Proper is a propositionalization framework written in Java containing several algorithms for generating propositional (and also multi-instance) data from relational databases. It produces data that can be used by the WEKA machine learning workbench.

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License

GNU General Public License version 2.0 (GPLv2)

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Additional Project Details

Operating Systems

Cygwin, Linux

Intended Audience

Developers

User Interface

Java Swing

Programming Language

Java

Database Environment

MySQL, PostgreSQL (pgsql)

Related Categories

Java Information Analysis Software

Registered

2005-04-21