Over the past years, fashion-related challenges have gained a lot of attention in the research community. Outfit generation and recommendation, i.e., the composition of a set of items of different types (e.g., tops, bottom, shoes, accessories) that go well together, are among the most challenging ones. That is because items have to be both compatible amongst each other and also personalized to match the taste of the customer. Recently there has been a plethora of work targeted at tackling these problems by adopting various techniques and algorithms from the machine learning literature. However, to date, there is no extensive comparison of the performance of the different algorithms for outfit generation and recommendation. In this paper, we close this gap by providing a broad evaluation and comparison of various algorithms, including both personalized and non-personalized approaches, using online, real-world user data from one of Europe's largest fashion stores. We present the adaptations we made to some of those models to make them suitable for personalized outfit generation. Moreover, we provide insights for models that have not yet been evaluated on this task, specifically, GPT, BERT and Seq-to-Seq LSTM.
翻译:过去几年来,与时装有关的挑战在研究界引起了许多注意。与时装有关的挑战在研究界引起了许多注意。与时装有关的生产和建议是最具挑战性的,而不同类型(如顶部、底部、鞋、配件)的构成,即不同类型(如顶部、底部、鞋、配件)的构成,是最具挑战性的,因为物品必须彼此兼容,而且要与客户的口味相匹配。最近,通过采用机器学习文献中的各种技术和算法,为解决这些问题做了大量工作。然而,迄今为止,对服装制作和建议的不同算法的性能没有进行广泛的比较。在本文件中,我们通过广泛评价和比较各种算法,包括个性化和非个性化的方法,利用欧洲最大时装商店之一的在线、真实世界用户数据,来弥补这一差距。我们介绍了我们对其中一些模型所作的调整,使之适合个性化时装的一代。此外,我们对尚未评价的模型,特别是GPT、BERT和SQ-SQ-SQ-SQ-SQ-Sqeq-LTM。