| Literature DB >> 11972909 |
Ronan Collobert1, Samy Bengio, Yoshua Bengio.
Abstract
Support vector machines (SVMs) are the state-of-the-art models for many classification problems, but they suffer from the complexity of their training algorithm, which is at least quadratic with respect to the number of examples. Hence, it is hopeless to try to solve real-life problems having more than a few hundred thousand examples with SVMs. This article proposes a new mixture of SVMs that can be easily implemented in parallel and where each SVM is trained on a small subset of the whole data set. Experiments on a large benchmark data set (Forest) yielded significant time improvement (time complexity appears empirically to locally grow linearly with the number of examples). In addition, and surprisingly, a significant improvement in generalization was observed.Mesh:
Year: 2002 PMID: 11972909 DOI: 10.1162/089976602753633402
Source DB: PubMed Journal: Neural Comput ISSN: 0899-7667 Impact factor: 2.026