作者
Bin Li, Xingquan Zhu, Lianhua Chi, Chengqi Zhang
发表日期
2012/12/10
研讨会论文
2012 IEEE 12th International Conference on Data Mining
页码范围
399-408
出版商
IEEE
简介
Most studies on graph classification focus on designing fast and effective kernels. Several fast subtree kernels have achieved a linear time-complexity w.r.t. the number of edges under the condition that a common feature space (e.g., a subtree pattern list) is needed to represent all graphs. This will be infeasible when graphs are presented in a stream with rapidly emerging subtree patterns. In this case, computing a kernel matrix for graphs over the entire stream is difficult since the graphs in the expired chunks cannot be projected onto the unlimitedly expanding feature space again. This leads to a big trouble for graph classification over streams -- Different portions of graphs have different feature spaces. In this paper, we aim to enable large-scale graph classification over streams using the classical ensemble learning framework, which requires the data in different chunks to be in the same feature space. To this end …
引用总数
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B Li, X Zhu, L Chi, C Zhang - 2012 IEEE 12th International Conference on Data …, 2012