Capturing value by using data-driven business models in European railways
Abstract
In today’s data-driven economy, many organisations are progressively adopting data-driven business models (DDBMs) to attain a competitive advantage and extract value.
DDBMs leverage the potential of data to discover new business opportunities, improve
operations and elevate customer experiences. Nevertheless, there is a “deployment gap”
which refers to the paradox of value and opportunities associated with DDBMs and the
lack of tangible success stories thereof, which hinders practitioners to deploy DDBMs.
This exploratory based doctoral research aims to provide a contextual understanding of
“why” and “how” rail companies are using Big Data to plan new and move from existing
business models to DDBMs. Through a systematic analysis and comparison of
empirically derived insights of five leading European train companies with a strong focus
on the German rail system and its main operator Deutsche Bahn (DB) it is hoped that
valuable insights to the strategic and organisational theory will be revealed. To gain rich
insights about complex realities within multinational companies this thesis used the
humanistic paradigm. Subjectivism as an ontological perspective and interpretivism as an
epistemological approach were selected. A comprehensive literature review was
undertaken and empirical evidence gathered. To help ensure valid and reliable findings
the study relied on a mixed methods approach, for which semi-structured interviews and
a structured online survey were conducted within a pilot and main study.
Key findings reveal that several drivers of strategic change in the mobility industry such
as increased opportunities to gain and requirements to handle Big Data and DDBMs as
well as market pressures from a growing number of competitors is “why” established
quasi-monopolist train operators like DB increasingly deploy DDBMs. “How” DDBMs
are deployed has involved the establishment of many data and DDBM related resources,
activities and processes which have led to a growing portfolio of DDBM value offers.
Nevertheless, data and business-related barriers/inhibitors are faced which need to be
overcome by train operators in this planning/transitioning process. This thesis contributes
to the existing research by addressing existing research gaps, such as “DDDBM types”,
“DDBM dimensions”, “DDBM deployment drivers”, and “DDBM deployment
challenges” and aids practitioners in the train and mobility industry wishing to address
the opportunities and challenges presented by DDBMs deployment.