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Proceedings ArticleDOI

An artificial neural network based approach for sentiment analysis of opinionated text

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TLDR
A sentiment classification model using back-propagation artificial neural network (BPANN) is proposed that combines the strength of BPANN in classification accuracy with utilizing intrinsic domain knowledge available in the sentiment lexicons.
Abstract
The Internet and Web 2.0 social media have emerged as an important medium for expressing sentiments, opinions, evaluations, and reviews. Sentiment analysis or opinion mining is becoming an open research domain due to the abundance of discussion forums, Weblogs, e-commerce portals, social networking and content sharing sites where people tend to express their opinions. Sentiment Analysis involves classifying text documents based on the opinion expressed being positive or negative about a given topic. This paper proposes a sentiment classification model using back-propagation artificial neural network (BPANN). Information Gain and three popular sentiment lexicons are used to extract sentiment representing features that are then used to train and test the BPANN. This novel approach combines the strength of BPANN in classification accuracy with utilizing intrinsic domain knowledge available in the sentiment lexicons. The results obtained on the movie-review corpora have shown that the proposed approach has been able to reduce dimensionality, while producing accurate sentiment based classification of text.

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Citations
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References
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Proceedings Article

Comparative experiments on sentiment classification for online product reviews

TL;DR: A series of experiments with different machine learning algorithms are discussed in order to experimentally evaluate various trade-offs, using approximately 100K product reviews from the web.
Journal ArticleDOI

Senti-lexicon and improved Naïve Bayes algorithms for sentiment analysis of restaurant reviews

TL;DR: This thesis proposes a new senti-lexicon for the sentiment analysis of restaurant reviews using the improved Naive Bayes algorithm, and shows that when this algorithm was used and a unigrams+bigrams was used as the feature, the gap between the positive accuracy and the negative accuracy was narrowed.
Journal ArticleDOI

Estimating Aggregate Consumer Preferences from Online Product Reviews

TL;DR: In this article, an econometric framework is presented that can be applied to the mentioned type of data after having prepared it using natural language processing techniques, which enables the estimation of parameters, which allow inferences on the relative effect of product attributes and brand names on the overall evaluation of the products.
Journal ArticleDOI

Estimating aggregate consumer preferences from online product reviews

TL;DR: In this article, an econometric framework is presented that can be applied to the mentioned type of data after having prepared it using natural language processing techniques, which enables the estimation of parameters, which allow inferences on the relative effect of product attributes and brand names on the overall evaluation of the products.
Journal ArticleDOI

Predicting consumer sentiments from online text

TL;DR: A heuristic search-enhanced Markov blanket model is proposed that is able to capture the dependencies among words and provide a vocabulary that is adequate for the purpose of extracting sentiments.
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