Paper Title :Three-Stage Sentiment Analysis By Polarity Shift Detection, Elimination And Ensemble
Author :Pooja K.Manna, Sonali Bodkhe
Article Citation :Pooja K.Manna ,Sonali Bodkhe ,
(2015 ) " Three-Stage Sentiment Analysis By Polarity Shift Detection, Elimination And Ensemble " ,
International Journal of Advance Computational Engineering and Networking (IJACEN) ,
pp. 58-61,
Volume-3,Issue-12
Abstract : The volume of user-generated text on the Web in the form of reviews, blogs, and social networks has grown
dramatically in recent years. This was mirrored by an increasing interest, from both the academic and the business world, in
the field of sentiment analysis, which aims to automatically extract sentiment from natural language text and can be broadly
categorized into knowledge-based or statistics-based. Bag-of-words (BOW) is the popular way to model text in statistical
machine learning methods in sentiment analysis. However, the achievement of BOW sometimes remains bounded due to
some primitive dearth in handling the polarity shift problem. The greater findings were that out of the classification
algorithms assessed it was that the Random forest classifier provide the much more high classification accurateness for this
domain. From the assessing of this study it can be concluded that the proposed machine learning and natural language
processing techniques are an impressive and real time approach for sentiment analysis The polarity shift problem is a
major factor that affects classification performance of machine-learning-based sentiment analysis systems .Proposing a
three-stage cascade model to address the polarity shift problem in the context of document-level sentiment classification.
We first split each document into a set of sub sentences and build a hybrid model that employs rules and statistical methods
to detect explicit and implicit polarity shifts, respectively. Secondly, proposing a polarity shift elimination method, to
remove polarity shift in negations. Finally, we train base classifiers on training subsets divided by different types of polarity
shifts, and use a weighted combination of the component classifiers for sentiment classification. On this basis, also proposing
a dual training algorithm to make use of original and reversed training reviews in duality for learning a sentiment classifier,
and a dual prediction algorithm to classify the test results by keeping in mind both of two phases of one result. An extended
framework from polarity (positive-negative) classification to 3-class (positive-negative-neutral) classification has to be done,
by taking the neutral reviews into consideration. Finally, a corpus-based approach is constructed for pseudo-antonym
dictionary, which elimination of Dual Sentential Approch’s dependency on an external antonym dictionary for review
reversion.
Keywords- DSA, Polarity Shift, Random Forest, Knowledge-Based, Bag-Of-Words (BOW), PSDEE.
Type : Research paper
Published : Volume-3,Issue-12
DOIONLINE NO - IJACEN-IRAJ-DOIONLINE-3446
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Copyright: © Institute of Research and Journals
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Published on 2015-12-15 |
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