The technical literature on Model-Based Testing
(MBT) offers us several techniques with different characteristics and goals.
Contemporary software projects usually need to make use of different software
testing techniques. However, a lack of empirical information regarding their
scalability and effectiveness is observed. It makes their application difficult
in real projects, increasing the technical difficulties to combine two or more
MBT techniques for the same software project. In addition, current software
testing selection approaches offer limited support for the combined selection
of techniques. Therefore, this paper describes the conception and evaluation of
an approach aimed at supporting the combined selection of MBT techniques for
software projects. It consists of an evidence-based body of knowledge with 219
MBT techniques and their corresponding characteristics and a selection process
that provides indicators on the level of adequacy (impact indicator) amongst
MBT techniques and software projects characteristics. Results from the data
analysis indicate it contributes to improve the effectiveness and efficiency of
the selection process when compared to another selection approach available in
the technical literature. Aiming at facilitating its use, a computerized
infrastructure, evaluated into an industrial context and evolved to implement
all the facilities needed to support such selection approach, is presented
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