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Java Decision Diagrams (BDD) libraries: JDD and JBDD
This project has been moved to bitbucket.org:
- https://bitbucket.org/vahidi/jbdd/wiki/Home
- https://bitbucket.org/vahidi/jdd/wiki/Home
It includes two libraries for working with decision diagrams:
- JBDD: a Java interface to two popular BDD libraries, CUDD and BuDDy
- JDD: a native Java library supporting BDD, Z-BDD
TimeSleuth discovers temporal decision rules. It also judges the (a)causality of the rules. TimeSleuth can discover rules that involve time: {if (rainy_yesterday = true) then rainy_today = true}, or {if (rainy_tomorrow = true) then rainy_today = true}.
AISK is an acronym for Artificial Intelligence Spam Killer. It is a server side filter that acts as a kind of PROXY and uses SMTP to communicate with MTA. Main decision mechanism is based on artificial neural network capable of finding patterns, learning
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A fast decision tree program featuring distributed ensemble learning across multiple processors using MPI. Has been run on 1 cpu, small clusters, and the ASCI Blue supercomputer. Ensembles are often more accurate than their single classifier counterparts