from a single review corpus,
ignoring the nontrivial disparities in word distributional characteristics of
opinion features across different corpora. In this paper, we propose a novel
method to identify opinion features from online reviews by exploiting the
difference in opinion feature statistics across two corpora, one
domain-specific corpus (i.e., the given review corpus) and one
domain-independent corpus (i.e., the contrasting corpus). We capture this
disparity via a measure called domain relevance (DR), which characterizes the
relevance of a term to a text collection. We first extract a list of candidate
opinion features from the domain review corpus by defining a set of syntactic
dependence rules. For each extracted candidate feature, we then estimate its
intrinsic-domain relevance (IDR) and extrinsic-domain relevance (EDR) scores on
the domain-dependent and domain-independent corpora, respectively. Candidate
features that are less generic (EDR score less than a threshold) and more
domain-specific (IDR score greater than another threshold) are then confirmed
as opinion features. We call this interval thresholding approach the intrinsic
and extrinsic domain relevance (IEDR) criterion. Experimental results on two
real-world review domains show the proposed IEDR approach to outperform several
other well-established methods in identifying opinion features.
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