Tikhonov regularized SVM is a kind of new SVM which can convert multi-class problems to be single optimized problems. Since SVM has some limitations in disposition of big data collection, this paper puts forward a new...
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ISBN:
(纸本)9781424421138
Tikhonov regularized SVM is a kind of new SVM which can convert multi-class problems to be single optimized problems. Since SVM has some limitations in disposition of big data collection, this paper puts forward a new reduction Tikhonov regularized SVM by utilizing pruning algorithm to gain reduction data collection. Meanwhile, the paper applies genetic algorithm to make automatic selection from the balance parameter and kernel function parameter of Tikhonov regularized SVM. The experiment proves this newly improved Tikhonov Regularized SVM is more advantageous for classifying precision and train rate.
Focusing on chromosome 1, a recursive partitioning linkage algorithm (RP) was applied to perform linkage analysis on the rheumatoid arthritis NARAC data, incorporating covariates such as HLA-DRB1 genotype, age at onse...
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Focusing on chromosome 1, a recursive partitioning linkage algorithm (RP) was applied to perform linkage analysis on the rheumatoid arthritis NARAC data, incorporating covariates such as HLA-DRB1 genotype, age at onset, severity, anti-cyclic citrullinated peptide (anti-CCP), and life time smoking. All 617 affected sib pairs from the ascertained families were used, and an RP linkage model was used to identify linkage possibly influenced by covariates. This algorithm includes a likelihood ratio (LR)-based splitting rule, a pruning algorithm to identify optimal tree size, and a bootstrap method for final tree *** strength of the linkage signals was evaluated by empirical p-values, obtained by simulating marker data under null hypothesis of no linkage. Two suggestive linkage regions on chromosome 1 were detected by the RP linkage model, with identified associated covariates HLA-DRB1 genotype and age at onset. These results suggest possible gene x gene and gene x environment interactions at chromosome 1 loci and provide directions for further gene mapping.
Super-heater steam temperature in power plant is the strong nonlinearity system. Though neural networks have the ability to approximate nonlinear functions with arbitrary accuracy, good generalization results are obta...
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Super-heater steam temperature in power plant is the strong nonlinearity system. Though neural networks have the ability to approximate nonlinear functions with arbitrary accuracy, good generalization results are obtained only if the structure of the network is suitably chosen. Therefore, selecting the "best" structure of the neural network is more difficulty. Sparse Least squares support vector networks (SLSVN) are proposed to model the superheated steam of power plant in this paper. The structure of the SLSVN is obtained by equality-constrained minimization. Under the condition of modeling approximating to performance, the pruning algorithm gets the sparse modeling. The merits of the algorithm are conforming to the least structural risk in training process and hardly leading to over-fitting. The simulation of a superheating system, in a 600MW supercritical concurrent boiler, is taken. The result shows that the proposed SLSVN model can adapt to the strong nonlinear super-heater steam temperature process.
N6-methyladenosine(m6 A) methylation is a major epigenetic modification of RNA that affects processes such as translation of related mRNAs and non-coding RNAs. A large number of recent studies have shown that m6 A mod...
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N6-methyladenosine(m6 A) methylation is a major epigenetic modification of RNA that affects processes such as translation of related mRNAs and non-coding RNAs. A large number of recent studies have shown that m6 A modifications play a crucial role in cancer development, however, the prognostic value of the m6 A associated transcriptome in pancreatic cancer has rarely been investigated. The purpose of this study is to investigate the prognostic markers and prognostic subtypes of m6 A RNA methylation regulators related transcriptome in pancreatic ductal adenocarcinoma(PDAC). First,we identified the m6 A RNA methylation regulators related prognostic transcriptome by Pearson correlation analysis and univariate cox regression. Subsequently, to explore key prognostic markers from the prognostic transcriptome, we proposed a G-P model based on greedy algorithms and pruning algorithms to obtain a set of key genes CASC11, KRT14, PDZD4, and identified two high/low-risk subtypes of PDAC with significant prognostic differences based on key genes. The clustering Silhouette coefficients was 0.99 for the key genes. In addition, CASC11 and KRT14 were strongly upregulated in the high-risk subtype and PDZD4 was upregulated in the low-risk subtype, and their differential expression was significantly associated with survival. In conclusion, we revealed the typing role and prognostic value of the m6 A RNA methylation regulators-associated transcriptome in PDAC and provided new insights for identifying predictive biomarkers and therapeutic targets for PDAC.
