Customer Data-driven Business Models: A Case Study in the Retail
Industry
Maider Elorza and Eduardo Castellano
Faculty of Business Studies, Mondragon Unibertsitatea, Oñati, Spain
Keywords: Customer Data Monetization, Strategy, Business Model, Retail Industry, Case Study.
Abstract: In today’s data era, the retail industry has increased the possibility of acquisition of a large volume of customer
data, becoming more achievable its monetization. This paper develops a literature research and an empirical
study identifying the different strategies that organizations perform and their instantiation by a concrete
retailer. In each of these strategies, there have been identified the reasons for the case study to implement
them as well as the specific instantiation performed. The research enriches the literature twofold; (1) by adding
the Retail Media strategy as an indirect customer data monetization strategy; (2) by identifying relevant
elements of the investment-cost-revenue structure for the different customer data monetization strategies.
1 INTRODUCTION
In recent years, companies are beginning to
investigate the possibility of exploiting their data to
improve their operating accounts (Parvinen et al.,
2020). In fact, numerous authors point out that in
2016, 30% of businesses worldwide begun to carry
out data exploitation (Moore, 2015).
The retail industry in Spain is no stranger to the
changes that are taking place at a global and sectoral
level in terms of data exploitation (Teijelo, 2019).
Nowadays, the Spanish retail market is very
competitive (Teijelo, 2019). The existing pressure
due to the price war in the sector, coupled with the
heavy investments being made to gain or at least not
lose market share, have caused a significant drop in
profitability, forcing retailers to a permanent
innovation on the search of different alternatives to
generate new revenue streams (Forrester, 2019).
However, a report made in 2019 shows that only 15%
of retailers globally were able to use insights to
generate new revenue through data monetization
(Forrester, 2019). Aspects such as the management of
the data sale price strategies are activities that are
currently quite unknown by companies, since until
now the data has not had a relevant strategic value
and, therefore, there was no express concern about it
(Castellano and López, 2020).
The literature to date has largely focused on
theoretical and descriptive studies about the terms
data monetization (Gartner, 2020; Shukla and Dubey,
2014), monetization strategies and models (Laney et
al., 2015; Moore, 2015; Walker, 2015; Woerner and
Wixom, 2015). However, how organizations design
their cost and revenue structure for monetizing
customer data directly and indirectly has attracted less
attention in the academic literature. The few studies
that do discuss the issue (Brinch, 2018; Najjar and
Kettinger, 2017; Yu and Zhang, 2017) operate at the
conceptual level or do not focus on the monetization
of customer data.
Therefore, in this paper we focus on better
understanding possible data-driven business models
that retail companies can use to obtain new revenue.
To do so, we study the different strategies in which
retail organizations monetize customer data. Our
interest lies in the reasoning companies apply when
choosing from different monetization business
models and how they have designed their cost and
revenue structure.
To do so, an empirical study has been carried out
in one of the most important commercial distribution
companies for consumer goods and services in Spain,
which has its headquarters in the Basque Country,
Spain (hereinafter referred to as the Retail-Business).
The organization of the paper is as follows:
Section 2 overviews the identified scientific literature
about data monetization, its strategies and revenue
and cost structure; Section 3 describes the
methodological approach followed; Section 4
Elorza, M. and Castellano, E.
Customer Data-driven Business Models: A Case Study in the Retail Industry.
DOI: 10.5220/0011138800003280
In Proceedings of the 19th International Conference on Smart Business Technologies (ICSBT 2022), pages 101-110
ISBN: 978-989-758-587-6; ISSN: 2184-772X
Copyright
c
2022 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
101
presents the results of the study; Section 5 discusses
de results, and; Section 6 details the conclusions.
2 LITERATURE REVIEW
The trend towards digitization, the emergence of new
and improved technologies (e.g. Internet of Things,
big data, cloud computing, data analytics, …) and
factors such as increased connectivity and user
mobility have risen the possibility of obtaining a
significant amount of quality data, connected in real
time and available at any time (Brown et al., 2012;
Manyika et al., 2011; Spijker, 2014; Yousif, 2015).
