과제정보
본 연구는 한국콘텐츠진흥원의 '소상공인의 패션디자인 향상을 위한 지능형 패션 수요 예측 및 판로 분석 기술 개발(R2020040102)' 사업의 연구비를 지원받아 수행되었음.
참고문헌
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