Statistical mechanics and phase transitions in clustering 论文
1990Physical Review Letters引用 463
Neural Networks and ApplicationsAdvanced Clustering Algorithms ResearchComplex Systems and Time Series Analysis
摘要
A new approach to clustering based on statistical physics is presented. The problem is formulated as fuzzy clustering and the association probability distribution is obtained by maximizing the entropy at a given average variance. The corresponding Lagrange multiplier is related to the ``temperature'' and motivates a deterministic annealing process where the free energy is minimized at each temperature. Critical temperatures are derived for phase transitions when existing clusters split. It is a hierarchical clustering estimating the most probable cluster parameters at various average variances.