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*
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* regarding copyright ownership. The ASF licenses this file
* to you under the Apache License, Version 2.0 (the
* "License"); you may not use this file except in compliance
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*
* http://www.apache.org/licenses/LICENSE-2.0
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* Unless required by applicable law or agreed to in writing,
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// MARKER(update_precomp.py): autogen include statement, do not remove
#include "precompiled_chart2.hxx"
#include "ExponentialRegressionCurveCalculator.hxx"
#include "macros.hxx"
#include "RegressionCalculationHelper.hxx"
#include <rtl/math.hxx>
#include <rtl/ustrbuf.hxx>
using namespace ::com::sun::star;
using ::rtl::OUString;
using ::rtl::OUStringBuffer;
namespace chart
{
ExponentialRegressionCurveCalculator::ExponentialRegressionCurveCalculator() :
m_fLogSlope( 0.0 ),
m_fLogIntercept( 0.0 )
{
::rtl::math::setNan( & m_fLogSlope );
::rtl::math::setNan( & m_fLogIntercept );
}
ExponentialRegressionCurveCalculator::~ExponentialRegressionCurveCalculator()
{}
// ____ XRegressionCurveCalculator ____
void SAL_CALL ExponentialRegressionCurveCalculator::recalculateRegression(
const uno::Sequence< double >& aXValues,
const uno::Sequence< double >& aYValues )
throw (uno::RuntimeException)
{
RegressionCalculationHelper::tDoubleVectorPair aValues(
RegressionCalculationHelper::cleanup(
aXValues, aYValues,
RegressionCalculationHelper::isValidAndYPositive()));
const size_t nMax = aValues.first.size();
if( nMax == 0 )
{
::rtl::math::setNan( & m_fLogSlope );
::rtl::math::setNan( & m_fLogIntercept );
::rtl::math::setNan( & m_fCorrelationCoeffitient );// actual it is coefficient of determination
return;
}
double fAverageX = 0.0, fAverageY = 0.0;
size_t i = 0;
for( i = 0; i < nMax; ++i )
{
fAverageX += aValues.first[i];
fAverageY += log( aValues.second[i] );
}
const double fN = static_cast< double >( nMax );
fAverageX /= fN;
fAverageY /= fN;
double fQx = 0.0, fQy = 0.0, fQxy = 0.0;
for( i = 0; i < nMax; ++i )
{
double fDeltaX = aValues.first[i] - fAverageX;
double fDeltaY = log( aValues.second[i] ) - fAverageY;
fQx += fDeltaX * fDeltaX;
fQy += fDeltaY * fDeltaY;
fQxy += fDeltaX * fDeltaY;
}
m_fLogSlope = fQxy / fQx;
m_fLogIntercept = fAverageY - m_fLogSlope * fAverageX;
m_fCorrelationCoeffitient = fQxy / sqrt( fQx * fQy );
}
double SAL_CALL ExponentialRegressionCurveCalculator::getCurveValue( double x )
throw (lang::IllegalArgumentException,
uno::RuntimeException)
{
double fResult;
::rtl::math::setNan( & fResult );
if( ! ( ::rtl::math::isNan( m_fLogSlope ) ||
::rtl::math::isNan( m_fLogIntercept )))
{
fResult = exp(m_fLogIntercept + x * m_fLogSlope);
}
return fResult;
}
uno::Sequence< geometry::RealPoint2D > SAL_CALL ExponentialRegressionCurveCalculator::getCurveValues(
double min, double max, ::sal_Int32 nPointCount,
const uno::Reference< chart2::XScaling >& xScalingX,
const uno::Reference< chart2::XScaling >& xScalingY,
::sal_Bool bMaySkipPointsInCalculation )
throw (lang::IllegalArgumentException,
uno::RuntimeException)
{
if( bMaySkipPointsInCalculation &&
isLinearScaling( xScalingX ) &&
isLogarithmicScaling( xScalingY ))
{
// optimize result
uno::Sequence< geometry::RealPoint2D > aResult( 2 );
aResult[0].X = min;
aResult[0].Y = this->getCurveValue( min );
aResult[1].X = max;
aResult[1].Y = this->getCurveValue( max );
return aResult;
}
return RegressionCurveCalculator::getCurveValues( min, max, nPointCount, xScalingX, xScalingY, bMaySkipPointsInCalculation );
}
OUString ExponentialRegressionCurveCalculator::ImplGetRepresentation(
const uno::Reference< util::XNumberFormatter >& xNumFormatter,
::sal_Int32 nNumberFormatKey ) const
{
double fIntercept = exp(m_fLogIntercept);
double fSlope = exp(m_fLogSlope);
bool bHasSlope = !rtl::math::approxEqual( fSlope, 1.0 );
bool bHasIntercept = !rtl::math::approxEqual( fIntercept, 1.0 );
OUStringBuffer aBuf( C2U( "f(x) = " ));
if ( fIntercept == 0.0)
{
// underflow, a true zero is impossible
aBuf.append( C2U( "exp( " ));
aBuf.append( getFormattedString( xNumFormatter, nNumberFormatKey, m_fLogIntercept) );
aBuf.append( (m_fLogSlope < 0.0) ? C2U( " - " ) : C2U( " + " ));
aBuf.append( getFormattedString( xNumFormatter, nNumberFormatKey, fabs(m_fLogSlope)) );
aBuf.append( C2U( " x )" ));
}
else
{
if (bHasIntercept)
{
aBuf.append( getFormattedString( xNumFormatter, nNumberFormatKey, fIntercept) );
aBuf.append( C2U( " exp( " ));
aBuf.append( getFormattedString( xNumFormatter, nNumberFormatKey, m_fLogSlope) );
aBuf.append( C2U( " x )" ));
}
else
{
// show logarithmic output, if intercept and slope both are near one
// otherwise drop output of intercept, which is 1 here
aBuf.append( C2U( " exp( " ));
if (!bHasSlope)
{
aBuf.append( getFormattedString( xNumFormatter, nNumberFormatKey, m_fLogIntercept) );
aBuf.append( (m_fLogSlope < 0.0) ? C2U( " - " ) : C2U( " + " ));
aBuf.append( getFormattedString( xNumFormatter, nNumberFormatKey, fabs(m_fLogSlope)) );
}
else
{
aBuf.append( getFormattedString( xNumFormatter, nNumberFormatKey, m_fLogSlope) );
}
aBuf.append( C2U( " x )" ));
}
}
return aBuf.makeStringAndClear();
}
} // namespace chart