Authors
Pan Peng, Yuichi Yoshida
Publication date
2020/8/23
Book
Proceedings of the 26th ACM SIGKDD international conference on knowledge discovery & data mining
Pages
1132-1140
Description
Spectral clustering is one of the most popular clustering methods for finding clusters in a graph, which has found many applications in data mining. However, the input graph in those applications may have many missing edges due to error in measurement, withholding for a privacy reason, or arbitrariness in data conversion. To make reliable and efficient decisions based on spectral clustering, we assess the stability of spectral clustering against edge perturbations in the input graph using the notion of average sensitivity, which is the expected size of the symmetric difference of the output clusters before and after we randomly remove edges. We first prove that the average sensitivity of spectral clustering is proportional to , where is the i-th smallest eigenvalue of the (normalized) Laplacian. We also prove an analogous bound for k-way spectral clustering, which partitions the graph into k clusters …
Total citations
2020202120222023202423668
Scholar articles
P Peng, Y Yoshida - Proceedings of the 26th ACM SIGKDD international …, 2020