Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6940297 | Pattern Recognition Letters | 2018 | 11 Pages |
Abstract
This paper studies an example-driven k-parameter computation that identifies different k values for different test samples in kNN prediction applications, such as classification, regression and missing data imputation. This is carried out with reconstructing a sparse coefficient matrix between test samples and training data. In the reconstruction process, an â1ânorm regularization is employed to generate an element-wise sparsity coefficient matrix, and an LPP (Locality Preserving Projection) regularization is adopted to keep the local structures of data for achieving the efficiency. Further, with the learnt k value, kNN approach is applied to classification, regression and missing data imputation. We experimentally evaluate the proposed approach with 20 real datasets, and show that our algorithm is much better than previous kNN algorithms in terms of data mining tasks, such as classification, regression and missing value imputation.
Related Topics
Physical Sciences and Engineering
Computer Science
Computer Vision and Pattern Recognition
Authors
Shichao Zhang, Debo Cheng, Zhenyun Deng, Ming Zong, Xuelian Deng,