“…Some studies composed their lexicons from emoticons/emojis that were extracted from a dataset [474,48,423,343,345,312,391,444,430,407], combined publicly available emoticon lexicons/lists [495] or mapped emoticons to their corresponding polarity [481], and others [424,499,389,390,414,444,430,503] used seed/feeling/emotional words to establish a microblog typical emotional dictionary. Additionally, some authors constructed or used sentiment lexicons [195,123,417,316,215,124,320,322,328,496,361,363,439,492,397,398,91,401,403] some of which are domain or language specific [478,317,516,347,206,100,388], others that extend state-of-the-art l...…”