1. What contributions have the authors mentioned in the paper "Sparse kernel density estimation technique based on zero-norm constraint" ?
In this paper, a sparse kernel density estimator is derived based on the zero-norm constraint, in which the zeronorm of the kernel weights is incorporated to enhance model sparsity.
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![TABLE III PERFORMANCE COMPARISON OF THE PW ESTIMATOR, PREVIOUS SKD ESTIMATOR [18], RSDE ESTIMATOR [13], GMM ESTIMATOR AND PROPOSED SKD ESTIMATOR FOR THE SIX-DIMENSIONAL EXAMPLE OF THREE-GAUSSIAN MIXTURE, OVER 100 RUNS.](/figures/table-iii-performance-comparison-of-the-pw-estimator-2s108ulc.png)
![TABLE I PERFORMANCE COMPARISON OF THE PW ESTIMATOR, PREVIOUS SKD ESTIMATOR [18], RSDE ESTIMATOR [13], GMM ESTIMATOR AND PROPOSED SKD ESTIMATOR FOR THE TWO-DIMENSIONAL EXAMPLE OF GAUSSIAN AND LAPLACIAN MIXTURE, OVER 100 RUNS.](/figures/table-i-performance-comparison-of-the-pw-estimator-previous-2ecw640i.png)
![TABLE II PERFORMANCE COMPARISON OF THE PW ESTIMATOR, PREVIOUS SKD ESTIMATOR [18], RSDE ESTIMATOR [13], GMM ESTIMATOR AND PROPOSED SKD ESTIMATOR FOR THE TWO-DIMENSIONAL EXAMPLE OF FIVE-GAUSSIAN MIXTURE, OVER 100 RUNS.](/figures/table-ii-performance-comparison-of-the-pw-estimator-previous-p2g1nerv.png)