In classic phase space reconstruction,the time lag is *** our research,the different time lags are found more effectively for teletraffic *** this paper,a method to determine the different time lags in phase space rec...
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In classic phase space reconstruction,the time lag is *** our research,the different time lags are found more effectively for teletraffic *** this paper,a method to determine the different time lags in phase space reconstruction is *** results show that the prediction is more accurate by using the different time lags in reconstruction phase space.
Under the background of seeking high efficiency and low nitrogen oxides (NOx) emissions for the boiler of power plants, this paper used least squares support vector machine (LSSVM) to model the boiler efficiency and N...
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ISBN:
(纸本)9781467395885
Under the background of seeking high efficiency and low nitrogen oxides (NOx) emissions for the boiler of power plants, this paper used least squares support vector machine (LSSVM) to model the boiler efficiency and NOx emissions of a power plant according to the experimental data acquired from a combustion adjustment test. A pruning algorithm based on active learning was applied to the combustion model built earlier to obtain a sparse LSSVM model. Compared to Suykens standard pruning algorithm for LSSVM, AL-LSSVM (active learning LSSVM) can significantly reduce the complexity of combustion models without degrading much, which provides an effective method for incremental or adaptive learning of combustion models.
To assess risk of electrical power network planning in an effective and fast way, the forecasting model of least square support vector machine (LS-SVM) based on pruning algorithm is established. Relative to the classi...
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To assess risk of electrical power network planning in an effective and fast way, the forecasting model of least square support vector machine (LS-SVM) based on pruning algorithm is established. Relative to the classical SVM, the least square SVM (LS-SVM) can transform a quadratic programming problem into a linear programming problem thus reducing the computational complexity. But sparseness is lost in the LS-SVM case. And the pruning algorithm make LSSVM recur sparseness. For illustration, a real-world planning project dataset is used to test the effectiveness of sparse least squares support vector machines(S-LS-SVM).
N6-methyladenosine (m6A) methylation is a major epigenetic modification of RNA that affects processes such as translation of related mRNAs and non-coding RNAs. A large number of recent studies have shown that m6A modi...
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ISBN:
(纸本)9781450385053
N6-methyladenosine (m6A) methylation is a major epigenetic modification of RNA that affects processes such as translation of related mRNAs and non-coding RNAs. A large number of recent studies have shown that m6A modifications play a crucial role in cancer development, however, the prognostic value of the m6A associated transcriptome in pancreatic cancer has rarely been investigated. The purpose of this study is to investigate the prognostic markers and prognostic subtypes of m6A RNA methylation regulators related transcriptome in pancreatic ductal adenocarcinoma (PDAC). First, we identified the m6A RNA methylation regulators related prognostic transcriptome by Pearson correlation analysis and univariate cox regression. Subsequently, to explore key prognostic markers from the prognostic transcriptome, we proposed a G-P model based on greedy algorithms and pruning algorithms to obtain a set of key genes CASC11, KRT14, PDZD4, and identified two high/low-risk subtypes of PDAC with significant prognostic differences based on key genes. The clustering Silhouette coefficients was 0.99 for the key genes. In addition, CASC11 and KRT14 were strongly upregulated in the high-risk subtype and PDZD4 was upregulated in the low-risk subtype, and their differential expression was significantly associated with survival. In conclusion, we revealed the typing role and prognostic value of the m6A RNA methylation regulators-associated transcriptome in PDAC and provided new insights for identifying predictive biomarkers and therapeutic targets for PDAC.
The pruning algorithms for sparse least squares support vector regression machine are common methods,and easily comprehensible,but the computational burden in the training phase is heavy due to the retraining in perfo...
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The pruning algorithms for sparse least squares support vector regression machine are common methods,and easily comprehensible,but the computational burden in the training phase is heavy due to the retraining in performing the pruning process,which is not favorable for their *** this end,an improved scheme is proposed to accelerate sparse least squares support vector regression machine.A major advantage of this new scheme is based on the iterative methodology,which uses the previous training results instead of retraining,and its feasibility is strictly verified ***,experiments on benchmark data sets corroborate a significant saving of the training time with the same number of support vectors and predictive accuracy compared with the original pruning algorithms,and this speedup scheme is also extended to classification problem.
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