基于群体智能的均值漂移近似

M. Thomas, C. Kambhamettu
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引用次数: 2

摘要

基于均值移位的特征空间分析是一种简洁、准确、鲁棒的分析方法。这种非参数算法的优美之处主要是由于它在执行梯度上升来估计多维数据中的模式时非常简单。均值移位的一个特点是在每个数据点上进行模态估计。由于以尽可能简洁的方式描述数据很重要,因此关注数据中的模态点而不是每个数据点很重要。在本文中,我们试图通过使用群体智能的“模式中心”方法来解决均值漂移问题。在这里,模式估计被视为群体在多维数据空间中移动时的目标寻找问题。通过群中各成员之间的信息交换,避免了局部最大值/最小值和平台,从而有效地收敛于模态值处
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Approximation to Mean-Shift via Swarm Intelligence
Mean shift based feature space analysis has been shown to be an elegant, accurate and robust technique. The elegance in this non-parametric algorithm is mainly due to its simplicity in performing gradient ascent to estimate the modes in a multidimensional data. One characteristic aspect of mean shift is that the mode estimation is performed at each data point. Since it is important to describe the data in as succinct manner as possible, it is important to focus on modal points in the data instead of every data point. In this paper, we attempt to tackle the mean shift problem through a "mode centric" approach using swarm intelligence. Here, the mode estimation is cast as a problem of goal seeking for the swarm as it moves through the multidimensional data space. Local maxima/minima and plateaus are avoided through information exchange between each member of the swarm, thereby converging at the mode values efficiently
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