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A User Sentiment Classification Using Instagram image and text Analysis  

Hong, Taekeun (조선대학교 소프트웨어융합공학과)
Kim, Jeongin (조선대학교 컴퓨터공학과)
Shin, Juhyun (조선대학교 제어계측로봇공학과)
Publication Information
Smart Media Journal / v.5, no.1, 2016 , pp. 61-68 More about this Journal
Abstract
According to increasing SNS users and developing smart devices like smart phone and tablet PC recently, many techniques to classify user emotions with social network information are researching briskly. The use emotion classification stands for distinguishing its emotion with text and images listed on his/her SNS. This paper suggests a method to classify user emotions through sampling a value of a representative figure on a trigonometrical function, a representative adjective on text, and a canny algorithm on images. The sampling representative adjective on text is selected as one of high frequency in the samplings and measured values of positive-negative by SentiWordNet. Figures sampled on images are selected as the representative in figures; triangle, quadrangle, and circle as well as classified user emotions by measuring pleasure-unpleased values as a type of figures and inclines. Finally, this is re-defined as x-y graph that represents pleasure-unpleased and positive-negative values with wheel of emotions by Plutchik. Also, we are anticipating for applying user-customized service through classifying user emotions on wheel of emotions by Plutchik that is redefined the representative adjectives and figures.
Keywords
Social Network Service; Instagram, Emotions Classification of Users; SentiWordNet;
Citations & Related Records
Times Cited By KSCI : 7  (Citation Analysis)
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