论文部分内容阅读
Semi-supervised dimensionality reduction is an important research area for data classification.A new linear dimensionality reduction approach,global inference preserving projection (GIPP),was proposed to perform classification task In semi-supervised case.GIPP provided a global structure that utilized the underlying discriminative knowledge of unlabeled samples.It used path-based dissimilarity measurement to infer the class label information for unlabeled samples and transformd the discriminant algorithm into a generalized eigenequation problem.Experimental results demonstrate the effectiveness of the proposed approach.