An Interpretable Ensemble of Graph and Language Models for Improving Search Relevance in E-Commerce

ArXiv Pub Date : 2024-03-01 DOI:10.1145/3589335.3648318
Nurendra Choudhary, E-Wen Huang, Karthik Subbian, Chandan K. Reddy
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Abstract

The problem of search relevance in the E-commerce domain is a challenging one since it involves understanding the intent of a user's short nuanced query and matching it with the appropriate products in the catalog. This problem has traditionally been addressed using language models (LMs) and graph neural networks (GNNs) to capture semantic and inter-product behavior signals, respectively. However, the rapid development of new architectures has created a gap between research and the practical adoption of these techniques. Evaluating the generalizability of these models for deployment requires extensive experimentation on complex, real-world datasets, which can be non-trivial and expensive. Furthermore, such models often operate on latent space representations that are incomprehensible to humans, making it difficult to evaluate and compare the effectiveness of different models. This lack of interpretability hinders the development and adoption of new techniques in the field. To bridge this gap, we propose Plug and Play Graph LAnguage Model (PP-GLAM), an explainable ensemble of plug and play models. Our approach uses a modular framework with uniform data processing pipelines. It employs additive explanation metrics to independently decide whether to include (i) language model candidates, (ii) GNN model candidates, and (iii) inter-product behavioral signals. For the task of search relevance, we show that PP-GLAM outperforms several state-of-the-art baselines as well as a proprietary model on real-world multilingual, multi-regional e-commerce datasets. To promote better model comprehensibility and adoption, we also provide an analysis of the explainability and computational complexity of our model. We also provide the public codebase and provide a deployment strategy for practical implementation.
用于提高电子商务搜索相关性的可解释图形和语言模型组合
电子商务领域的搜索相关性问题是一个具有挑战性的问题,因为它涉及到理解用户简短细微查询的意图,并将其与目录中的适当产品进行匹配。解决这一问题的传统方法是使用语言模型(LM)和图神经网络(GNN),分别捕捉语义信号和产品间行为信号。然而,新架构的快速发展造成了这些技术的研究与实际应用之间的差距。要评估这些模型在部署中的通用性,需要在复杂的真实数据集上进行大量实验,而这些实验既不繁琐又昂贵。此外,这些模型通常在人类无法理解的潜在空间表征上运行,因此很难评估和比较不同模型的有效性。缺乏可解释性阻碍了该领域新技术的开发和采用。为了弥补这一不足,我们提出了即插即用图空间模型(PP-GLAM)--一种可解释的即插即用模型集合。我们的方法采用模块化框架和统一的数据处理管道。它采用加法解释度量来独立决定是否包含(i)候选语言模型、(ii)候选 GNN 模型和(iii)产品间行为信号。在搜索相关性任务中,我们表明 PP-GLAM 在真实世界的多语言、多地区电子商务数据集上的表现优于几个最先进的基线模型和一个专有模型。为了提高模型的可理解性和采用率,我们还对模型的可解释性和计算复杂性进行了分析。我们还提供了公共代码库,并为实际实施提供了部署策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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