(a) shows the experimental results of ablation of two groups of feature encodings on SMFM, where the fusion of the two feature types achieves best performance; (b) Ablation experiment of multi-source biological features in SMFM, showing percentage of variance of each ablation experiment; (c) illustrates performance of different feature selection methods, where multi-source feature selection can select feature set better than other feature selection methods; (d) compares the specific effects of gap values of PGKM features on the final performance; as the gap value increases, the performance increases.</p
Comparative analysis of mutation frequency and survival with mutations in 19 genes selected by featu...
<p>Comparison between experimental data (points) and model predictions (lines) for the cancellation ...
Supplemental Materials. A: Concordance among replicates of HapMap samples. B: Computational time of ...
(a) Performance of first step of different enhancer identifying methods compared to SMFM, where the ...
(a) exhibits performance of different deep learning architectures in comparison with SMFM, each box ...
<p>Three classifiers, Gaussian Naive Bayes (GNB) in panel (a), SVM in panel (b) and sparse MRF in pa...
<p>Contrasting MK and MS RBF fitting capabilities for biophysical feature extraction.</p
LDA feature selection (a) selects 192 features with most being relative PSD band features and standa...
Analysis of gene-expression data often requires that a gene (feature) subset is selected and many fe...
Spearman's ρ between the calculated CUB of 3740 genes in the E. coli genome using various metrics. A...
<p>Procedure 1: specific GLM feature selection and SVM classification. Procedure 2: specific GLM fea...
<p>Iterative gap filling greatly increased the sensitivity (more correct positive growth conditions)...
Gene expression data often need to be classified into classes or grouped into clusters for further a...
<p>A. The histogram shows the score distribution of the instances in the positive bags and the negat...
The positive predictive value (PPV) for MMC sensitivity was used to quantify the ability of variants...
Comparative analysis of mutation frequency and survival with mutations in 19 genes selected by featu...
<p>Comparison between experimental data (points) and model predictions (lines) for the cancellation ...
Supplemental Materials. A: Concordance among replicates of HapMap samples. B: Computational time of ...
(a) Performance of first step of different enhancer identifying methods compared to SMFM, where the ...
(a) exhibits performance of different deep learning architectures in comparison with SMFM, each box ...
<p>Three classifiers, Gaussian Naive Bayes (GNB) in panel (a), SVM in panel (b) and sparse MRF in pa...
<p>Contrasting MK and MS RBF fitting capabilities for biophysical feature extraction.</p
LDA feature selection (a) selects 192 features with most being relative PSD band features and standa...
Analysis of gene-expression data often requires that a gene (feature) subset is selected and many fe...
Spearman's ρ between the calculated CUB of 3740 genes in the E. coli genome using various metrics. A...
<p>Procedure 1: specific GLM feature selection and SVM classification. Procedure 2: specific GLM fea...
<p>Iterative gap filling greatly increased the sensitivity (more correct positive growth conditions)...
Gene expression data often need to be classified into classes or grouped into clusters for further a...
<p>A. The histogram shows the score distribution of the instances in the positive bags and the negat...
The positive predictive value (PPV) for MMC sensitivity was used to quantify the ability of variants...
Comparative analysis of mutation frequency and survival with mutations in 19 genes selected by featu...
<p>Comparison between experimental data (points) and model predictions (lines) for the cancellation ...
Supplemental Materials. A: Concordance among replicates of HapMap samples. B: Computational time of ...