In this research, a general theoretical framework for clustering is proposed over specific partial algebraic systems by the present author. Her theory helps in isolating minimal assumptions necessary for different concepts of clustering information in any form to be realized in a situation (and therefore in a semantics). \emph{It is well-known that of the limited number of proofs in the theory of hard and soft clustering that are known to exist, most involve statistical assumptions}. Many methods seem to work because they seem to work in specific empirical practice. A new general rough method of analyzing clusterings is invented, and this opens the subject to clearer conceptions and contamination-free theoretical proofs. Numeric ideas of validation are also proposed to be replaced by those based on general rough approximation. The essence of the approach is explained in brief and supported by an example.
翻译:在这项研究中,现作者针对特定的局部代数系统提出了一个一般的分组理论框架,其理论有助于分离在某种情况下(因此在语义学中)实现任何形式的不同组合信息概念所必需的最低假设。 众所周知,已知的硬组合和软组合理论中的证据数量有限,大多涉及统计假设。 许多方法似乎行之有效,因为它们似乎在具体的经验实践中起作用。 发明了一种分析组合的新的一般粗略方法,从而打开了对主题的更清晰的概念和无污染理论证据的开阔开阔开阔开阔开阔开阔开阔开阔开阔开阔开阔开阔开阔开阔的话题。 还提议用基于粗略近似学的定量验证概念取代这些概念。 这种方法的精髓是简短解释的,并以实例作为佐证。