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Service-Oriented Distributed Data Mining

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6 Author(s)

Data mining research currently faces two great challenges: how to embrace data mining services with just-in-time and autonomous properties and how to mine distributed and privacy-protected data. To address these problems, the authors adopt the business process execution language for Web services in a service-oriented distributed data mining (DDM) platform to choreograph DDM component services and fulfil global data mining requirements. They also use the learning-from-abstraction methodology to achieve privacy-preserving DDM. Finally, they illustrate how localized autonomy on privacy-policy enforcement plus a bidding process can help the service-oriented system self-organize

Published in:

IEEE Internet Computing  (Volume:10 ,  Issue: 4 )