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Marketing strategies for fintech companies: text data analysis of social media posts
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Publication Year
2023-01-17
Publisher
Emerald Publishing
Citation
Management Decision, Vol.61, pp.243-268
Keyword
ERRCFintechGloVeSocial mediaText data analytics
All Science Classification Codes (ASJC)
Business, Management and Accounting (all)Management Science and Operations Research
Abstract
Purpose: This study aimed to present the methodology of the text data analysis to establish marketing strategies for fintech companies in a practical way. Specifically, the methodology was presented to convert customers' review data, which consisted of the text data (unstructured data), to the numerical data (structured data) by using a text mining algorithm “Global Vectors for Word Representation,” abbreviated as “GloVe”; additionally, the authors presented the methodology to deploy the numerical data for marketing strategies with eliminate-reduce-raise-create (ERRC) value factor analytics. Design/methodology/approach: First, the authors defined the background, features and contents of fintech services based on a review of related literature review. Additionally, they examined business strategies, the importance of social media for fintech services and fintech technology trends based on the literature review. Next, they analyzed the similarity between fintech-related keywords, which represent the trends in fintech services, and the text data related to fintech corporations and their services posted on Facebook and Twitter, which are two of the most popular social media globally, during the period 2017–2019. The similarity was then quantified and categorized in terms of the representative global fintech companies and the status of each fintech service sector. Furthermore, the similarity was visualized, and value elements were rebuilt using ERRC strategy analytics. Findings: This study is meaningful in that it quantifies the degree of similarity between customers' responses, experiences and expectations regarding the rapidly growing global fintech firms' services and trends in fintech services. Originality/value: This study suggests a practical way to apply in business by providing a method for transforming unstructured text data into structured numerical data it is measurable. It is expected that this study can be used as the basis for exploring sustainable development strategies for the fintech industry.
ISSN
0025-1747
Language
eng
URI
https://dspace.ajou.ac.kr/dev/handle/2018.oak/33068
DOI
https://doi.org/10.1108/md-09-2021-1183
Fulltext

Type
Article
Funding
Funding: This work was supported by the Ministry of Education of the Republic of Korea and the National Research Foundation of Korea (NRF-2021S1A5A8065886).
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Park, Min Jae  Image
Park, Min Jae 박민재
Department of Business Intelligence
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