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Created: 25/06/11 @ 12:11:37 | Last updated: 25/06/11 @ 13:17:51 License: Creative Commons Attribution-No Derivative Works 3.0 Unported License
This workflow describes how to learn from the Semantic Web's data. The input to the workflow is a feature vector developed from a RDF resource.
The loaded example set is then divided into training and test parts. These sub-example sets are used by the FastMap operators (encapsulate the FastMap data transformation technique), which processes each feature at a time and transform the data into a different space. This transformed data is more meaningful and helps the learner to improve classfica...
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Original Uploader |
Created: 25/06/11 @ 14:10:49 | Last updated: 25/06/11 @ 14:22:30 License: Creative Commons Attribution-No Derivative Works 3.0 Unported License
This workflow describes how to learn from the Semantic Web's data using a data transformation algorithm 'Correspondence Analysis'.
The input to the workflow is a feature vector developed from a RDF resource. The loaded example set is divided into training and test parts. These sub-example sets are used by the Correspondence Analysis operators (encapsulate the Correspondence Analysis data transformation technique) which processes each feature at a time and transform the data into a different...
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Original Uploader |
Created: 25/06/11 @ 14:48:59 | Last updated: 25/06/11 @ 15:01:59 License: Creative Commons Attribution-No Derivative Works 3.0 Unported License
This workflow will explain that how an example set can be extracted from an RDF resource using the provided SPARQL query.
This example set is then divided into training and test parts. These sub-example sets are used by the Correspondencce Analysis operators (encapsulate the Correspondencce Analysis data transformation technique) which processes each feature at a time and transform the data into a different space. This transformed data is more meaningful and helps the learner to improve clas...
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Created: 30/01/12 @ 13:54:07 License: Creative Commons Attribution-No Derivative Works 3.0 Unported License
This workflow provides transformation of an
user/item description attribute set, into a format required by attribute based k-NN operators of the Recommender extension.
See:
http://zel.irb.hr/wiki/lib/exe/fetch.php?media=del:projects:elico:recsys_manual_v1.1.pdf
to learn about formats of datasets required by
Recommender extension.
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