As online merchandise become more common, many studies focus on embedding-based methods where queries and products are represented in the semantic space. These methods alleviate the problem of vocab mismatch between the language of queries and products. However, past studies usually dealt with queries that precisely describe the product, and there still exists the need to answer imprecise queries that may require common sense knowledge, i.e., 'what should I get my mom for Mother's Day.' In this paper, we propose a GPT-3 based product retrieval system that leverages the knowledge-base (KB) of GPT-3 for question answering; users do not need to know the specific illustrative keywords for a product when querying. Our method tunes prompt tokens of GPT-3 to prompt knowledge and render answers that are mapped directly to products without further processing. Our method shows consistent performance improvement on two real-world and one public dataset, compared to the baseline methods. We provide an in-depth discussion on leveraging GPT-3 knowledge into a question answering based retrieval system.
翻译:随着在线商品越来越常见,许多研究侧重于嵌入方法,让查询和产品在语义空间中有代表性。这些方法缓解了查询语言和产品语言之间瓦卡布不匹配的问题。然而,过去的研究通常涉及准确描述产品的询问,仍然需要回答可能需要常识知识的不精确的询问,即“母亲节我应该给我妈什么?”在本文件中,我们提议一个基于GPT-3的基于GPT-3的产品检索系统,利用GPT-3的知识库(KB)回答问题;用户在查询时不需要知道产品的具体说明关键词。我们的方法使GPT-3的标志能够促进知识,并直接为产品绘制答案,而无需进一步处理。我们的方法显示两个真实世界和一个公共数据集的绩效不断提高,与基线方法相比。我们就利用GPT-3的知识进入一个基于问题的检索系统进行了深入讨论。