“…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.…”