使用遗传算法的流形聚类教程

Héctor D. Menéndez
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引用次数: 1

摘要

流形的自动识别是当前机器学习中的一个具有挑战性的问题。这个过程包括根据空间中数据实例定义的形式盲目地分离数据集。数据按其形式定义的组进行区分。这些方法通常侧重于基于连续性的方法,其中流形遵循连续性准则。目前,聚类技术试图处理识别过程,但很少有算法能够产生准确和鲁棒的识别。本教程旨在介绍新的不同的方法,特别关注遗传算法,它可以处理这些问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A tutorial on manifold clustering using genetic algorithms
Automatic Manifold identification is currently a challenging problem in Machine Learning. This process consists on separating a dataset blindly, according to the form defined by the data instances in the space. Data are discriminated in groups defined by their form. These approaches are usually focused on continuity-based methods where the manifold follows a continuity criterion. Currently, clustering techniques try to deal with the discrimination process, but there are a few algorithms that can generate an accurate and robust discrimination. This tutorial aims to present new different approaches, specially focused on Genetic Algorithms, which can deal with these problems.
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