Thomas and Leiponen (2016) point out that data
ecosystems will profoundly disrupt businesses in
nearly every consumer-centric industry. Other
authors recognise the potentially broad impact of big
data across multiple industries (Chen et al., 2012;
Mayer-Schönberger and Cukier, 2013).
In particular, in the retail industry, due to the
characteristics of organisations and their consumer
orientation, a large volume of heterogeneous
customer data is collected. This volume of data
implies deeper knowledge and detailed information
on the individual-customer level, e.g. what do they
consume, how and where do they do it, when do they
do it, with whom do they consume, etc. (Dekimpe,
2020; Erevelles et al., 2016; Hofacker et al., 2016).
Therefore, the use of big data technologies is core for
the management of this large amount of data, as it
allows companies to achieve greater transparency,
more possibilities for collaboration, better
personalisation of products/services and more
evidence-based management (Brown et al., 2012;
Manyika et al., 2011; McAfee and Brynjolfsson,
2012).
It is also worth mentioning that technological
progress has drastically reduced the cost of data
acquisition and storage (Carrière-Swallow and
Haksar, 2019; Liu and Chen, 2015), ensuring that the
variety of data is not the bottleneck for data
exploitation (Spijker, 2014).
Moreover, Carrière-Swallow and Haksar (2019)
and Najjar and Kettinger (2017) argue that the change
in business environment has been driven not only by
the vast amount of data, but also by advances in
analytical techniques enabling more advanced
processing to analyse in real time the value from the
available data. In addition, the increased capabilities
for analysing, exploiting and sharing data have made
possible new strategies to monetize data (Najjar and
Kettinger, 2017; Parmar et al., 2014).
It is true that the concept of reusing, sharing and
exchanging data is not new (Moore, 2015; Parmar et
al., 2014). However, a critical analysis of the
scientific literature on data monetization shows that
there is a lack of specificity in its definition (Woerner
and Wixom, 2015). Some authors mention that data
monetization is a value creation process (Najjar and
Kettinger, 2017; Prakash, 2014; Shukla and Dubey,
2014) which improves the competitiveness and
differentiation of the organization (Mohasseb, 2014).
Likewise, many academics agree that data
monetization is the process of using data to obtain
quantifiable economic benefits, either through
internal use of data (indirect data monetization) or
external use of data (direct data monetization)
(Gartner, 2020; Wixom and Ross, 2017).
To take advantage of data monetization,
companies should create and develop new
appropriate data-driven business models, adopting
and designing different strategies to create additional
value (Hartmann et al., 2016). According to some
authors, companies can pursue, at the same time,
more than one strategy when monetizing data (Laney
et al., 2015). However, in practice, the adoption of
each strategy requires specific organizational changes
and specific data and technology management
upgrades. Therefore, some authors propose to
identify the most viable opportunity and start from
there (Wixom and Ross, 2017).
In the scientific literature, different classifications
and types of customer data monetization strategies
can be identified depending on the authors (Laney et
al., 2015; Walker, 2015; Wixom and Ross, 2017;
Woerner and Wixom, 2015), but all of them have the
same approach, which is reflected in the study carried
out by Gartner (Moore, 2015). In this study two types
of strategies can be differentiated:
Direct data monetization: This strategy occurs
when the company sells or exchanges the
customer data, giving third-party companies
access to this asset in exchange of a price agreed
between the parties (Moore, 2015). The main
objective of this strategy is to obtain new revenue
streams from selling raw or processed data
(Moore, 2015).
Indirect data monetization: In this case, the
company uses its own customer data internally, to
improve processes, efficiency, decision-making,
or even offer new products or services to
consumers (Moore, 2015). Therefore, in this case,
the data itself may not be sold, but the main
objective of this strategy is still to obtain new
revenue from internal data processing in order to
reduce costs and increase revenues through selling
ICSBT 2022 - 19th International Conference on Smart Business Technologies
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new products and services (Wells and Chiang,
2017).
