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NTIS 바로가기지능정보연구 = Journal of intelligence and information systems, v.29 no.1, 2023년, pp.41 - 63
장동수 (경희대학교 대학원 빅데이터응용학과) , 이청용 (경희대학교 대학원 빅데이터응용학과) , 김재경 (경희대학교 경영대학&빅데이터응용학과)
As the online e-commerce market growing, the need for a recommender system that can provide suitable products or services to customer is emerging. Recently, many studies using the sentiment score of online review have been proposed to improve the limitations of study on recommender systems that util...
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