MATLAB is a high-level language for technical computing which is often used by engineers to help them design systems or analyse a system’s behaviour.
标签: high-level computing engineers technical
上传时间: 2014-01-11
上传用户:txfyddz
Newnes.Digital.Signal.Processing.System.Level.Design.Using.LabVIEW.Jun.2005.eBook-DDU labview信号处理教材。
标签: Processing eBook-DDU Digital LabVIEW
上传时间: 2014-01-22
上传用户:gundan
临床医药试验:Gehan s Two Stage Design
上传时间: 2013-12-10
上传用户:qw12
临床医药试验:Simon s Two stage Design
上传时间: 2014-01-10
上传用户:weiwolkt
Debugging with GDB, The GNU Source-Level Debugger Ninth Exlition,for GDB version6.6
标签: Source-Level Debugging GDB Debugger
上传时间: 2016-12-16
上传用户:ynsnjs
*** *** *** *** *** *** ***** ** Two wire/I2C Bus READ/WRITE Sample Routines of Microchip s ** 24Cxx / 85Cxx serial CMOS EEPROM interfacing to a ** PIC16C54 8-bit CMOS single chip microcomputer ** Revsied Version 2.0 (4/2/92). ** ** Part use = PIC16C54-XT/JW ** Note: 1) All timings are based on a reference crystal frequency of 2MHz ** which is equivalent to an instruction cycle time of 2 usec. ** 2) Address and literal values are read in octal unless otherwise ** specified.
标签: Microchip Routines Sample WRITE
上传时间: 2013-12-27
上传用户:ljmwh2000
Muscl Euler Two dimensions
标签: dimensions Muscl Euler Two
上传时间: 2013-12-07
上传用户:363186
measure through the cross-entropy of test data. In addition, we introduce two novel smoothing techniques, one a variation of Jelinek-Mercer smoothing and one a very simple linear interpolation technique, both of which outperform existing methods.
标签: cross-entropy introduce smoothing addition
上传时间: 2014-01-06
上传用户:qilin
% Train a two layer neural network with the Levenberg-Marquardt % method. % % If desired, it is possible to use regularization by % weight decay. Also pruned (ie. not fully connected) networks can % be trained. % % Given a set of corresponding input-output pairs and an initial % network, % [W1,W2,critvec,iteration,lambda]=marq(NetDef,W1,W2,PHI,Y,trparms) % trains the network with the Levenberg-Marquardt method. % % The activation functions can be either linear or tanh. The % network architecture is defined by the matrix NetDef which % has two rows. The first row specifies the hidden layer and the % second row specifies the output layer.
标签: Levenberg-Marquardt desired network neural
上传时间: 2016-12-27
上传用户:jcljkh
Train a two layer neural network with a recursive prediction error % algorithm ("recursive Gauss-Newton"). Also pruned (i.e., not fully % connected) networks can be trained. % % The activation functions can either be linear or tanh. The network % architecture is defined by the matrix NetDef , which has of two % rows. The first row specifies the hidden layer while the second % specifies the output layer.
标签: recursive prediction algorithm Gauss-Ne
上传时间: 2016-12-27
上传用户:ljt101007