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<p>of the data; they can be viewed as defining a graph-based kernel for Kernel PCA.</p>

<p>More recently, techniques have been proposed that, instead of defining a fixed kernel, try to learn the kernel using <a href="page.php?w=semidefinite_programming">semidefinite programming</a>. The most prominent example of such a technique is <a href="page.php?w=maximum_variance_unfolding">maximum variance unfolding</a> (MVU). The central idea of MVU is to exactly preserve all pairwise distances between nearest neighbors (in the inner product space) while</p><p>
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