Attribute Value Generation from Product Title using Language Models

Kalyani Roy, Pawan Goyal, Manish Pandey
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引用次数: 11

Abstract

Identifying the value of product attribute is essential for many e-commerce functions such as product search and product recommendations. Therefore, identifying attribute values from unstructured product descriptions is a critical undertaking for any e-commerce retailer. What makes this problem challenging is the diversity of product types and their attributes and values. Existing methods have typically employed multiple types of machine learning models, each of which handles specific product types or attribute classes. This has limited their scalability and generalization for large scale real world e-commerce applications. Previous approaches for this task have formulated the attribute value extraction as a Named Entity Recognition (NER) task or a Question Answering (QA) task. In this paper we have presented a generative approach to the attribute value extraction problem using language models. We leverage the large-scale pretraining of the GPT-2 and the T5 text-to-text transformer to create fine-tuned models that can effectively perform this task. We show that a single general model is very effective for this task over a broad set of product attribute values with the open world assumption. Our approach achieves state-of-the-art performance for different attribute classes, which has previously required a diverse set of models.
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使用语言模型从产品标题生成属性值
识别产品属性的价值对于许多电子商务功能(如产品搜索和产品推荐)至关重要。因此,从非结构化的产品描述中识别属性值对于任何电子商务零售商来说都是一项关键任务。使这个问题具有挑战性的是产品类型及其属性和价值的多样性。现有的方法通常采用多种类型的机器学习模型,每种模型都处理特定的产品类型或属性类。这限制了它们在大规模现实世界电子商务应用程序中的可伸缩性和泛化。该任务的先前方法将属性值提取表述为命名实体识别(NER)任务或问答(QA)任务。本文提出了一种基于语言模型的生成方法来解决属性值抽取问题。我们利用GPT-2和T5文本到文本转换器的大规模预训练来创建可以有效执行此任务的微调模型。我们表明,在开放世界假设下,单一的通用模型对于在广泛的产品属性值集上执行此任务非常有效。我们的方法为不同的属性类实现了最先进的性能,这在以前需要一组不同的模型。
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