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arxiv: 1110.4416 · v1 · pith:6X3JYAL6new · submitted 2011-10-20 · 💻 cs.LG

Data-dependent kernels in nearly-linear time

classification 💻 cs.LG
keywords kernelsconstructiondatasemi-supervisedtimedata-dependentlargenearly-linear
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We propose a method to efficiently construct data-dependent kernels which can make use of large quantities of (unlabeled) data. Our construction makes an approximation in the standard construction of semi-supervised kernels in Sindhwani et al. 2005. In typical cases these kernels can be computed in nearly-linear time (in the amount of data), improving on the cubic time of the standard construction, enabling large scale semi-supervised learning in a variety of contexts. The methods are validated on semi-supervised and unsupervised problems on data sets containing upto 64,000 sample points.

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