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Proceedings ArticleDOI

Twitter Sentiment Analysis -- A More Enhanced Way of Classification and Scoring

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TLDR
The approach adopted is to analyse the lexicon features of the tweets for classifying its sentiment (positive, negative and neutral) and proposes an avant-garde sentiment scoring mechanism to estimate the degree of the sentiment.
Abstract
In this paper we present a novel approach to Twitter Sentiment Analysis. The approach adopted is to analyse the lexicon features of the tweets for classifying its sentiment (positive, negative and neutral). The training data is made more exhaustive by including various manually labelled tweets, in addition to the existing word stock to keep up with the changing micro logging trends. For Data Preprocessing, a novel spell checking algorithm is introduced, an operation for disjoining compound words such as "high hopes" is implemented and emoticons are replaced by suitable emotion words like happy or sad. After this initial preprocessing, the machine learning algorithms are (Support vector machines and Maximum entropy) are applied. We also propose an avant-garde sentiment scoring mechanism to estimate the degree of the sentiment. Our approach is able to assign sentiments to tweets with an accuracy of 80%.

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Citations
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National happiness index monitoring using Twitter for bilanguages

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References
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Sentiment Analysis of Twitter Data

TL;DR: This article introduced POS-specific prior polarity features and explored the use of a tree kernel to obviate the need for tedious feature engineering for sentiment analysis on Twitter data, which outperformed the state-of-the-art baseline.
Proceedings ArticleDOI

A holistic lexicon-based approach to opinion mining

TL;DR: This paper proposes a holistic lexicon-based approach to solving the problem of determining the semantic orientations (positive, negative or neutral) of opinions expressed on product features in reviews by exploiting external evidences and linguistic conventions of natural language expressions.
Proceedings Article

Target-dependent Twitter Sentiment Classification

TL;DR: This paper proposes to improve target-dependent Twitter sentiment classification by incorporating target- dependent features; and taking related tweets into consideration; and according to the experimental results, this approach greatly improves the performance of target- dependence sentiment classification.
Journal ArticleDOI

Recognizing contextual polarity: An exploration of features for phrase-level sentiment analysis

TL;DR: The goal of this work is to automatically distinguish between prior and contextual polarity, with a focus on understanding which features are important for this task, and it is shown that the presence of neutral instances greatly degrades the performance of features for distinguishing between positive and negative polarity.
Proceedings Article

A System for Real-time Twitter Sentiment Analysis of 2012 U.S. Presidential Election Cycle

TL;DR: A system for real-time analysis of public sentiment toward presidential candidates in the 2012 U.S. election as expressed on Twitter, a micro-blogging service, offers a new and timely perspective on the dynamics of the electoral process and public opinion.
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