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Posted to dev@uima.apache.org by "Marshall Schor (JIRA)" <ui...@incubator.apache.org> on 2009/06/18 22:54:08 UTC

[jira] Commented: (UIMA-1065) CFE - configurable feature extrator for UIMA annotation comparison, evaluation, testing, generation of machine learning features

    [ https://issues.apache.org/jira/browse/UIMA-1065?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=12721482#action_12721482 ] 

Marshall Schor commented on UIMA-1065:
--------------------------------------

Trouble making the POM for this:  The Eclipse EMF POMs found in repo1.maven.org/maven2 have version numbers like this 2.3.0-xxxx and maven orders this version *before* 2.3.0, so the dependency mechanism fails to find things.  

Searching the web we found a solution: add <exclusion> elements to the dependency to exclude these, and then (when needed) include the right dependency manually.

When checking in the new project into the sandbox, I was unable to check in the svn:ignore settings - kept getting a message about svn: Error setting property 'ignore': 
Could not execute PROPPATCH.   I gave up doing this for now - will try again later.

> CFE - configurable feature extrator for UIMA annotation comparison, evaluation, testing, generation of machine learning features
> --------------------------------------------------------------------------------------------------------------------------------
>
>                 Key: UIMA-1065
>                 URL: https://issues.apache.org/jira/browse/UIMA-1065
>             Project: UIMA
>          Issue Type: New Feature
>          Components: Tools
>            Reporter: Igor Sominsky
>            Assignee: Marshall Schor
>            Priority: Minor
>         Attachments: CFE-20080908.zip, CFE-20080908.zip.md5, CFE_sominsky-A4.pdf, CFE_UG_v9.pdf
>
>
> CFE - configurable feature extrator for UIMA annotation comparison, evaluation of performance metrics such as precision/recall/f-score, regression testing, generation of machine learning features. It provides Feature Extraction Specification language (FESL), that specifies rules for feature extraction. The criteria for the extraction could be customized by multiple conditions written in FESL in normal disjunctive form. Extracted features can be output into a file or CAS. Extractor can be implemented as CAS consumer of TAE

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