We present a novel dataset collected by ASOS (a major online fashion retailer) to address the challenge of predicting customer returns in a fashion retail ecosystem. With the release of this substantial dataset we hope to motivate further collaboration between research communities and the fashion industry. We first explore the structure of this dataset with a focus on the application of Graph Representation Learning in order to exploit the natural data structure and provide statistical insights into particular features within the data. In addition to this, we show examples of a return prediction classification task with a selection of baseline models (i.e. with no intermediate representation learning step) and a graph representation based model. We show that in a downstream return prediction classification task, an F1-score of 0.792 can be found using a Graph Neural Network (GNN), improving upon other models discussed in this work. Alongside this increased F1-score, we also present a lower cross-entropy loss by recasting the data into a graph structure, indicating more robust predictions from a GNN based solution. These results provide evidence that GNNs could provide more impactful and usable classifications than other baseline models on the presented dataset and with this motivation, we hope to encourage further research into graph-based approaches using the ASOS GraphReturns dataset.
翻译:我们提出了由ASOS(主要在线时装零售商)收集的新数据集,以应对在时装零售生态系统中预测客户回报的挑战。随着这一实质性数据集的发布,我们希望能够激励研究界和时装行业进一步合作。我们首先探索该数据集的结构,重点是应用图表代表学习系统,以便利用自然数据结构,并对数据中的具体特征提供统计见解。此外,我们展示了回报预测分类任务的例子,选择基准模型(即没有中间代表学习步骤)和图表代表模型。我们显示,在下游回报预测分类任务中,可以利用图表神经网络(GNN)找到一个0.792的F1核心,改进这项工作讨论的其他模型。除了这一增加的F1核心外,我们还通过将数据重新输入图表结构,表明基于GNN解决方案的更可靠的预测。这些结果证明,GNN可以提供比以其他基线模型为基础的更具有影响力和可用性的分类,而不是基于下游返回预测的模型,我们希望能利用这一驱动力,将数据转换成图表。</s>