代码搜索:validation
找到约 7,219 项符合「validation」的源代码
代码结果 7,219
www.eeworm.com/read/384347/8878908
dot testsuite_2bravo__validation_2pdc_2usart_8c_d2cd45d1e18b6d00c182ac3663f0aa72_cgraph.dot
digraph G
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rankdir=LR;
Node1 [label="usart_i
www.eeworm.com/read/192667/8367384
m leaveoneout_lssvm.m
function [costs, z, yh, model] = leaveoneout_lssvm(model,gams, estfct)
% Fast leave-one-out cross-validation for the LS-SVM based on one full matrix inversion
%
% >> cost = leaveoneout_lssvm({X,Y,typ
www.eeworm.com/read/292191/8367998
h dh.h
#ifndef CRYPTOPP_DH_H
#define CRYPTOPP_DH_H
#include "modexppc.h"
NAMESPACE_BEGIN(CryptoPP)
// Diffie-Hellman in GF(p) with key validation
class DH : public PK_WithPrecomputation
www.eeworm.com/read/291537/8410860
h dh.h
#ifndef CRYPTOPP_DH_H
#define CRYPTOPP_DH_H
#include "modexppc.h"
NAMESPACE_BEGIN(CryptoPP)
// Diffie-Hellman in GF(p) with key validation
class DH : public PK_WithPrecomputation
www.eeworm.com/read/190459/8443073
m leaveoneout_lssvm.m
function [costs, z, yh, model] = leaveoneout_lssvm(model,gams, estfct)
% Fast leave-one-out cross-validation for the LS-SVM based on one full matrix inversion
%
% >> cost = leaveoneout_lssvm({X,Y,typ
www.eeworm.com/read/187929/8589914
h dh.h
#ifndef CRYPTOPP_DH_H
#define CRYPTOPP_DH_H
#include "modexppc.h"
NAMESPACE_BEGIN(CryptoPP)
// Diffie-Hellman in GF(p) with key validation
class DH : public PK_WithPrecomputation
www.eeworm.com/read/287946/8658370
h dh.h
#ifndef CRYPTOPP_DH_H
#define CRYPTOPP_DH_H
#include "modexppc.h"
NAMESPACE_BEGIN(CryptoPP)
// Diffie-Hellman in GF(p) with key validation
class DH : public PK_WithPrecomputation
www.eeworm.com/read/286166/8785205
h dh.h
#ifndef CRYPTOPP_DH_H
#define CRYPTOPP_DH_H
#include "modexppc.h"
NAMESPACE_BEGIN(CryptoPP)
// Diffie-Hellman in GF(p) with key validation
class DH : public PK_WithPrecomputation
www.eeworm.com/read/429504/8804801
m leaveoneout_lssvm.m
function [costs, z, yh, model] = leaveoneout_lssvm(model,gams, estfct)
% Fast leave-one-out cross-validation for the LS-SVM based on one full matrix inversion
%
% >> cost = leaveoneout_lssvm({X,Y,typ