DATABASE MARKETING PROCESS SUPPORTED BY
ONTOLOGIES
System Architecture Proposal
Filipe Mota Pinto
1
, Alzira Marques
2
1
Departamento Engª informática - Instituto Politécnico Leiria
Morro do Lena – 2411-901 Leiria, Portugal
2
Departamento Gestão e Economia - Instituto Politécnico Leiria
Morro do Lena – 2411-901 Leiria, Portugal
Manuel Filipe Santos
Departamento Sistemas de Informação – Escola de Engenharia
Universidade do Minho, 4800-058 Guimarães Portugal
Keywords: Ontologies, Database Marketing, Knowledge Extraction Process, Action Research.
Abstract: This work proposes an ontology based system architecture which works as developer guide to a database
marketing practitioner. Actually marketing departments handles daily with a great volume of data which are
normally task or marketing activity dependent. This sometimes requires specific knowledge background and
framework. This article aims to introduce an unexplored research at Database Marketing: the ontological
approach to the Database Marketing process. Here we propose a generic framework supported by ontologies
and knowledge extraction from databases techniques. Therefore this paper has two purposes: to integrate
ontological approach in Database Marketing and to create domain ontology with a knowledge base that will
enhance the entire process at both levels: marketing and knowledge extraction techniques. Our work is
based in the Action Research methodology. At the end of this research we present some experiments in
order to illustrate how knowledge base works and how can it be useful to user.
1 INTRODUCTION
Database Marketing (DBM) is a database oriented
process that explores database information in order
to support marketing activities and/or decisions. The
Knowledge Discovery in Databases (KDD) process
is well established among scientific community as a
three phase process: data preparation, data mining
and deployment/evaluation. The KDD has been
successfully applied in various domains particularly
in the marketing field. Nevertheless previous well
established concepts and scientific dominance
regarding each one of these methods, seem to have a
lack of knowledge concerning its application
amongst different requirements and conditions.
Available literature describe a DBM project as
comprised of a sequence of phases and highlight the
particular tasks and their corresponding activities to
be performed during each of the phases. It seems
that the large number of tasks and activities, often
presented in a checklist manner, are cumbersome to
implement and may explain why all the
recommended tasks are not always formally
implemented. Additionally, there is often little
guidance provided towards how to implement a
particular task These issues seem to be especially
dominant in case of more complex analytical
objectives at marketing activity understanding phase
which is the foundational phase of any DBM project.
In computer science, ontologies provide a shared
understanding of knowledge about a particular
domain (Gruber, 1993). At the best of our
knowledge the number of contributions to the
construction of marketing ontologies is very low.
However, they are starting to come to light through
407
Mota Pinto F., Marques A. and Santos M. (2009).
DATABASE MARKETING PROCESS SUPPORTED BY ONTOLOGIES - System Architecture Proposal.
In Proceedings of the 11th International Conference on Enterprise Information Systems - Information Systems Analysis and Specification, pages
407-410
DOI: 10.5220/0002011704070410
Copyright
c
SciTePress
some marketing or computer research centers
(Grassl, 1999), (Bouquet et al., 2002), (Zhou et al.,
2006).
This research is part of a larger project to build
and develop a DBM Ontology (DBMO). The
DBMO should cover a semantic description of
processes supporting DBM, comprising classified
marketing objectives and activities, knowledge
extractions methods, objectives and tasks.
Our proposed research context focuses DBM as
the intersection of two others disciplines (knowledge
extraction techniques and marketing). Here, we
introduce ontologies as support to the knowledge
structure and integration of both.
One of the promising interests of marketing
ontologies is their use for guiding the process of
knowledge extraction in DBM projects. A tool that
gradually accumulates knowledge of the previous
domain developed processes is appropriate due its
iterative nature. Researchers often rework their data
in order to optimize further interactions. Integrating
this knowledge with ontology extends the ontology
usefulness.
We are proposing the initial conceptual structure
to the domain ontology as an integral part of a global
marketing system. According to some researchers
our ontology can be classified as an application
ontology (Sowa, 2000), serving our main global
project.
2 THE USE OF ONTOLOGIES IN
MARKETING
Ontologies are nowadays one of the most popular
knowledge representation techniques. When
ontologies are formalized in any kind of logic
representation, they can also support inference
mechanisms (Mylopoulos et al., 2004). For a given
collection of facts, these mechanisms can be used to
derive new facts or check for consistency. Such
computational aids are clearly useful for knowledge
management, especially when dealing with complex
and heterogeneous knowledge problems or with
large amounts of knowledge.
Ontologies use a formal domain or knowledge
representation, agreed by consensus and shared by
an entire community. Ontologies roles in DBM have
particular significance in a cross research (both
marketing and extraction techniques knowledge is
needed) area focus. Indeed, ontologies can play an
important role describing in a semantic form, all
concepts and techniques around the process.
