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Proceedings ArticleDOI

Precise tweet classification and sentiment analysis

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TLDR
The proposed methodology has performed better than the existing system in terms of tweets classification and sentiment analysis and the increase in information gain has enabled the proposed system to better summarize the twitter data for user sentiments regarding a keyword from a particular category.
Abstract
The rise of social media in couple of years has changed the general perspective of networking, socialization, and personalization. Use of data from social networks for different purposes, such as election prediction, sentimental analysis, marketing, communication, business, and education, is increasing day by day. Precise extraction of valuable information from short text messages posted on social media (Twitter) is a collaborative task. In this paper, we analyze tweets to classify data and sentiments from Twitter more precisely. The information from tweets are extracted using keyword based knowledge extraction. Moreover, the extracted knowledge is further enhanced using domain specific seed based enrichment technique. The proposed methodology facilitates the extraction of keywords, entities, synonyms, and parts of speech from tweets which are then used for tweets classification and sentimental analysis. The proposed system is tested on a collection of 40,000 tweets. The proposed methodology has performed better than the existing system in terms of tweets classification and sentiment analysis. By applying the Knowledge Enhancer and Synonym Binder module on the extracted information we have achieved increase in information gain in a range of 0.1% to 55%. The increase in information gain has enabled our proposed system to better summarize the twitter data for user sentiments regarding a keyword from a particular category.

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Citations
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Journal ArticleDOI

When can social media lead financial markets

TL;DR: This paper uses sentiment analysis techniques and Information Theory measures to demonstrate that social media message sentiment can contain statistically-significant ex-ante information on the future prices of the S&P500 index and a limited set of stocks, in excess of what is achievable using solely message volumes.
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Sentiment Analysis for Indian Stock Market Prediction Using Sensex and Nifty

TL;DR: In this article, the importance of sentiment analysis for stock market indicators such as Sensex and Nifty has been done to predict the price of stock and draw conclusions and provide suggestions for future work.
Proceedings ArticleDOI

Detecting Jihadist Messages on Twitter

TL;DR: This work makes a first attempt to automatically detect messages released by jihadist groups on Twitter using a machine learning approach that classifies a tweet as containing material that is supporting jihadists groups or not.
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An Associative Engines Based Approach Supporting Collaborative Analytics in the Internet of Cultural Things

TL;DR: An integrated approach supporting an information system which combines Business Intelligence, Big Data, Internet of Things, GeoSpatial information processing, multimedia resources, structured and unstructured content analysis with Semantic techniques, and Social Network Analysis is illustrated.
Proceedings ArticleDOI

Techniques for sentiment analysis of Twitter data: A comprehensive survey

TL;DR: This paper presents the sentiment analysis process to classify highly unstructured data on Twitter and discusses various techniques to carryout sentiment analysis on Twitter data in detail and presents the parametric comparison of the discussed techniques based on the identified parameters.
References
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Journal ArticleDOI

Social Network Sites: Definition, History, and Scholarship

TL;DR: This publication contains reprint articles for which IEEE does not hold copyright and which are likely to be copyrighted.
Journal IssueDOI

Twitter power: Tweets as electronic word of mouth

TL;DR: It is found that microblogting is an online tool for customer word of mouth communications and the implications for corporations using microblogging as part of their overall marketing strategy are discussed.
Proceedings ArticleDOI

Sentiment analysis: capturing favorability using natural language processing

TL;DR: This paper illustrates a sentiment analysis approach to extract sentiments associated with polarities of positive or negative for specific subjects from a document, instead of classifying the whole document intopositive or negative.
Proceedings ArticleDOI

Is it really about me?: message content in social awareness streams

TL;DR: A content-based categorization of the type of messages posted by Twitter users is developed, based on which the analysis shows two common types of user behavior in terms of the content of the posted messages, and exposes differences between users in respect to these activities.
Proceedings ArticleDOI

Short text classification in twitter to improve information filtering

TL;DR: A small set of domain-specific features extracted from the author's profile and text is proposed to use to classify short text messages to a predefined set of generic classes such as News, Events, Opinions, Deals, and Private Messages.
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