When an organization monetizes customer data
directly, it must be decided to what extend the data
will be transformed through analytics, how the data
will be visualised, distributed, and to whom (Laney et
al., 2015). The methods of direct data monetization
include:
Sale or exchange of raw data: The most direct way
to monetize data is to sell it (Spijker, 2014). Under
this strategy, companies such as PatientsLikeMe
sell their data to suppliers (PatientsLikeMe,
2019). Other companies from different sectors,
such as telecommunications (Vodafone and
Telefónica) or automotive (Toyota) are beginning
to explore the sale of data to third-party
companies, both to companies from different
sectors and to advanced service companies which
are specialized in combining and analysis of data
from multiple sources (Lewis and Mckone, 2016;
Thomas and Leiponen, 2016).
Sale or exchange analysed data: Although the
previous option is usually the first approach of
companies in the direct monetization of data, once
they mature their analytics competencies, most of
the companies evolve to this second option in
order to develop a more valuable proposition
(Spijker, 2014; Thomas and Leiponen, 2016).
Companies like Tesco, Kroger, etc. are nowadays
carrying out this type of strategy (Dunnhumby,
2019). Normally, under this option, companies do
not usually provide access to the data to all data
consumers, or at least not in the same way (Najjar
and Kettinger, 2017).
Regarding the indirect monetization, the
important aspect of this type of monetization is to
measure the accrued economic revenue, since without
this measurement, it is difficult, at best, to say that the
customer data is really being monetized (Laney et al.,
2015). The methods of indirect monetizing include:
Maintain data ownership: In this case, data is used
to increase the quality of decision-making and
efficiency and improve operational processes and
customer experience (Laney et al., 2015; Walker,
2015). The main objective of this strategy is to
reduce costs (Wells and Chiang, 2017).
Companies such as Tesco, Carrefour, Kroger,
Amazon are carrying out this type of strategy
(Dunnhumby, 2019; Rus, 2020; Using Beacons,
2015).
Use of data for the prescription of third-party
products/services: This typology consists of
companies taking advantage of customer
knowledge and segmentation capacity to offer
consumers new products/services, not included in
the core business, which are operated by third-
parties. Thanks to this relationship, between the
company and the third-party, the client gets
product/service which are improved compared to
those offered on the market (e.g. price offers,
features), the third-party accesses a new market
with high precision and the company can get fees
for the transactions that are carried out (Laney et
al., 2015; Walker, 2015). For example, Carrefour
is working with this type of strategy (Carrefour,
2021).
Information-based products or services: This
typology is also known as data-wrapping, which
consists of incorporating customer data-based
information into the current products or services,
or develop new products/services, to increase
customer loyalty (Wixom and Ross, 2017). For
example, BBVA offers its customers a
personalized financial health tool that is integrated
into its app (Wixom et al., 2020). The servitization
phenomenon is also be included in this typology
(Opresnik and Taisch, 2015).
The results from direct and indirect data
monetization stem from a clear data monetization
strategy, combined with the investments that an
organization has to make in terms of data
management (Wixom and Ross, 2017). The
investments made to enable data monetization must
be balanced with respect to the expected revenue
generation, because, otherwise, data monetization
business models would not be economically a viable
option. Therefore, the development of a data
monetization strategy, in part, depends on the current
technological (e.g. hardware, software, and
networking capabilities) and analytical (e.g.
mathematical and business analytical knowledge and
skills of the employees) situation in the organization
(Najjar and Kettinger, 2017). For some organizations
data monetization does not suppose huge investments
as they already have the necessary technological
capabilities, and may only require reallocation of
current workers and talent acquisition (e.g. data
managers, data scientists, quality specialists,
technical engineers, analysts, statisticians)
(Hanafizadeh and Harati Nik, 2020; Opher et al.,
2016). Moreover, the investments may vary
depending on the chosen strategy (Yu and Zhang,
2017).
