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Single-Cell Exome Sequencing Reveals Single-Nucleotide Mutation Characteristics of a Kidney Tumor, , , , , , , , , und 29 andere Autor(en). Cell, 148 (5): 886--895 (März 2012)Discriminative learning of generative models: large margin multinomial mixture models for document classification., , und . Pattern Anal. Appl., 18 (3): 535-551 (2015)Grey relational grade in local support vector regression for financial time series prediction., und . Expert Syst. Appl., 39 (3): 2256-2262 (2012)GMRVVm-SVR model for financial time series forecasting., und . Expert Syst. Appl., 37 (12): 7813-7818 (2010)A Weighted UWB Transmitted-Reference Receiver for Indoor Positioning Using MMSE Estimation., , , und . WICON, Volume 98 von Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering, Seite 216-224. Springer, (2011)Modeling non-uniformity in short-read rates in RNA-Seq data., , und . Genome Biol, 11 (5): R50 (2010)Having tried methods such as support vector machines and neural networks (Additional file 1), we settled on MART (multiple additive regression trees) as our final choice for a nonlinear model. Our results may benefit quantitative inference from RNA-Seq data. To reduce biases in gene expression estimates due to non-uniformity of read rates, we propose to estimate the expression of a single-isoform gene by the total number of reads along the gene divided by the sum of sequencing preferences (SSP) under our MART model. What is the reason for the failure of our highly predictive model for sequencing preferences to lead to more significant improvements in gene expression estimates? We believe the answer is that when a gene is large, the dramatic local variations in the sequencing preferences will be smoothed out when they are summed over many positions to produce the SSP for the whole gene. First, we downloaded from the UCSC genome browser website 30 the sequences of RefSeq genes 31,32 (mouse July 2007 mm9 for the Wold and Grimmond data, and human Feb 2009 hg19 for the Burge data). Then, we mapped the reads to all isoforms of the RefSeq genes. For Illumina data, we directly mapped the 25 or 32 nucleotide reads using SeqMap 33 , allowing two mismatches. For ABI data, we used the same strategy as described in Supplementary Figure 1 of 12 , where a three-round mapping for 35, 30 and 25 nucleotide qualified reads was performed separately. In each round, we used SOCS 34 as the mapping tool. After mapping, we selected genes that have only one isoform annotated in RefSeq and do not overlap with other genes, and called them 'non-overlapped single-isoform genes'. To avoid ambiguity, we only retained reads that map to a unique site and this site is within the unique genes. Then, we counted the number of reads whose mapping starts at each position of these unique genes, which gives the count data. Local Poisson model is explained. Short and supposedly clear methods part; read. Available at: R package 'mseq'.DropFilter: A Novel Regularization Method for Learning Convolutional Neural Networks., , , und . CoRR, (2018)Why Learning of Large-Scale Neural Networks Behaves Like Convex Optimization.. CoRR, (2019)Feedforward sequential memory networks based encoder-decoder model for machine translation., , , und . APSIPA, Seite 622-625. IEEE, (2017)Distributed Layered Grant-Free Non-Orthogonal Multiple Access for Massive MTC., , , , , und . PIMRC, Seite 1-7. IEEE, (2018)