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CIDM
2007
IEEE

Efficient Kernel-based Learning for Trees

13 years 8 months ago
Efficient Kernel-based Learning for Trees
Kernel methods are effective approaches to the modeling of structured objects in learning algorithms. Their major drawback is the typically high computational complexity of kernel functions. This prevents the application of computational demanding algorithms, e.g. Support Vector Machines, on large datasets. Consequently, on-line learning approaches are required. Moreover, to facilitate the application of kernel methods on structured data, additional efficiency optimization should be carried out. In this paper, we propose Direct Acyclic Graphs to reduce the computational burden and storage requirements by representing common structures and feature vectors. We show the benefit of our approach for the perceptron algorithm using tree and polynomial kernels. The experiments on a quite extensive dataset of about one million of instances show that our model makes the use of kernels for trees practical. From the accuracy point of view, the possibility of using large amount of data has allowed ...
Fabio Aiolli, Giovanni Da San Martino, Alessandro
Added 13 Aug 2010
Updated 13 Aug 2010
Type Conference
Year 2007
Where CIDM
Authors Fabio Aiolli, Giovanni Da San Martino, Alessandro Sperduti, Alessandro Moschitti
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