代码搜索:evaluate

找到约 3,619 项符合「evaluate」的源代码

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java evenhistoryevaluation.java

package com.db4o.f1.chapter6; import com.db4o.f1.chapter3.*; import com.db4o.query.*; public class EvenHistoryEvaluation implements Evaluation { public void evaluate(Candidate candidate) {
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m parzen.m

function [B,B2,dist] = parzen(data, mu, Sigma, N) % EVAL_PDF_COND_PARZEN Evaluate the pdf of a conditional Parzen window % function B = eval_pdf_cond_parzen(data, mu, Sigma, N) % % B(q,t) = Pr(dat
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m parzen.m

function [B,B2,dist] = parzen(data, mu, Sigma, N) % EVAL_PDF_COND_PARZEN Evaluate the pdf of a conditional Parzen window % function B = eval_pdf_cond_parzen(data, mu, Sigma, N) % % B(q,t) = Pr(dat
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m gaussian_prob.m

function p=gaussian_prob(x, m, C, use_log) % p=gaussian_prob(x, m, C, use_log) % % Evaluate the multi-variate density with mean vector m and covariance % matrix C for the input vector x. % Vectorized
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m examp48.m

clc,echo on %EXAMPLE 48 F=(0:399)/800; W=2*pi*F; % Frequency array h1=freqz([1 0],[1 -0.9],W); % Evaluate H(F) for filter 1 h2=freqz([1 0],[1 0.9],W)
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1 expr.1

.TH EXPR 1 .SH NAME expr \- evaluate experession .SH SYNOPSIS \fBexpr \fIarg ...\fR .br .de FL .TP \\fB\\$1\\fR \\$2 .. .de EX .TP 20 \\fB\\$1\\fR # \\$2 .. .SH EXAMPLES .EX "x=\`expr \$x + 1\`" "Add
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m gcvfctn.m

function g = gcvfctn(h, d, fc2, trS0, dof0) %GCVFCTN Evaluate object function for generalized cross-validation. % % GCVFCTN(h, d, fc2, trS0, dof0) returns the function values of the % generaliz
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htm mlphdotv.htm

Netlab Reference Manual mlphdotv mlphdotv Purpose Evaluate the product of the data Hessian with a vector. Synopsis
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htm mlphess.htm

Netlab Reference Manual mlphess mlphess Purpose Evaluate the Hessian matrix for a multi-layer perceptron network. Synopsis
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m som_dreval.m

function [sig,cm,truex,truey] = som_dreval(sR,D,sigmea,inds1,inds2,andor) % SOM_DREVAL Evaluate the significance of the given descriptive rule. % % [sig,Cm,truex,truey] = som_dreval(cR,D,sigmea,[inds