As stated by Oren Etzioni, ``commonsense is the dark matter of artificial intelligence''. In e-commerce, understanding users' needs or intentions requires substantial commonsense knowledge, e.g., ``A user bought an iPhone and a compatible case because the user wanted the phone to be protected''. In this paper, we present FolkScope, an intention knowledge graph construction framework, to reveal the structure of humans' minds about purchasing items on e-commerce platforms such as Amazon. As commonsense knowledge is usually ineffable and not expressed explicitly, it is challenging to perform any kind of information extraction. Thus, we propose a new approach that leverages the generation power of large-scale language models and human-in-the-loop annotations to semi-automatically construct the knowledge graph. We annotate a large amount of assertions for both plausibility and typicality of an intention that can explain a purchasing or co-purchasing behavior, where the intention can be an open reason or a predicate falling into one of 18 categories aligning with ConceptNet, e.g., IsA, MadeOf, UsedFor, etc. Then we populate the annotated information to all automatically generated ones, and further structurize the assertions using pattern mining and conceptualization to form more condensed and abstractive knowledge. We evaluate our knowledge graph using both intrinsic quality measures and a downstream application, i.e., recommendation. The comprehensive study shows that our knowledge graph can well model e-commerce commonsense knowledge and can have many potential applications.
翻译:Oren Etzioni 指出, “ Commonsense ” 是人工智能的暗淡物质。 在电子商务中,理解用户的需求或意图需要大量的常识知识,例如“ 用户购买了iPhone 和一个兼容案例,因为用户想要保护手机 ” 。 在本文中,我们介绍了FolksScope, 一个意图知识图构建框架, 以揭示人类对购买亚马逊等电子商务平台项目的想法结构。 由于常识通常无法适应且没有明确表达, 进行任何类型的信息提取都具有挑战性。 因此, 我们提出了一种新的方法, 利用大型语言模型的生成力, 以及人类在网上的描述, 来半自动地构建知识图。 我们注意到大量关于购买或共同购买行为意图的可观性和典型性的说法, 其意图可以是一个公开的理由或直线, 并可以分为18个类别之一, 与概念网络相一致, e. e. A, IsA, 自动地, 和 概念化的描述, 数据化等,, 进一步展示我们所生成的、 和不断生成的、 和 数据化的知识。