Additionally, when an organization implements a
data monetization strategy, different variable costs
are generated (Mohasseb, 2014; Yu and Zhang,
Customer Data-driven Business Models: A Case Study in the Retail Industry
103
2017). These costs correspond to the process that a
company must follow throughout the lifecycle of the
data, i.e. data generation, data acquisition, data
storage, data pre-processing, data analysis and data
visualization (Faroukhi et al., 2020b; Li and
Raghunathan, 2014).
The technical and analytical capabilities needed
will depend on the strategy or strategies that the
company wants to follow, since depending on it the
process would be different (see Figure 1), and also the
cost that it has to be assumed (Najjar and Kettinger,
2017). Indeed, if the company wants to monetize raw
data, it does not necessarily need any processing
tools, thus only data acquisition and storage
infrastructures is needed (Faroukhi et al., 2020a). In
general, higher-quality data implies more data
processing and higher costs (Yu and Zhang, 2017).
Figure 1: Lifecycle of data for its monetization according to
Faroukhi, El Alaoui, Gahi, and Amine (2020a).
In addition to this costs, depending on the
company situation or chosen strategy, other costs may
arise, such as subcontracting of companies
specialized in data management, cost for preparing
contracts and NDAs with suppliers and third-parties
(Najjar and Kettinger, 2017).
According to the revenue, as mentioned before,
the main objective of data monetization is to obtain
new revenues. In the case of the direct data
monetization, different price models are established,
e.g. freemium models (data consumers have limited
access to data for free and pay for the premium
services), packaging models (data consumers buy a
certain amount of data at a fixed price), pay-per-use
models (data consumers pay for data services based
on their usage), flat-fee models (data consumers pay
a subscription fee in return for access to data
services), two-part-tariff models (data consumers pay
a fixed basic fee that becomes supplemented by an
additional fee when their usage exceeds some
predefined quota) (Hartmann et al., 2016; Yu and
Zhang, 2017). However, there are some common
weaknesses in existing data-pricing mechanisms,
since there is a lack of a standardized pricing model
(Yu and Zhang, 2017).
As for the indirect data monetization, the revenue
generated is usually not so evident, since it is not
normally perceived directly (Laney et al., 2015).
Moreover, the existing literature mentions that by
using this kind of strategy an organization can obtain
indirect revenue by improvements in customer
experience and loyalty, processes, efficiency,
decision making (Brinch, 2018; Woerner and Wixom,
2015), but does not establishes how an organization
can measure the revenue obtained due to the indirect
data monetization.
3 METHODOLOGY
3.1 Research Approach
Research on data monetization and data-driven
business models has primarily appeared as conceptual
papers (Moore, 2015; Prakash, 2014; Shukla and
Dubey, 2014; Wixom, 2014; Woerner and Wixom,
2015), single-case studies (Najjar and Kettinger,
2017) and multiple-case studies (Parvinen et al.,
2020). Even so, to date, there are few scientific
studies on business models from the perspective of
consumer data monetization in the retail industry
(Moore, 2015; Parvinen et al., 2020; Walker, 2015)
and none identified by the authors in the Basque
Country (where the headquarters of the retail under
investigation is located). Additionally, there is a lack
of scientific literature regarding the revenue and cost
structure of these models (Brinch, 2018; Najjar and
Kettinger, 2017; Yu and Zhang, 2017). Thus, in order
to develop an empirically more comprehensive
perspective on this new phenomenon, this research
has adopted a qualitative research approach. Given its
exploratory nature, qualitative methods allows an in-
depth study in a real and concrete and tangible context
on a specific place (Maxwell, 2005). In this study, it
have been combined indirect analysis of internal and
external documentary evidence as well as direct semi-
structured interviews techniques to provide a wide-
ranging view of data monetization practices in the
retail industry (Maxwell, 2005).
