Difference between revisions of "Sentiment analysis"
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Open source software tools deploy machine learning, statistics, and natural language processing techniques allowing to automate the sentiment analysis task on large collections of texts like for example web pages, online news, internet discussion groups, online reviews, web blogs, and social media like for example Twitter. | Open source software tools deploy machine learning, statistics, and natural language processing techniques allowing to automate the sentiment analysis task on large collections of texts like for example web pages, online news, internet discussion groups, online reviews, web blogs, and social media like for example Twitter. | ||
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+ | == Reference == | ||
+ | [1] Pang Bo and Lillian Lee. 2008. Opinion mining and sentiment analysis. |
Revision as of 21:33, 31 March 2011
This is a problem discussed in Social Media Analysis 10-802 in Spring 2011.
Introduction
Sentiment analysis or opinion mining refers to the application of natural language processing, computational linguistics, and text analytics to identify and extract subjective information in source materials, also to identify the polarity of the extracted subjective information.
More references can be found in the survey book [1].
Methods
Computers can perform automated sentiment analysis of digital texts, using elements from machine learning such as latent semantic analysis, support vector machines, "bag of words" and Semantic Orientation — Pointwise Mutual Information (See Peter Turney's [2] work in this area). More sophisticated methods try to detect the holder of a sentiment (i.e. the person who maintains that affective state) and the target (i.e. the named entity or target whose affective state one is interested in) [13]. To mine the opinion in context and get the feature which has been opinionated, the grammatical relationships of words are used. Grammatical dependency relations are obtained by deep parsing of the text [14].
In Sentic computing [15], a multi-disciplinary approach to opinion mining and sentiment analysis, text processing is not based on statistical learning models but rather on common sense reasoning tools and affective ontologies. Differently from statistical classification, which generally requires large inputs and thus cannot appraise texts with satisfactory granularity, Sentic Computing enables the analysis of documents not only on the page- or paragraph-level but also on the sentence-level.
Open source software tools deploy machine learning, statistics, and natural language processing techniques allowing to automate the sentiment analysis task on large collections of texts like for example web pages, online news, internet discussion groups, online reviews, web blogs, and social media like for example Twitter.
Reference
[1] Pang Bo and Lillian Lee. 2008. Opinion mining and sentiment analysis.