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티셔츠 상품의 판매패턴과 연관된 상품속성
Sales Pattern and Related Product Attributes of T-shirts 원문보기

한국의류학회지 = Journal of the Korean Society of Clothing and Textiles, v.44 no.6, 2020년, pp.1053 - 1069  

채진미 (한성대학교 글로벌패션산업학부) ,  김은희 (한국 오라클)

Abstract AI-Helper 아이콘AI-Helper

This study examined the sales pattern relationship with respect to product attributes to propose sales forecasting for fashion products. We analyzed 537 SKU sales data of T-shirts in the domestic sports brand using SAS program. The sales pattern of fashion products fluctuated and were influenced by ...

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참고문헌 (45)

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