利用专家知识为企业分配行业:一种新的深度学习方法

MIS Q. Pub Date : 2022-06-01 DOI:10.48550/arXiv.2209.05943
Xiaohang Zhao, Xiao Fang, Jing He, Lihua Huang
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引用次数: 1

摘要

行业分配是根据预定义的行业分类系统(ICS)将公司分配到行业,这是大量关键商业实践的基础,从公司的运营和战略决策到政府机构的经济分析。三种类型的专家知识对于有效的行业分配至关重要:基于定义的知识(即每个行业的专家定义),基于结构的知识(即ICS中指定的行业之间的结构关系)和基于任务的知识(即由领域专家执行的先前公司-行业分配)。现有的行业分配方法只利用基于分配的知识来学习一个将未分配的公司分类到行业的模型,而忽略了基于定义和基于结构的知识。此外,这些方法只考虑企业被分配到哪个行业,而忽略了基于分配的知识的时间特异性,即分配发生的时间。为了解决现有方法的局限性,我们提出了一种新的基于深度学习的方法,该方法不仅无缝集成了三种类型的行业分配知识,而且考虑了基于分配的知识的时间特异性。在方法上,我们的方法有两个创新:动态行业表示和分层分配。前者通过我们提出的时空聚合机制将三种类型的知识整合在一起,将行业表示为时间特定向量序列。后者以行业和企业表征为输入,计算将企业分配到不同行业的概率,并将企业分配到概率最高的行业。我们对两种广泛使用的ICSs进行了广泛的评估,并证明了我们的方法优于流行的现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Expert Knowledge for Assigning Firms to Industries: A Novel Deep Learning Method
Industry assignment, which assigns firms to industries according to a predefined industry classification system (ICS), is fundamental to a large number of critical business practices, ranging from operations and strategic decision-making by firms to economic analyses by government agencies. Three types of expert knowledge are essential to effective industry assignment: definition-based knowledge (i.e., expert definitions of each industry), structure-based knowledge (i.e., structural relationships among industries as specified in an ICS), and assignment-based knowledge (i.e., prior firm-industry assignments performed by domain experts). Existing industry assignment methods utilize only assignment-based knowledge to learn a model that classifies unassigned firms to industries, overlooking definition-based and structure-based knowledge. Moreover, these methods only consider which industry a firm has been assigned to, ignoring the time-specificity of assignment-based knowledge, i.e., when the assignment occurs. To address the limitations of existing methods, we propose a novel deep learning-based method that not only seamlessly integrates the three types of knowledge for industry assignment but also takes the time-specificity of assignment-based knowledge into account. Methodologically, our method features two innovations: dynamic industry representation and hierarchical assignment. The former represents an industry as a sequence of time-specific vectors by integrating the three types of knowledge through our proposed temporal and spatial aggregation mechanisms. The latter takes industry and firm representations as inputs, computes the probability of assigning a firm to different industries, and assigns the firm to the industry with the highest probability. We conduct extensive evaluations with two widely used ICSs and demonstrate the superiority of our method over prevalent existing methods.
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