Data Mining Techniques for Fashion Outfit Composition : A Review
Keywords:
SVM, Genetic, CompositionAbstract
Composing fashion outfits involves deep understanding of fashion standards while incorporating creativity for choosing multiple fashion items (e.g., Jewelry, Bag, Pants, Dress). In fashion websites, popular or high-quality fashion outfits are usually designed by fashion experts and followed by large audiences. In this paper we provide a brief review on various data mining techniques and algorithms proposed by different authors for implementing proper fashion outfit composition.
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