To achieve this purpose, it has been performed an
investigation in the context of a case study within a
retail company, enabling the analysis and
understanding of the relevant factors that take part in
the monetization of customer data.
3.2 Data Collection
For data collection, a triangulation methodology has
been used to increase the credibility and validity of
the research findings (Eisenhardt, 1989).
On the one hand, both internal and external
documents have been analysed. Regarding the
internal documents such as reports, studies and files
of the organization (e.g. web pages, presentations and
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images) have been examined. Regarding the external
ones, specialized publications and reports have been
analysed.
On the other hand, to go more deeply in the
empirical investigation, there have been conducted 11
semi-structured interviews with directors of Digital
Transformation and Innovation, Data Office,
Marketing and Customer areas, and with the six
managers of the projects identified in the case study.
The sample was defined based on selective or
intentional sampling (Schatzman and Strauss, 1973),
covering key managers in relation to business models
transformation, digital transformation, data
monetization and marketing management, in order to
gather a broad range of business perspectives.
The interviews followed a semi-structured
guideline that included the following topics:
Data culture in the Retail-Business.
Data monetization strategies currently carried out
in the Retail-Business; reasons and description.
Revenue and cost structure of the implemented
models.
Data monetization strategies not carried out in the
Retail-Business: reasons.
The interviews were documented by audio-
recording after obtaining participants’ consent to
collect and recording.
3.3 Data Analysis
The analysis started as soon as the first research
evidence emerges; documents and interviews. This
phase consists on the registration and classification of
the evidences that have been obtained from the
multiple sources in a database of the case.
For the categorization of all the evidences, Atlas
tool was used to codify and categorize the large
volume of written materials and interviews
transcriptions, as well as to identify patterns. The data
was categorized into the main four topics established
in the interview guide.
4 RESULTS
Under the digital plan of the Retail-Business, since
2017 the Digital Transformation and Innovation area
have been exploring different alternatives for
generating new revenue streams based on the
exploitation of customer data. In this way, the first
steps in the development of new business models are
being carried out.
Moreover, due to the interest in understanding
how to extract value from data, the need for data
governance, and becoming a data-driven
organization, the Retail-Business has a Data Office
area and a Customer area. Specifically, in these two
areas are carried out the exploration and
implementation of the different monetization models.
Additionally, the Management Board is firmly
committed to developing these types of models and,
therefore, has provided resources (e.g. people,
budget) to the projects. Likewise, the Retail-Business
points out the importance of experimentation, through
piloting specific use cases. In other words, it
emphasizes that before start making large
investments in technology, processes, and personnel,
prototypes of use cases must be progressively
launched and validated.
The utilization of data as an asset to generate new
revenue is not new for the Retail-Business, however,
there is still a long way to go to establish new business
models that can extract the maximum benefit from
customer data. The following points detail which of
the direct and indirect consumer data monetization
strategies, identified in the literature, are being carried
out in the Retail-Business and which are not, in
addition to specifying the cost and revenue structure
of each of them.
4.1 Direct Data Monetization
4.1.1 Sale of Raw and Analysed Data to
Suppliers
According to the sale of raw and analysed data to
suppliers, the Retail-Business started commercialize
a collaborative platform in 2019, where information
about customers’ consumption patterns is offered to
suppliers. Through this platform, suppliers benefit by
being able to make more accurate demand predictions
based on the analysis of customer data, and, therefore,
the Retail-Business sales have also increased.
Moreover, this service allows the Retail-Business to
develop a collaborative commercial strategy with
suppliers by sharing knowledge and advancing
together in the management of clients, with the aim
of improve customer experience.
The service is offered though a subscription plan,
distinguished in two different levels of data
granularity and reporting capability:
Basic level: Aimed at unusual suppliers or those
with less information analysis capabilities. There
is offered basic information to know the diagnosis
situation of the brand by product category and
clients.
