Scaling Use-case Based Shopping using LLMs

S. Farfade, Sachin Vernekar, Vineet Chaoji, Rajdeep Mukherjee
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Abstract

Products on e-commerce websites are usually organized based on seller-provided product attributes. Customers looking for a product typically have certain needs or product use-cases in mind, for e.g., a headphone for gym classes, or a printer for a small business. However, they often struggle to map these use-cases to product attributes and subsequently fail to find the product they need. In this talk, we present a use-case based shopping (UBS) ML system that facilitates use-case based customer experiences (CXs). The UBS system recommends dominant product use-cases to customers along with most relevant products for those use-cases. Use-cases and their definitions vary across product categories and market-places (MPs). This makes training supervised models for thousands of e-commerce categories and multiple MPs infeasible by collecting large amount training data needed to train these models. In this talk, we present our work on scaling the UBS model by instruction tuning an LLM for our task.
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使用 LLM 扩展基于用例的购物
电子商务网站上的产品通常根据卖家提供的产品属性进行组织。寻找产品的客户通常有特定的需求或产品使用案例,例如健身房的耳机或小企业的打印机。然而,他们往往很难将这些用例映射到产品属性上,从而无法找到他们需要的产品。在本讲座中,我们将介绍一个基于用例的购物(UBS)ML系统,它能促进基于用例的客户体验(CX)。UBS 系统向客户推荐主要的产品用例以及与这些用例最相关的产品。不同产品类别和市场(MP)的用例及其定义各不相同。这就使得通过收集大量训练模型所需的训练数据来训练数千种电子商务类别和多个市场平台的监督模型变得不可行。在本讲座中,我们将介绍通过指导调整 LLM 来扩展 UBS 模型的工作。
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