Deep Learning-Based Imputation Method to Enhance Crowdsourced Data on Online Business Directory Platforms for Improved Services

IF 5.9 2区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Da Xu, P. J. Hu, Xiao Fang
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引用次数: 1

Abstract

ABSTRACT Popular online business directory (OBD) platforms, such as Yelp and TripAdvisor, depend on voluntarily user-submitted data about various businesses to assist consumers in finding appropriate options for transactions. Yet the crowdsourced nature of such data restricts the availability of attribute values for many businesses on the platform. Crowdsourced data often suffer serious completeness and timeliness constraints, with negative implications for key stakeholders such as users, businesses, and the platform. We thus develop a novel, deep learning–based imputation method, premised in institutional theory, to estimate missing attribute values of individual businesses on an OBD platform. The proposed method leverages a deep model architecture and considers both inter-business and inter-attribute relationships for imputations. An application to a Yelp data set reveals our method’s greater imputation effectiveness relative to prevalent methods. To illustrate the method’s practical utilities and values, we further examine the efficacy of business recommendations empowered by its imputed business attribute values, in comparison with those enabled by data imputed by benchmark methods. The results affirm that the proposed method substantially outperforms benchmarks for imputing missing attribute values and empowers more effective business recommendations. This study addresses crucial, prominent completeness and timeliness constraints in crowdsourced data on OBD platforms and offers insights for downstream applications that can improve user experiences, firm performance, and platform services.
基于深度学习的在线企业目录平台众包数据增强方法改进服务
流行的在线商业目录(OBD)平台,如Yelp和TripAdvisor,依赖于用户自愿提交的各种企业数据来帮助消费者找到合适的交易选择。然而,这些数据的众包性质限制了平台上许多企业获取属性值的可用性。众包数据通常会受到严重的完整性和及时性限制,这对用户、企业和平台等关键利益相关者都有负面影响。因此,我们在制度理论的前提下,开发了一种新颖的、基于深度学习的imputation方法,来估计OBD平台上单个企业缺失的属性值。该方法利用了深度模型体系结构,并考虑了业务间和属性间的关系。对Yelp数据集的应用表明,相对于流行的方法,我们的方法具有更高的imputation有效性。为了说明该方法的实际效用和价值,我们进一步研究了由其输入的业务属性值支持的业务建议的有效性,并将其与由基准方法输入的数据支持的业务建议进行了比较。结果证实,所提出的方法在计算缺失属性值方面大大优于基准,并提供更有效的业务建议。本研究解决了OBD平台众包数据中关键的、突出的完整性和及时性限制,并为下游应用提供了见解,可以改善用户体验、公司绩效和平台服务。
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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来源期刊
Journal of Management Information Systems
Journal of Management Information Systems 工程技术-计算机:信息系统
CiteScore
10.20
自引率
13.00%
发文量
34
审稿时长
6 months
期刊介绍: Journal of Management Information Systems is a widely recognized forum for the presentation of research that advances the practice and understanding of organizational information systems. It serves those investigating new modes of information delivery and the changing landscape of information policy making, as well as practitioners and executives managing the information resource.
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