This is a GUI for learning non disjoint groups of documents based on Weka machine learning framework. It offers the possibility to make non disjoint
clustering of documents using both vectorial and sequential representation (word sequence approach based on WSK kernel). All data format supported
by WEKA could be used in DocCO. Data could be loaded from files, from
databases or from specified URL. All the preprocessing techniques implemented in
WEKA could be used before performing the learning.

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License

GNU General Public License version 2.0 (GPLv2)

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Additional Project Details

Operating Systems

Java ME, Linux, Windows

Intended Audience

Information Technology

User Interface

Java Swing

Programming Language

Java

Database Environment

Flat-file, JDBC

Related Categories

Java Information Analysis Software, Java Machine Learning Software

Registered

2013-07-30