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An Open-Source Classification-Based Nature-Inspired Optimization Clustering Framework in Python

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EVO-CC: An Open-Source Classification-Based Nature-Inspired Optimization Clustering Framework in Python

Description: The framework is an open source and cross-platform framework implemented in Python which uses the classification technique with the evolutionary clustering approach provided by the EvoCluster framework. The goal of this framework is to provide a user-friendly and customizable implementation of the classification-based evolutionary clustering which can be utilized by experienced and non-experienced users for different applications. The framework can also be used by researchers who can benefit from the framework for their research studies.

Framework folders and files:

  1. EvoCluster folder
  2. Dataset folder
  3. Classification file
  4. Examples files

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