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How to Use Temporal-Driven Constrained Clustering to Detect Typical Evolutions

机译:如何使用时间驱动的约束聚类来检测典型演化

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In this paper, we propose a new time-aware dissimilarity measure that takes into ac- count the temporal dimension. Observations that are close in the description space, but distant in time are considered as dissimilar. We also propose a method to enforce the segmentation contiguity, by introducing, in the objective function, a penalty term inspired from the Normal Distribution Function. We combine the two propositions into a novel time-driven constrained clustering algorithm, called TDCK-Means, which creates a partition of coherent clusters, both in the multidimensional space and in the temporal space. This algorithm uses soft semi-supervised constraints, to encourage adjacent observations belonging to the same entity to be assigned to the same cluster. We apply our algorithm to a Political Studies dataset in order to detect typical evolution phases. We adapt the Shannon entropy in order to measure the entity contiguity, and we show that our proposition consistently improves temporal cohesion of clusters, without any significant loss in the multidimensional variance.
机译:在本文中,我们提出了一种新的时间感知差异度量,该度量考虑了时间维度。描述空间中接近但时间上相距遥远的观察结果被认为是不相似的。我们还提出了一种通过在目标函数中引入从正态分布函数启发而来的惩罚项来强制分割连续性的方法。我们将这两个命题组合成一个新颖的时间驱动的约束聚类算法,称为TDCK-Means,该算法在多维空间和时间空间中创建了一个相干聚类的分区。该算法使用软半监督约束,以鼓励将属于同一实体的相邻观测值分配给同一聚类。我们将算法应用于政治研究数据集,以检测典型的演化阶段。为了适应实体连续性,我们调整了香农熵,并证明了我们的命题不断提高了聚类的时间内聚性,而多维方差没有任何重大损失。

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