Audience

Companies looking for a data mining software

About Keel

KEEL (Knowledge Extraction based on Evolutionary Learning) is an open source (GPLv3) Java software tool that can be used for a large number of different knowledge data discovery tasks. KEEL provides a simple GUI based on data flow to design experiments with different datasets and computational intelligence algorithms (paying special attention to evolutionary algorithms) in order to assess the behavior of the algorithms. It contains a wide variety of classical knowledge extraction algorithms, preprocessing techniques (training set selection, feature selection, discretization, imputation methods for missing values, among others), computational intelligence based learning algorithms, hybrid models, statistical methodologies for contrasting experiments and so forth. It allows to perform a complete analysis of new computational intelligence proposals in comparison to existing ones. Moreover, KEEL has been designed with a two-fold goal: research and education.

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Company Information

Keel
www.keel.es/

Videos and Screen Captures

Keel Screenshot 1
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Product Details

Platforms Supported
Cloud
Training
Documentation
Support
Online

Keel Frequently Asked Questions

Q: What kinds of users and organization types does Keel work with?
Q: What languages does Keel support in their product?
Q: What type of training does Keel provide?

Keel Product Features

Data Mining

Data Extraction
Data Visualization
Fraud Detection
Linked Data Management
Machine Learning
Predictive Modeling
Semantic Search
Statistical Analysis
Text Mining