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DPS921/Franky

4,777 bytes added, 00:56, 26 November 2018
Code
====Code====
/* file: lin_reg_norm_eq_dense_batch.cpp */
/*******************************************************************************
* Copyright 2014-2018 Intel Corporation.
*
* This software and the related documents are Intel copyrighted materials, and
* your use of them is governed by the express license under which they were
* provided to you (License). Unless the License provides otherwise, you may not
* use, modify, copy, publish, distribute, disclose or transmit this software or
* the related documents without Intel's prior written permission.
*
* This software and the related documents are provided as is, with no express
* or implied warranties, other than those that are expressly stated in the
* License.
*******************************************************************************/
 
/*
! Content:
! C++ example of multiple linear regression in the batch processing mode.
!
! The program trains the multiple linear regression model on a training
! datasetFileName with the normal equations method and computes regression
! for the test data.
!******************************************************************************/
 
/**
* <a name="DAAL-EXAMPLE-CPP-LINEAR_REGRESSION_NORM_EQ_BATCH"></a>
* \example lin_reg_norm_eq_dense_batch.cpp
*/
 
#include "daal.h"
#include "service.h"
 
using namespace std;
using namespace daal;
using namespace daal::algorithms::linear_regression;
 
/* Input data set parameters */
string trainDatasetFileName = "train.csv";
string testDatasetFileName = "test.csv";
 
const size_t nFeatures = 1; /* Number of features in training and testing data sets */
const size_t nDependentVariables = 1; /* Number of dependent variables that correspond to each observation */
 
void trainModel();
void testModel();
 
training::ResultPtr trainingResult;
prediction::ResultPtr predictionResult;
 
 
int main(int argc, char *argv[])
{
//checkArguments(argc, argv, 2, &trainDatasetFileName, &testDatasetFileName);
trainModel();
testModel();
system("pause");
return 0;
}
 
void trainModel()
{
/* Initialize FileDataSource<CSVFeatureManager> to retrieve the input data from a .csv file */
FileDataSource<CSVFeatureManager> trainDataSource(trainDatasetFileName,
DataSource::notAllocateNumericTable,
DataSource::doDictionaryFromContext);
 
/* Create Numeric Tables for training data and dependent variables */
NumericTablePtr trainData(new HomogenNumericTable<>(nFeatures, 0, NumericTable::doNotAllocate));
NumericTablePtr trainDependentVariables(new HomogenNumericTable<>(nDependentVariables, 0, NumericTable::doNotAllocate));
NumericTablePtr mergedData(new MergedNumericTable(trainData, trainDependentVariables));
 
/* Retrieve the data from input file */
trainDataSource.loadDataBlock(mergedData.get());
 
/* Create an algorithm object to train the multiple linear regression model with the normal equations method */
training::Batch<> algorithm;
 
/* Pass a training data set and dependent values to the algorithm */
algorithm.input.set(training::data, trainData);
algorithm.input.set(training::dependentVariables, trainDependentVariables);
 
/* Build the multiple linear regression model */
algorithm.compute();
 
/* Retrieve the algorithm results */
trainingResult = algorithm.getResult();
printNumericTable(trainingResult->get(training::model)->getBeta(), "Linear Regression coefficients:");
}
 
void testModel()
{
 
/* Initialize FileDataSource<CSVFeatureManager> to retrieve the test data from a .csv file */
FileDataSource<CSVFeatureManager> testDataSource(testDatasetFileName,
DataSource::doAllocateNumericTable,
DataSource::doDictionaryFromContext);
 
 
/* Create Numeric Tables for testing data and ground truth values */
NumericTablePtr testData(new HomogenNumericTable<>(nFeatures, 0, NumericTable::doNotAllocate));
NumericTablePtr testGroundTruth(new HomogenNumericTable<>(nDependentVariables, 0, NumericTable::doNotAllocate));
NumericTablePtr mergedData(new MergedNumericTable(testData, testGroundTruth));
 
/* Load the data from the data file */
testDataSource.loadDataBlock(mergedData.get());
/* Create an algorithm object to predict values of multiple linear regression */
prediction::Batch<> algorithm;
 
/* Pass a testing data set and the trained model to the algorithm */
algorithm.input.set(prediction::data, testData);
algorithm.input.set(prediction::model, trainingResult->get(training::model));
 
/* Predict values of multiple linear regression */
algorithm.compute();
 
/* Retrieve the algorithm results */
predictionResult = algorithm.getResult();
 
 
printNumericTable(predictionResult->get(prediction::prediction),
"Linear Regression prediction results: (first 10 rows):", 10);
printNumericTable(testGroundTruth, "Ground truth (first 10 rows):", 10);
}
 
====Performance====
[[File:DAALvtune.jpg]]
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