Customer Data-driven Business Models: A Case Study in the Retail Industry
105
Premium level: Aimed at suppliers that have
incorporated the use of information in their
decision making. They are offered complete and
detailed analyses with data up to the store level
and the possibility of customer segmentation,
identifying growth opportunities in the Retail-
Business.
In order to carry out this model, an initial
investment was made in terms of the design and
development of the platform. On the one hand, the
hardware infrastructure was prepared to
accommodate the installation and integration of the
software. On the other hand, work was done on the
installation of the software, which is made up of
several software packages in charge of satisfying
different functions such as data acquisition, automatic
exportation, preparation, storage, and aggregation.
Likewise, it was necessary to invest in the design and
development of predictive models and dashboards
with relevant indicators that facilitate descriptive
analysis. All this was carried out with the
collaboration of an expert company in Artificial
Intelligence. Concerning the current costs, they come
from preparing contracts and NDAs, personnel cost
(audit and monitoring of the project) and the
subcontracting of the expert company in Artificial
Intelligence for the technical and analytical tasks e.g.
preparation of the data infrastructure, predictive
analytics and visualization. Regarding the current
direct revenues, they are obtained by charging
providers for the annual subscription to the platform.
For the subscription plan it has been established a
tiered pricing model, which consist on differentiating
the price depending on the contracted service, i.e.
basic level (cheaper) or premium level (more
expensive). In addition, this model has led to growth
in the Retail-Business annual retail sales.
4.1.2 Sale of Raw and Analysed Data to
Third-parties
Regarding the sale of raw and analysed data to third-
parties, currently, the Retail-Business avoids selling
customer data to companies from other sectors or
advanced service companies, in order to protect this
valuable assets, as well as due to security and privacy
concerns and potential reputational risks.
4.2 Indirect Data Monetization
4.2.1 Maintain Data Ownership
Regarding this strategy, the Retail-Business is
carrying out two principal projects. One of them has
the aim of creating a personalized omni-channel
relationship with the customer, developing a global
view of the customer throughout the customer
journey. The Retail-Business wants to interact with
customers in a personalized and seamless way across
channels to offer relevant customer purchase
experience and thus increase the annual sales. This
project is currently in a discovery phase, with a
company specialized in customer data science, so the
costs and revenues of this model are yet to be
estimated. The technological base that the Retail-
Business currently has to carry out this strategy is not
suitable, thus the initial investment in technology and
systems seems to be relevant.
The other project consists of improving the
efficiently the cashiers planning, predicting the
number of open cash registers needed in the store at
any time. The objective of this strategy is to improve
the efficiency of the point of sale processes. In order
to make these predictions, the variables used in
advanced analytics are e.g. purchase receipts, number
and types of purchases made by customers by time
slot. This model is being carried out internally
without the collaboration of third-parties, so the
associated costs are both technical and analytical,
assuming the costs of acquisition, processing,
storage, analysis and visualization of data. In terms of
revenue, no direct or indirect revenue are associated
with it, but thanks to a better planning of the need of
cashiers at any time, personal costs are expected to be
reduced.
4.2.2 Use of Data for the Prescription of
Third-party Services
Considering the use of data for the prescription of
third-party services, the Retail-Business since 2021 is
taking advantage of its knowledge about its customers
and its segmentation capability, reaching an alliance
with a telecommunication company to offer to the
customer members services operated by the third-
party. This model is based on a win-win-win
principle, where:
Customers get telecommunication service with
price advantages regarding those offered on the
market.
The telecommunication company accesses to a
new market of potential customers with high
precision.
The Retail-Business obtains new revenues and
offers services that are not currently covered in the
company core business.
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It must be taken into account that in no case the
Retail-Business provides the raw data of customers to
the third-party, but rather it gives access to the
telecommunication company to a new market.
