Harman Patil (Editor)

Manifold integration

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Manifold integration is a combined concept of manifold learning and data integration, or an extension of manifold learning for multiple measurements.

Various manifold learning methods have been developed. However, they consider only one dissimilarity matrix corresponding to one kernel matrix, which represents one manifold of the data set. In practice, however, multiple sensors are used at a time, and each sensor generates data set on one manifold. In such a case, manifold integration is a desirable task, combining these dissimilarity matrices into a compromise matrix that faithfully reflects multiple sensory information on one integrated manifold.

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References

Manifold integration Wikipedia