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Partial Least Squares Regression for Graph Mining

机译:图挖掘的偏最小二乘回归

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摘要

Attributed graphs are increasingly more common in many application domains such as chemistry, biology and text processing. A central issue in graph mining is how to collect informative subgraph patterns for a given learning task. We propose an iterative mining method based on partial least squares regression (PLS). To apply PLS to graph data, a sparse version of PLS is developed first and then it is combined with a weighted pattern mining algorithm. The mining algorithm is iteratively called with different weight vectors, creating one latent component per one mining call. Our method, graph PLS, is efficient and easy to implement, because the weight vector is updated with elementary matrix calculations. In experiments, our graph PLS algorithm showed competitive prediction accuracies in many chemical datasets and its efficiency was significantly superior to graph boosting (gBoost) and the naive method based on frequent graph mining.
机译:属性图在化学,生物学和文本处理等许多应用领域中越来越普遍。图挖掘中的中心问题是如何为给定的学习任务收集信息丰富的子图模式。我们提出了一种基于偏最小二乘回归(PLS)的迭代挖掘方法。为了将PLS应用于图形数据,首先开发了稀疏版本的PLS,然后将其与加权模式挖掘算法结合使用。使用不同的权重向量迭代调用挖掘算法,每一个挖掘调用创建一个潜在分量。我们的方法图PLS是高效且易于实现的,因为权重向量已通过基本矩阵计算进行了更新。在实验中,我们的图形PLS算法在许多化学数据集中显示出竞争性的预测准确性,其效率明显优于图形增强(gBoost)和基于频繁图形挖掘的朴素方法。

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