Specifically, based on the target audience that the
company is looking for, the Retail-Business identifies
in its database the customers who belong to this target
and contact them to ask if they would be interested in
being contacted by the telecommunication company
to obtain the services cheaper than on the market. In
the case that the client is interested, the person is put
in contact automatically with the telecommunication
company. Therefore, the retailer works as a market
broker for leads generation.
Regarding the cost structure, the Retail-Business
must assume, on the one hand, the technical costs of
data acquisition, storage and processing, in order to
identify possible potential customers taking into
account the target audience of the telecommunication
company. On the other hand, it has internal personnel
costs for data management and project monitoring, in
addition to the costs of preparing the contract and
NDA with the telecommunication company. Lastly, it
also bears the cost of launching the offer and the
recurring communications. Concerning the revenues,
the telecommunication company pays to the Retail-
Business a fixed income for each lead converted into
client, an annual fixed income for advertising and a
recurring commission which is calculated based on
the invoice generated by the client. One part of this
commission is deposited directly in the Retail-
Business and the other part is added to the loyalty card
of the customer, considering indirect revenue for the
Retail-Business. This action increases customer
loyalty.
4.2.3 Information-based Services
According to the information-based services strategy,
the Retail-Business has a program launched in 2017
with the main objective of increase customer loyalty
by offering them a free balanced diet personalized
plan. Moreover, through this program the Retail-
Business wants to enhance the differentiation of the
brand and reinforce the positioning as a company that
helps customers lead a healthier life. Customers of the
Retail-Business can register on the website to access
the program and become members to obtain their
personalized nutritional diagnosis.
The program compares the purchases made by the
consumer with the nutritional criteria recommended
by the scientific community. As a result, the program
generates a monthly report, which consists of a
nutritional diagnosis taking into account the products
purchased by the client during the last three months.
For the diagnosis, the composition of the household
(i.e. number of members, adults and children) and the
frequency of meals at home are taken into account.
Likewise, the members are able to see, in a visual and
understandable way, the evolution of their diet over
time and compare their results with the average of the
consumers participating in the program.
In this way, consumers are able to know what their
nutritional profile is and improve their habits towards
healthier eating. Along with this assessment, there are
also provided other resources such as nutritional
experts’ consultations, healthy recipes, product
promotions and nutritional information based on the
conclusions of the diagnosis.
In 2016, in order to carry out this program, an
initial investment was made in terms of the design and
development of the service, accomplished with an
information technology and analytic services
company, with which the program is currently being
developed. In terms of associated costs, the main cost
is the subcontracting of the information technology
and analytic services company. Currently, this
company makes the nutritional reports that are sent
monthly to the members. In order to make this
possible, the company has access to the database of
customers subscribed to the program. Likewise, the
program has internal personnel costs, both for
monitoring the program and for the nutrition part e.g.
recipes, nutritional consultations. However, at
present, the objective of the program is not to obtain
new revenue, but rather to position the brand in the
awareness of food health. That is why the service
offered to the customers is free. Therefore, direct
revenue is not imputed to this model, but indirect
revenue through increased sales of healthy products
is assigned.
4.3 Retail Media
The Retail-Business is also, since 2020, carrying out
the strategy known as Retail Media. This strategy
consists of selling advertising spaces to brands taking
advantage of all the retailer's points of contact with
the consumer, exploiting the retail's analytical and
personalization capabilities. In other words, it is about
generating a new model equivalent to developing a
media agency, which exploits utterly the retailer’s
both online (e.g. e-commerce, web, app, newsletter)
and offline (e.g. store, magazine, discount vouchers)
channels.
This strategy is based on a win-win-win principle,
where:
Customer Data-driven Business Models: A Case Study in the Retail Industry
107
Customers receive relevant and personalized
communications, improving their shopping
experience.
