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https://github.com/awojna/Rseslib
21 April 2025, 19:35:41 UTC
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  • Description.props
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Tip revision: a9038b403939c0e0d63a02f5500ad1d7d3603912 authored by awojna on 08 September 2023, 16:03:53 UTC
Version changed to 3.3.1
Tip revision: a9038b4
Description.props
# Description file of Rseslib package for Weka
#
#

# Package name (required)
PackageName=Rseslib

# Version (required)
Version=3.3.1

#Date
Date=2023-09-08

# Title (required)
Title=Rough Sets, Rule Induction and Analogy-Based Reasoning

Category=Classification

# Author (required)
Author=Arkadiusz Wojna,Grzegorz Gora,Wiktor Gromniak,Marcin Jalmuzna,Michal Kurzydlowski,Rafal Latkowski,Marcin Piliszczuk,Beata Zielosko

# Maintainer (required)
Maintainer=Arkadiusz Wojna <wojna@mimuw.edu.pl>

# License (required)
License=GPL 3.0

# Description (required)
Description=The package provides 4 classifiers. The rule classifier RoughSet uses the concepts of discernibility matrix, reducts and rules generated from reducts. \
It provides variety of algorithms generating reducts including giving more general rules local reducts and has modes to work with incomplete data and inconsistent data. \
The k nearest neighbors classifier RseslibKnn provides variety of distance measures that can work also for data with both numeric and nominal attributes and has built-in k optimization. \
It implements a fast neighbors searching algorithm making the classifier work for very large data sets. The classifier has also the mode to work as RIONA algorithm. \
The LocalKnn classifier is the extension of the k nearest neighbors method that induces a local metric for each classified object. \
It is dedicated rather to large data sets (2000+ training instances) and improves accuracy particularly in case of data containing nominal attributes. \
The RIONIDA classifier dedicated to imbalanced data with two decision classes combines instance-based learning with rule induction. It enables to differentiate the importance of the decisions \
and to control the impact of rules on the decision selection process and applies multi-dimensional optimization of classification measures relevant for imbalanced data.  

# Package URL for obtaining the package archive (required)
PackageURL=https://github.com/awojna/Rseslib/releases/download/v3.3.1/rseslib-3.3.1-weka.zip

# URL for further information
URL=http://rseslib.mimuw.edu.pl

# Dependencies
Depends=weka (>=3.8.0)

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