无约束模糊 C-Means 算法

Feiping Nie;Runxin Zhang;Weizhong Yu;Xuelong Li
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引用次数: 0

摘要

模糊c均值算法(FCM)是一种最常用的模糊聚类算法,它采用交替优化算法来更新隶属矩阵和聚类中心矩阵。FCM在聚类任务中取得了有效的结果。然而,由于约束条件较多,目标函数不便于直接优化,容易收敛到次优的局部最小值,影响聚类性能。在本文中,我们提出了一个等价于FCM的最小化问题。首先,利用确定聚类中心矩阵时的最优解替换隶属度矩阵,将原约束优化问题转化为无约束优化问题,从而减少了变量数;然后我们用梯度下降代替交替优化来求解模型,所以我们称这个模型为UC-FCM。大量的实验结果表明,在相同初始化条件下,UC-FCM比FCM能获得更好的局部最小值,获得更好的聚类性能。此外,UC-FCM与其他先进的聚类算法相比也具有一定的竞争力。
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Unconstrained Fuzzy C-Means Algorithm
Fuzzy C-Means algorithm (FCM) is one of the most commonly used fuzzy clustering algorithm, which uses the alternating optimization algorithm to update the membership matrix and the cluster center matrix. FCM achieves effective results in clustering tasks. However, due to many constraints, the objective function is inconvenient to optimize directly and is prone to converges to a suboptimal local minimum, which affects the clustering performance. In this paper, we propose a minimization problem equivalent to FCM. Firstly, we use the optimal solution when fixing the cluster center matrix to replace the membership matrix, transforming the original constrained optimization problem into an unconstrained optimization problem, thus reducing the number of variables. We then use gradient descent instead of alternating optimization to solve the model, so we call this model UC-FCM. Extensive experimental results show that UC-FCM can obtain better local minimum and achieve superior clustering performance compared to FCM under the same initialization. Moreover, UC-FCM is also competitive compared with other advanced clustering algorithms.
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