Brands get the chance of advertising their
products near the point of sale, which makes it
easier for consumers to convert. Moreover, they
have the possibility of carrying out integrated and
personalized campaigns thanks to the reports that
the retailer provides to the brands. These reports
visually show campaigns’ performance, interest
levels, shoppers’ satisfaction, and customers’
spending.
The Retail-Business obtains additional revenue
and increased sales thanks to the
commercialization of the advertising spaces that
exist in the different channels, e.g. in the e-
commerce, web, and app (sponsored products,
banners, order of prioritization of products, brand
suggestion in the search engine), in the
newsletters (banners) in the stores (stoppers, cards
media, advertising stickers, alarms media, doors
media) and in the magazine (full pages,
advertorials).
Today, the Retail-Business has a relevant Retail
Media business. However, although certain internal
coordination is carried out when selling advertising
spaces, there is not a centralized strategy. Coming to
carry out the current media commercialization
management in silos and without having the focus on
the needs of each client. Which leads to
inconsistencies between channels, generating a high
risk of a disjointed customer experience. In order to
deal with these gaps, the Retail-Business is
considering reaching an alliance with a customer data
science company expert in the Retail Media strategy.
Regarding the current cost structure, since most of
the sales of spaces are currently made with direct
agreements with the brands, without automation, the
main cost to be assumed by the Retail-Business is the
cost of the commercials and the preparation of
contracts and NDAs. Concerning the revenues, they
come from the sale of advertising spaces to the
brands. In addition, this model generates an increase
in annual retail sales.
5 DISCUSSION
According to the results obtained, it has been
confirmed that the Retail-Business has been
exploring, for some years now, the different strategies
identified in the literature review in order to generate
new revenue streams through the exploitation of
customer data. This is mainly due to the fact that the
Retail-Business encourages data-driven business
models and, mostly because the Management Board
of the organization supports data monetization
strategies with enabling resources.
In addition, a new indirect monetization strategy
for customer data, which does not appear in the
scientific literature analysed, has been identified, i.e.
the Retail Media strategy.
As observed in the results, the main reasons to
implement one or another monetization model vary
depending on the chosen strategy (see Table 1).
The Retail-Business studied has moved and
continues moving step by step throughout the
implementation of different consumer data
monetization strategies, experimenting with new
models and improving the implemented ones. By
doing so, the organization is developing the required
capabilities to innovate in the implementation of
different monetization strategies.
Table 1: The relationship between strategies and the reasons for implementing a monetization model.
Direct Data
Monetization
Indirect Data Monetization
Sale of raw and
analysed data to
suppliers
Maintain data
ownership
Use of data for the
prescription of
third-party services
Information-
based service
Retail
Media
Obtain direct revenue X X X
Obtain indirect revenue X X X X X
Reduce costs X
Improve customer purchase
experience
X X X
Improve efficiency X
Offer services that are not
covered in the core business
X
Reinforce brand positioning X
Increase customer loyalty X X
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Also, the Retail-Business shows concerns in
relation to data privacy and security, which is why it
moves with caution in strategies where the data is sold
directly to third-parties.
Moreover, it has been observed that, currently, the
organization does not have the necessary technical
and analytical capabilities internally and therefore
often subcontracts or collaborates with companies
specialized in data management, to scale without
significant capital investment.
6 CONCLUSIONS
This research is focus on better understanding the
possible business models that retail companies can
implement to obtain new revenue streams monetizing
customer data, both directly and indirectly.
A literature research and an empirical study have
been developed identifying the different strategies
that organizations perform and their instantiation by
a concrete retailer. In each of the strategies, there have
been identified the reasons for the case study to
implement them as well as the specific instantiation
performed.
Moreover, the research has identified the Retail
Media strategy as an indirect customer data
monetization strategy to be added in the literature.
Finally, the research enriches the current literature
by identifying relevant elements of the investment-
cost-revenue structure for the different customer data
monetization strategies identified. This preliminary
analysis will be further developed in future research,
following a quantitative approach, in order to make
an in depth analysis of their economic viability and
profitability.
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