Signals that sharing economy service providers should send out: The case of codementor

IF 5.5 Q1 MANAGEMENT Asia Pacific Management Review Pub Date : 2024-09-01 DOI:10.1016/j.apmrv.2023.12.002
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Abstract

A sharing economy is an economy that enables individuals to share their assets with or provide services to those in need through online platforms. Information asymmetry prevents consumers from effectively choosing the best service provider for their needs. Therefore, service providers should offer high-quality signals to address this problem. Unlike other studies, which have focused on platforms for sharing tangible assets (e.g., houses), in this study, we focused on platforms for sharing intangible assets (e.g., knowledge). Specifically, we adopted signaling theory to develop a research model for determining the internal and external signals that service providers should provide on their platforms to attract customers. Public data were collected from the Codementor platform by using Python web scraping. After rigorous data processing, the data obtained from 612 service providers were analyzed to identify key signals. Four crucial internal signals were identified: availability of follower information, availability of reviews, free trial, and service cost. In addition, two crucial external signals were identified: number of projects accomplished and endorsements from other websites related to mentor performance. Overall, our findings expand the application of signaling theory to intangible asset transactions and enable service providers to identify the essential signals that they should provide on their sharing economy platforms to increase the number of consumers interested in their services.
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共享经济服务提供商应发出的信号:codementor案例
共享经济是一种使个人能够通过在线平台与有需要的人共享资产或为其提供服务的经济。信息不对称阻碍了消费者根据自身需求有效选择最佳服务提供商。因此,服务提供商应提供高质量的信号来解决这一问题。与其他研究侧重于有形资产(如房屋)共享平台不同,本研究侧重于无形资产(如知识)共享平台。具体而言,我们采用信号理论建立了一个研究模型,以确定服务提供商应在其平台上提供哪些内部和外部信号来吸引客户。我们使用 Python 网络刮擦技术从 Codementor 平台收集公共数据。经过严格的数据处理后,对从 612 家服务提供商处获得的数据进行了分析,以确定关键信号。确定了四个关键的内部信号:是否有追随者信息、是否有评论、免费试用和服务成本。此外,我们还发现了两个关键的外部信号:已完成项目的数量和其他网站对导师表现的认可。总之,我们的研究结果拓展了信号理论在无形资产交易中的应用,使服务提供商能够确定他们应在共享经济平台上提供的基本信号,以增加对其服务感兴趣的消费者数量。
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来源期刊
CiteScore
8.00
自引率
4.50%
发文量
47
期刊介绍: Asia Pacific Management Review (APMR), peer-reviewed and published quarterly, pursues to publish original and high quality research articles and notes that contribute to build empirical and theoretical understanding for concerning strategy and management aspects in business and activities. Meanwhile, we also seek to publish short communications and opinions addressing issues of current concern to managers in regards to within and between the Asia-Pacific region. The covered domains but not limited to, such as accounting, finance, marketing, decision analysis and operation management, human resource management, information management, international business management, logistic and supply chain management, quantitative and research methods, strategic and business management, and tourism management, are suitable for publication in the APMR.
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