Ensuring safety of the products offered to the customers is of paramount importance to any e- commerce platform. Despite stringent quality and safety checking of products listed on these platforms, occasionally customers might receive a product that can pose a safety issue arising out of its use. In this paper, we present an innovative mechanism of how a large scale multinational e-commerce platform, Zalando, uses Natural Language Processing techniques to assist timely investigation of the potentially unsafe products mined directly from customer written claims in unstructured plain text. We systematically describe the types of safety issues that concern Zalando customers. We demonstrate how we map this core business problem into a supervised text classification problem with highly imbalanced, noisy, multilingual data in a AI-in-the-loop setup with a focus on Key Performance Indicator (KPI) driven evaluation. Finally, we present detailed ablation studies to show a comprehensive comparison between different classification techniques. We conclude the work with how this NLP model was deployed.
翻译:确保向客户提供的产品的安全对于任何电子商务平台都至关重要。尽管对这些平台上所列产品进行严格的质量和安全检查,但有时客户可能得到一种产品,因为其使用可能造成安全问题。在本文件中,我们提出了一个创新机制,说明大规模多国电子商务平台Zalando如何利用自然语言处理技术,协助及时调查直接从客户书面索赔中直接在非结构化简单文本中提取的潜在不安全产品。我们系统地描述与Zalando客户有关的安全问题的类型。我们展示了我们如何将这一核心商业问题描绘成一个监管的文本分类问题,在以关键业绩指标驱动的评价为焦点的网上AI-in-lo-loup设置中,以高度不平衡、吵闹、多语种数据为焦点。最后,我们提出了详细的模拟研究,以显示不同分类技术之间的全面比较。我们通过如何部署该NLP模型来完成这项工作。