| Literature DB >> 36157980 |
Umme Hani1, Ananda Wickramasinghe1, Uraiporn Kattiyapornpong1, Shahriar Sajib2.
Abstract
Data-driven innovation (DDI) initiatives by microfinance institutes have transformed the global poverty alleviation landscape. Despite the fact that relationship building is one of the primary goals of DDI initiatives in microfinance operations, there has been little research on the dimensions of relationship quality. This study examines how DDI initiatives recognize and incorporate relational dimensions in their service offerings to alleviate poverty. Drawing on a systematic literature review, thematic analysis and interviews with 20 microfinance managers, this research explores the relationship quality parameters that need to be leveraged. Grounded in the resource-based theory, the findings of this study confirm trust and commitment as two key relationship capabilities. The findings contribute to a better understanding of how microfinance institutes can use DDI to achieve sustainable competitive advantage.Entities:
Keywords: Big data analytics; Commitment; Data-driven innovation; Relationship innovation; Sustained competitive advantage; Trust
Year: 2022 PMID: 36157980 PMCID: PMC9485015 DOI: 10.1007/s10479-022-04943-6
Source DB: PubMed Journal: Ann Oper Res ISSN: 0254-5330 Impact factor: 4.820
Important studies on data-driven service innovation
| Study focus | Study | Is there any study on relationship innovation in microfinance? | Key findings on data-driven innovation |
|---|---|---|---|
| The potential scope of data analytics in developing data products | Davenport and Kudyba ( | No | By combining data analytic capability and increasing valuable data assets, companies can offer value-added information as differentiated products or service offering to generate a higher level of revenue by reaching a more significant customer segment |
| Personalized recommendation system for an online learning platform | Xiao et al. ( | No | Authors suggest that through association rules, collaborative filtering and content filtering, personalized recommendation systems effectively provide the learners with customized assistance to address their individual preferences in an online learning platform |
| Scope of customer-generated data in digital marketing and service innovation | Balayan and Tomin ( | No | The article highlights the current dominant digital marketing practices adopted by platform-based service providers to continuously collect data from users' interactions for monetizing purposes |
| Application of BDAC on the online streaming platform | Gilmore ( | No | The author analyses the underlying mechanism that online-based platforms utilize data produced by the customers' interactions, such as clicks, with a platform such as Netflix to generate customized experiences and leverage the data to refine further and improve algorithms used for the recommendation system |
| An empirical study on the impact of BDAC on BMI | Ciampi et al. ( | No | Big Data Analytics Capabilities (BDAC) offer essential tools and technologies to achieve competitiveness in a highly dynamic marketplace. This study finds a positive impact of BDAC on Business Model Innovation (BMI). It suggests that BDAC has significant potential for creating value for the companies and their stakeholders |
| Role of BDA in e-commerce | Alrumiah and Hadwan ( | No | The authors suggest that electronic vendors utilize Big Data Analytics (BDA) to achieve a competitive advantage and increase revenue outcomes. Further, the study confirms that e-commerce companies aim to understand customers' behavior to improve customer loyalty through processing and analyzing big data |
| A quantitative study on big data analytic capability on service innovation | Xiao et al. ( | No | The authors find a positive impact of Big Data Analytics Capabilities, namely big data analytics personnel capabilities (BDAP) and big data analytics technical capabilities (BDAT), on service innovation mediated by dynamic capabilities. Further, the study highlights the significance of digital platform capabilities in performing service innovation |
| Consumer trust-building of e-retailers | Chen and Dibb ( | No | The authors examined online retailers and found that trust is important in developing favorable behavioral attitudes in customers and intentions towards the e-retailer's website. The study further reveals user-friendliness of the interface, security, assurance of privacy, and superior product information quality as quality features that affect consumers' trust |
A literature review on big data and relationship quality in financial and microfinance services
| Study focus | Study | Context | Key findings and research gaps |
|---|---|---|---|
| Relationship quality dynamics in social banking | Hani et al., ( | Social banking | The study identifies respect, reciprocity, and trust as critical relationship quality dimensions. In addition, it discusses how different channels (such as mobile and face-to-face) can be used to continue a long-term relationship. However, it did not discuss relationship innovation using big data |
| Relationship quality of online banking customers in Spain and Mexico | Olavarría-Jaraba et al. ( | Online banking | Considering the context of online channels within an empirical context of the Spanish and Mexican banking industry, the authors find that market orientation, knowledge management, and customer perception about investment in customer relationships positively affect relationship quality. Therefore the findings are essential for long-term relationship management with the customers |
| Opportunities, dangers, and challenges of using digital technologies and big data in the MFI | Baledh and Peña ( | Microfinance | The study discusses the potential to increase efficiency, productivity, and customer service by offering affordable, convenient, and secure MFI services using the widespread use of ICT, such as mobile phones and tablets. However, it does not discuss the innovation of relationships using such technologies |
| The digital strategy of large financial institution | Sia et al. ( | Financial service | Highlighting the customers’ increasing demand for digital products by explicating the case of a large Asian bank DBS, the authors articulate the critical capabilities needed to pursue an effective business strategy for the digital technological landscape |
| Factors of customer trustworthiness within the Microfinance industry | Aggarwal ( | Microfinance | Although the authors confirm the utilization of demographic information of borrowers to determine the trustworthiness of repayment of microcredit loans, the study is not focused on relationship innovation using big data |
| B2C relationship quality in online banking services | Brun et al. ( | Online banking | Based on an investigation of online banking services, the authors find that trust, satisfaction, and commitment are three dimensions of online relationship quality between consumers and banks. These dimensions of relationship quality will assist financial institutions in fostering long-term relationships through determining the relational positioning to improve targeted marketing strategies and activities |
| Importance of cell phones and relationships for agricultural entrepreneurship in East Africa | Mehta et al. ( | Microfinance | Although the study highlights trust as an important dimension of relationship quality and the importance of digital technologies for entrepreneurs in a developing country did not focus on relationship innovation using big data |
| Relationship marketing within online banking service | Lang and Colgate ( | Online banking | The authors highlight the importance of relationship marketing in the financial service industry. The study finds evidence of information technology and information technology channels in fostering solid relationships with customers |
Fig. 1Proposed relationship innovation model using big data analytics