Moreover, with such description it will also be
possible, to introduce metrics to compare and
therefore select and suggest the best approaches and
methods to a new project.
3 RESEARCH APPROACH
We have used action research based on two main
reasons. Firstly, due the low number of scientific
research works that has been conducted on
supporting DBM process over intelligent structures
like ontologies, the process by which this may be
completed is unclear. Secondly, ontologies can play
an important role in the knowledge development as
long as they register past knowledge for future reuse.
Thus exploratory research was required and action
research provides this capability better than many
other alternatives (Dick, 2008). Action Research
approach develops in a four step framework: first
formulate (plan), test (act), deploy (observe) and
evaluate (reflect). In this work we introduce a
connection element between each interaction:
ontological support. Supported by a previous
research work throughout the marketing knowledge
we had constructed a symbolic model for
representing knowledge and a tree structure (Figure
1). Here we intended to differentiate between
different knowledge levels structure tree towards the
following statements: Principal data information
type identification in marketing database; Main
DBM steps from marketing data to customer
knowledge; and DBM process’ matrix: Knowledge
base elements identification and creation
4 FINDINGS
The research project was done with a group of
database marketing practitioners. Our preliminary
findings are summarized in Table 1. Ending the
action research a practical and functional analysis
was made towards a possible conceptual semantic
map. Turning our action research to analytic
generalization, we can build a theoretical framework
(Yin, 2003). Linked to extant literature that shows
how the DBM process is developed, how associated
marketing knowledge can be structured and which
knowledge discovery approaches may be used.
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Thing
Data
Extraction
Process
Relationship
Marketing
Activities
Type
Objectives
Data
Selection
Data
Pre-processing
Modelling
Evaluation
Source
Value
Market
Trigger
Personal
Market
Financial
Social
Life
Other
consumer
Transactional
LifeStyle
Demographic
Psychographic
String
Internal
External
Logical
Number
Date
Objective
Pre-processing
Algorithm
Customize
Interact
Diferentiate
Identify
Retention
Fidelization
Churn
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Figure 1: Current Database Marketing Ontology.
Table 1: Action research findings.
Research issue Findings about the research issues
Principal marketing
database data type
information
From some literature review and supported by previous work done we
found four main marketing data types: Psychographics; Demographics;
Life style; and, Transactional.
Main DBM steps Based on both practice and literature review we considered the following
steps as a stable DBM process framework: Marketing objectives
definition and activity selection; Data selection; Data preparation; Data
pre-processing; Modelling; Model evaluation; and Business deployment
and evaluation.
DBM process’ matrix
Marketing
Objectives | Activities
Knowledge Extraction
cases
Description record set:
{
Data set
Data selection
Data pre-processing
Data Preparation
Algorithm used
Technical evaluation
Business evaluation
}
DATABASE MARKETING PROCESS SUPPORTED BY ONTOLOGIES - System Architecture Proposal
409
5 DISCUSSION AND
CONCLUSIONS
The extent, degree and simplicity of communication
enabled by the ontology makes it a synergistic
component of DBM strategy. An ontological DBM
approach solution appears promising for both
marketers and computer scientists.
One of the promising interests of DBM
ontologies is its use for guiding the process of
knowledge extraction from marketing databases.
This idea seems to be much more realistic now that
semantic web advances have given rise to common
standards and technologies for expressing and
sharing ontologies (Coulet et al., 2008). In this way
DBM can take advantage of domain knowledge
embedded in DBMO. The results of this research
have implications for both theory and practice. The
first practical results relate the possible feedback
between different DBM projects through a table with
all used resources registered. It will be possible to
implement, through ontologies, a knowledge base
with suggestion or work profile capability. That
Knowledge base, according to the previous
registered experiments will be also capable to
suggest to each marketing objective which
marketing activities, data to be selected and also
tasks to be performed should be chosen. Another
implication relates to the benefits of a global view of
marketing databases role in marketing objectives:
then is possible to fill them with appropriate data.
Our model further emphasizes the importance of
the marketing knowledge to be structured in order to
allow resources reuse or even to achieve synergies in
marketing activities development. Thus managers
and marketers should be aware of this issue, because
there is a loop through which performance of DBM
process can effectively be improved.
The research findings and contributions have
several implications for the theory about ontologies
and DBM, as well as the use of Action Research
methodology. This research provides new insights
into DBM theory in two ways: First this research
appears to provide the first global investigation
about the intersection of ontologies and DBM in
organizations, and how it may be achieved. Thus
this research contributed to the theory-deficient area
of the integration of ontologies and DBM. Second
there is to few literature dedicated to marketing
ontologies and thus this research appears to be one
of the first academic investigation of this
phenomenon.
The impact of that ontology is the future
initiation to a shared DBM knowledge platform that
will provide a trusted base between marketers, DBM
practitioners and artificial intelligence researchers.
Indeed this research identifies a number of areas
requiring further research, namely to marketing
knowledge tree and therefore marketing ontology.
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