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Recommendation Method of SNS Following to Category Classification of Image and Text Information  

Hong, Taek Eun (조선대학교 소프트웨어융합공학과)
Shin, Ju Hyun (조선대학교 제어계측로봇공학과)
Publication Information
Smart Media Journal / v.5, no.3, 2016 , pp. 54-61 More about this Journal
Abstract
According to many smart devices are development, SNS(Social Network Service) users are getting higher that is possible for real-time communicating, information sharing without limitations in distance and space. Nowadays, SNS users that based on communication and relationships, are getting uses SNS for information sharing. In this paper, we used the SNS posts for users to extract the category and information provider, how to following of recommend method. Particularly, this paper focuses on classifying the words in the text of the posts and measures the frequency using Inception-v3 model, which is one of the machine learning technique -CNN(Convolutional Neural Network) we classified image word. By classifying the category of a word in a text and image, that based on DMOZ to build the information provider DB. Comparing user categories classified in categories and posts from information provider DB. If the category is matched by measuring the degree of similarity to the information providers is classified in the category, we suggest that how to recommend method of the most similar information providers account.
Keywords
Sosial Network Service; User Information; Recommendation System; Open Directory Project;
Citations & Related Records
Times Cited By KSCI : 9  (Citation Analysis)
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