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1 results about "Manifold regularization" patented technology

In machine learning, Manifold regularization is a technique for using the shape of a dataset to constrain the functions that should be learned on that dataset. In many machine learning problems, the data to be learned do not cover the entire input space. For example, a facial recognition system may not need to classify any possible image, but only the subset of images that contain faces. The technique of manifold learning assumes that the relevant subset of data comes from a manifold, a mathematical structure with useful properties. The technique also assumes that the function to be learned is smooth: data with different labels are not likely to be close together, and so the labeling function should not change quickly in areas where there are likely to be many data points. Because of this assumption, a manifold regularization algorithm can use unlabeled data to inform where the learned function is allowed to change quickly and where it is not, using an extension of the technique of Tikhonov regularization. Manifold regularization algorithms can extend supervised learning algorithms in semi-supervised learning and transductive learning settings, where unlabeled data are available. The technique has been used for applications including medical imaging, geographical imaging, and object recognition.

Diabetes detection method based on manifold regularization kernel extreme learning machine

PendingCN110600119ALower requirementLower education requirementsMedical automated diagnosisNeural architecturesLearning machineComputers technology
The invention belongs to the technical field of bioinformatics and relates to a novel diabetes detection method. An object of the present invention is to provide a method capable of detecting diabetesin a short time and at a low cost. By means of computer technology, the invention solves the long running time of a feedforward neural network algorithm in the prior art and the relatively high costof traditional diabetes detection. The method is an algorithm based on manifold regularization kernel extreme learning machine, and is obtained by improving an extreme learning machine algorithm. By adding a manifold regularization term and introducing a Laplacian matrix, the method enhances the fitting ability of the kernel extreme learning machine and obtains better results than an existing technical means.
Owner:XIANGTAN UNIV
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