SINDBAD SAILS: A Service Architecture for Inductive Learning Schemes. In: Proceedings of the First Workshop on Third Generation Data Mining: Towards Service-Oriented Knowledge Discovery, 2008.
Abstract
The paper presents SINDBAD SAILS (Service Architecture for Inductive Learning Schemes), a Web Service interface to the inductive database SINDBAD. To the best of our knowledge, it is the first time a Web Service interface is provided for an inductive database. The combination of service-oriented architectures and inductive databases is particularly useful, as it enables distributed data mining without the need to install specialized data mining or machine learning software. Moreover, inductive queries can easily be used in almost any kind of programming language. The paper discusses the underlying concepts and explains a sample program making use of SINDBAD SAILS.
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@inproceedings{wicker2008sindbadsails, title = {SINDBAD SAILS: A Service Architecture for Inductive Learning Schemes}, author = {J\"{o}rg Wicker and Christoph Brosdau and Lothar Richter and Stefan Kramer}, url = {http://www.ecmlpkdd2008.org/files/pdf/workshops/sokd/2.pdf}, year = {2008}, date = {2008-01-01}, booktitle = {Proceedings of the First Workshop on Third Generation Data Mining: Towards Service-Oriented Knowledge Discovery}, abstract = {The paper presents SINDBAD SAILS (Service Architecture for Inductive Learning Schemes), a Web Service interface to the inductive database SINDBAD. To the best of our knowledge, it is the first time a Web Service interface is provided for an inductive database. The combination of service-oriented architectures and inductive databases is particularly useful, as it enables distributed data mining without the need to install specialized data mining or machine learning software. Moreover, inductive queries can easily be used in almost any kind of programming language. The paper discusses the underlying concepts and explains a sample program making use of SINDBAD SAILS.}, keywords = {data mining, inductive databases, machine learning, query languages}, pubstate = {published}, tppubtype = {inproceedings} }