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This paper proposes a mutual detection mechanism between spam blogs and keywords for filtering spam blogs from updated blog data. Spam blogs are problematic in extracting useful marketing information from the blogosphere; they often appear to be rich sources of information based on individual opinion and social
model and the Chinese emotion corpus (Ren-CECps)*. Ren-CECps contains eight basic emotion categories (expect, joy, love, surprise, anxiety, sorrow, hate and anger), which presents us with the opportunity to systematically analyze the complex human emotions. Three features (keywords, POS and intensity) were considered for
Most studies on authorship identification reported a drop in the identification result when the number of authors exceeds 20-25. In this paper, we introduce a new user representation to address this problem and split classification across two layers. There are at least 3 novelties in this paper. First, the two-layer approach allows applying authorship identification over larger number of authors (tested...
database with simple keywords for the health data from the local repository. In other cases, if the data is unavailable in the local repository, the searching mechanism is directly carried on to the web database. Stack of PDF oriented medical resources are implemented in web, where it searches with the lexical similarities
distinctive spam keywords. We investigate two ways of detecting such spams: 1) By comparing the similarity between the publisher posts and user comments, and 2) by learning a single representative meta-feature such as user name or ID. The first measure relieves us from repetitively learning a set of domain-dependent spam
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