2017
DOI: 10.1371/journal.pone.0171649
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Lexicon-enhanced sentiment analysis framework using rule-based classification scheme

Abstract: With the rapid increase in social networks and blogs, the social media services are increasingly being used by online communities to share their views and experiences about a particular product, policy and event. Due to economic importance of these reviews, there is growing trend of writing user reviews to promote a product. Nowadays, users prefer online blogs and review sites to purchase products. Therefore, user reviews are considered as an important source of information in Sentiment Analysis (SA) applicati… Show more

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Cited by 138 publications
(74 citation statements)
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“…Simple addition and subtraction is performed by Khan et al, while dealing with modifiers (Khan, Baharudin, & Khan, ). Classification and scoring of modifiers and negations is performed by utilizing a set of positive and negative list of negations and modifiers (Asghar, Khan, Ahmad, Qasim, & Khan, ). After detecting the intensifiers in text, the effect is calculated by adding a point to or subtracting a point from the base valence (value) of that term.…”
Section: Related Workmentioning
confidence: 99%
“…Simple addition and subtraction is performed by Khan et al, while dealing with modifiers (Khan, Baharudin, & Khan, ). Classification and scoring of modifiers and negations is performed by utilizing a set of positive and negative list of negations and modifiers (Asghar, Khan, Ahmad, Qasim, & Khan, ). After detecting the intensifiers in text, the effect is calculated by adding a point to or subtracting a point from the base valence (value) of that term.…”
Section: Related Workmentioning
confidence: 99%
“…Moreover, there was no provision for handling extended set of emoticons, slang, or domain-specific words in multiple domains. Asghar et al (2017), in their work on sentiment classification, proposed a lexicon-based method to extract, preprocess, and classify user sentiments from online communities. They used different lexicons, including SWN and user-defined dictionaries, to determine the polarity scores of sentiment words.…”
Section: Related Workmentioning
confidence: 99%
“…As such, we primarily focus on accurately classifying slang, emoticons, opinion words, and domain‐specific language for the sentiment detection and classification of tweets in multiple domains. The proposed technique is inspired by previous studies on Twitter sentiment analysis (Asghar, Khan, Ahmad, Qasim & Khan, ; Khan et al, ; Masud et al, ; Prieto, Matos, Alvarez, Cacheda, & Oliveira, ) Those studies have used supervised and unsupervised classification schemes to detect and classify the sentiments expressed by Twitter users into +ive, −ive, or neutral classes. However, we propose a hybrid approach using a slang classifier (SC), emoticon classifier (EC), and general‐purpose sentiment classifier (GPSC) in a step‐wise fashion to classify the reviews more accurately.…”
Section: Introductionmentioning
confidence: 99%
“…Lexicon based methods calculate sentiment polarity as a function of sentiment bearing words in twitter [7], [12], [13]. Khan et al [14] have used a lexicon backed rule based classification scheme to classify user reviews. The system integrates effect of emoticons, modifiers, negations etc to the lexicon based framework to improve performance.…”
Section: Related Workmentioning
confidence: 99%