在线外卖的共享经济:通过语义网络分析揭示顾客体验的潜在属性

Hepinda Fajari Nuharini, M. S. Purwanegara
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引用次数: 0

摘要

研究目的:本研究旨在揭示在线外卖(OFD)共享经济中客户体验的潜在属性。设计/方法/方法:在收集了来自Google Play商店的45116条评论后,我们进行了语义网络分析。利用Python编程语言和文本挖掘从在线评论中提取关键词,进行频率分析,并使用Ucinet 6.0进行迭代相关性收敛(CONCOR)分析。研究发现:关键词“食物”、“订单”、“司机”和“应用”的频率和中心性最高。客户体验属性被分为四类:“交付程序”、“OFD平台”、“支付过程”和“货币价值”。理论贡献/独创性:本研究利用语义网络分析提供了一种相关的、新颖的客户体验评估方法,应在学术研究中得到更广泛的应用。东南亚背景下的管理启示:鉴于东南亚在线食品配送的预测增长以及与印度尼西亚共享的文化价值观,本研究的结果可能对在线食品配送企业共享经济的可持续性发展战略产生影响。研究局限和启示:本研究只收集了来自Google Play商店的在线用户评论,并且由于该方法侧重于词频,因此缺乏对单词附加含义的理解。
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Sharing Economy of Online Food Delivery: Revealing the Underlying Attributes of the Customer Experience through Semantic Network Analysis
Research Aims: This study aimed to reveal the underlying attributes of the customer experience in the sharing economy of online food delivery (OFD). Design/Methodology/Approach: After collecting 45,116 reviews from the Google Play store, a semantic network analysis was conducted. Python programming language and text mining were utilised to extract keywords from online reviews, a frequency analysis was performed, and a CONvergence of iterated CORrelations (CONCOR) analysis was conducted using Ucinet 6.0. Research Findings: The keywords ‘food,’ ‘order,’ ‘driver,’ and ‘application’ had the highest frequency and centrality. Customer experience attributes were classified into four clusters: ‘Delivery Procedure’, ‘OFD Platform’, ‘Payment Process’ and ‘Value of Money’. Theoretical Contribution/Originality: This study provides a relevant and novel assessment of customer experience using semantic network analysis, which should be more broadly used in academic research. Managerial Implications in the Southeast Asian Context: Given the predicted growth of online food delivery in Southeast Asia and shared cultural values with Indonesia, the findings of this study may have implications for developing strategies of sustainability in the sharing economy of online food delivery enterprises. Research Limitations & Implications: This study only collected online customer reviews from the Google Play store, and because the method focused on word frequency, understanding of the additional meaning of words is lacking.
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